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Article

The Effect of a Mathematics Learning Disability Program Offered Face to Face with Interactive Online Learning from Smart Learning Environments on Teachers’ Knowledge and Self-Efficacy Levels

by
Necmi Sağıroğlu
1,
Hüseyin Uzunboylu
2,3,*,
Gönül Akçamete
1 and
Mukaddes Sakallı Demirok
1
1
Department of Special Education, Near East University, North Cyprus 99300, Turkey
2
Deoartment of Special Education, Kyrenia, University of Kyrenia, North Cyprus 99320, Turkey
3
Department of Primary School Education, Abai Kazakh National Pedagogical University, Almaty 050010, Kazakhstan
*
Author to whom correspondence should be addressed.
Appl. Sci. 2025, 15(10), 5326; https://doi.org/10.3390/app15105326 (registering DOI)
Submission received: 1 April 2025 / Revised: 29 April 2025 / Accepted: 6 May 2025 / Published: 10 May 2025
(This article belongs to the Special Issue Application of Smart Learning in Education)

Abstract

:
This study examines the effectiveness of in-service training programs aimed at enhancing teachers’ knowledge and self-efficacy in the context of learning disabilities (LD) in mathematics. Despite the increasing use of both interactive online learning and face-to-face training methods in professional development, limited research has compared their relative effectiveness in this specific field. Furthermore, existing studies have not adequately addressed whether improvements in teachers’ knowledge and self-efficacy are sustained over time. To address this gap, the present study employed a quasi-experimental design with two experimental groups. The sample consists of 80 classroom teachers, with 40 participants in the interactive online learning education group and 40 in the face-to-face education group. The training program consists of 16 h of instruction over four weeks. Data were collected using a demographic questionnaire and the Mathematics Learning Difficulty Area Teacher Self-Efficacy Scale, and statistical analyses were conducted. The findings indicate that, prior to the intervention, teachers in the interactive online learning education group exhibited significantly higher levels of knowledge and self-efficacy. However, the post-intervention results revealed no statistically significant differences between the two groups. Cohen’s d analysis indicated a moderate effect size for interactive online learning education before the intervention, which diminished to a small effect size afterward. This study validates the efficiency of interactive online learning from smart learning environments for in-service training programs aimed at enhancing teachers’ knowledge and self-efficacy about learning disabilities in mathematics. These results suggest that both training modalities effectively improve teachers’ knowledge and self-efficacy, but neither demonstrate a clear long-term advantage. This study underscores the need for further research to determine optimal strategies for sustaining professional development in this domain.

1. Introduction

Smart learning environments involve the instructor’s modeling of the content, forms, and techniques of the educational process in alignment with established objectives through the use of innovation. Smart learning environments employ various teaching technologies, including interactive online learning, virtual and augmented reality systems, mobile learning, gamification, artificial intelligence (AI), credit-modular systems, student-centered learning, blended-learning, and others [1].
Online learning with interactive components, such as branching situations, online quizzes, interactive multimedia, interactive videos, and virtual reality simulations, is known as interactive e-learning [2]. Any kind of online training, including corporate learning programs and compliance training, may be transformed into interactive e-learning with the correct tactics in place. As an illustration, we used gamification to develop an interactive online course in which students answered questions while playing a virtual game. This improved knowledge retention and kept participants interested [3].
The incorporation of intelligent learning technology into interactive online education has profoundly altered the educational landscape, enhancing student engagement, personalizing learning experiences, and eventually improving educational outcomes [4]. Intelligent learning technologies, especially those utilized via the Internet of Things (IoT), create a compelling instructional environment that encourages active student engagement [5]. These technologies facilitate the seamless integration of diverse devices, fostering a more interactive and engaging educational environment that enhances student communication and collaboration.
The tailoring of learning experiences has been greatly enhanced by intelligent technologies. These systems may adjust to individual learning methods and preferences, providing customized instructional information that addresses unique needs. This flexibility has facilitated an enhancement in the enthusiasm and feelings of ownership of pupils regarding their learning [6]. Moreover, as emphasized by Nesterenko [7], individualized learning engages students more effectively and fosters a deeper comprehension and retention of material, which is essential for academic achievement.
The assessment of educational outcomes in intelligent learning environments validates their beneficial effects. The assessments reveal that students engaged in individualized intelligent learning experiences generally demonstrate superior academic achievement compared to their counterparts in conventional settings [8]. This is ascribed to the self-regulated characteristics of these environments, which enable students to manage their education, fostering a sense of responsibility and initiative [6]. The influence of intelligent learning technologies in interactive online education is substantial, providing notable enhancements in student engagement, personalization, and academic success [9].
The integration of intelligent learning technologies in educational environments has attracted attention with regard to their potential to improve learning experiences and results, particularly for students within special education. Lu, Xie, and Liu [10] articulate that smart classrooms can significantly influence students’ situational commitment, postulating that students’ perceptions about their learning environment and intrinsic motivations play crucial roles in their educational experiences. The implications of this commitment are particularly outstanding in special education environments, where personalized approaches are essential to maximizing learning results
El-Sabagh [11] emphasizes that such environments can improve students’ participation, particularly for students with special needs. This adaptability not only encourages commitment but also supports the development of critical self-regulation skills for effective learning. In special education, where individualized instruction is essential, intelligent learning technologies provide opportunities to customize the learning experience to meet unique needs. Wang et al. [12] expand this idea, investigating the interaction between teachers’ beliefs, the quality of the class process, and student participation in intelligent learning environments. Their findings suggest that teachers’ perceptions significantly affect the learning climate, thus influencing the levels of student participation. This relationship is particularly pronounced in special education contexts, where teachers must take advantage of technology effectively to create an inclusive and supportive atmosphere.
Cheng and Lai [13] carry out an exhaustive review of special education studies backed by technology, revealing that several technological interventions have been beneficial in facilitating learning for students with special needs. Their analysis indicates that technology can close gaps in communication, provide visual support, and allow interactive learning experiences, thus improving educational results. Such findings emphasize the transformative potential of intelligent learning technologies when they are carefully implemented in special education environments. Yakin and Linden [14] argue that the customization capabilities of these platforms lead to greater commitment and better academic results. This evidence supports the notion that adaptive learning technologies can serve as powerful tools to improve educational experiences for students with various learning requirements, particularly in specialized contexts.
The self-regulated learning concept in smart learning environments is critically examined by Gambo and Shakir [15], who argue that these environments promote autonomy and self-directed learning. For students in special education, promoting self-regulation can be a challenge, but it is essential to develop independent learning skills. Smart learning technologies provide scaffolding that guides students to monitor their progress and adjust their strategies, ultimately improving their learning results.
Mathematics, beyond being a basic academic discipline, offers a critical area for students to develop higher-order cognitive skills, problem-solving strategies, reasoning abilities, and analytical thinking capacities [1,16]. However, not all students develop their mathematical skills equally and at the same pace. This issue becomes particularly evident in the context of mathematics learning disability (MLD), a condition characterized by significant and persistent difficulties in number perception, arithmetic operations, numerical reasoning, and problem-solving [17].
Mathematics learning disability (dyscalculia), although not as widely recognized as dyslexia, is increasingly gaining attention in educational and cognitive science research. Mathematics learning disability (MLD) can cause difficulties not only in students’ numerical operations but also in daily life skills, time management, spatial relationships, and higher-level problem-solving processes [18]. In addition to having a negative impact on students’ overall academic success, this situation can also lead to negative attitudes towards the mathematics and STEM (science, technology, engineering, and mathematics) fields in the long term and limit their career choices [17].
Although it is difficult to obtain clear and precise data on the prevalence of mathematics learning disability in society, the rates of this disorder vary from country to country. The main reasons for the variability in these rates are the differences in the sample selection used to define mathematics learning disability and the measurement tools used in the diagnosis process [19]. According to research, approximately 5% of the general student population and 47% of children evaluated among individuals with special education needs are diagnosed with mathematics learning disability. However, this rate varies between 3% and 14%, according to various sources, and it is reported that the number of students with mathematics learning disability may be much higher than the stated rates [20]. Incorrect diagnosis processes are shown as one of the reasons for these differences. In particular, the use of inappropriate assessment tools or different interpretations of diagnostic criteria may contribute to the high prevalence rates [21]. However, the complexity of the cognitive mechanisms underlying this disorder, the wide range of variability among individuals, and the lack of widespread individualized education plans reveal the need to develop a more comprehensive and standardized assessment framework on this subject.
Mathematics learning disability is a condition that can occur from early childhood and is usually encountered first by classroom teachers [22]. Therefore, the primary school period is of critical importance for the early diagnosis of mathematics learning disability and for these students to benefit from effective educational interventions. For instance, Silverman [23] emphasizes that the diagnosis of a mathematics learning disability in primary school creates more positive effects on both the cognitive and social development of the student. In this process, the attitudes of classroom teachers towards mathematics, their level of awareness of mathematics learning disability, their competence in identifying students at risk, and their skills in preparing appropriate individualized educational environments for these students are very important in terms of supporting students’ mathematical academic success as well as their social and emotional development. Early recognition of a student with a mathematics learning disability, diagnosis of their strengths and weaknesses, and the creation of an educational plan accordingly can significantly reduce the risk of the student’s negative experiences in mathematics spreading to the rest of their academic life. Effective evidence-based interventions can increase the student’s interest and motivation in mathematics and school; this situation can contribute to the student finding a place for themselves in social and economic life in the future. In this context, enhancing the knowledge and awareness of classroom teachers regarding mathematics learning difficulties is crucial not only for the individual development of students but also for fostering broader societal benefits [24].
The education system is largely dependent on the qualifications of teachers in terms of identifying students with MLD at an early age, developing appropriate intervention strategies, and implementing individualized education plans. At this point, teachers’ levels of knowledge about MLD stand out as a determining factor in understanding students’ difficulties, selecting appropriate teaching materials, and making the necessary adaptations. However, the literature reports that many teachers have limited knowledge about MLD, which makes it difficult to implement effective interventions [25].
On the other hand, it is not only the knowledge level of teachers in this regard but also their self-efficacy beliefs that are important factors to consider [26]. Self-efficacy refers to a person’s subjective belief in their capacity to perform a certain task [27]. When it comes to teachers, self-efficacy is a critical source of motivation in the areas of classroom management, implementing differentiated teaching strategies, supporting students with special needs, and trying new teaching methods [28]. Teachers with high self-efficacy levels are more resilient when faced with difficulties, seek effective solutions, apply innovative teaching materials, and are more successful in adapting to students’ differences [29]. In this regard, there is a significant need to raise awareness about students with mathematics learning disability and to enhance both the knowledge and self-efficacy of teachers. In recent years, various in-service training programs, professional development workshops, and online training courses have been developed to meet this need [30]. The widespread use of interactive online learning technologies, especially during the COVID-19 pandemic, has accelerated the transfer of teacher education programs to online platforms.
Face-to-face and interactive online learning programs may have different effects on teachers [31]. Face-to-face education offers participants direct interaction, immediate feedback, and application-oriented learning opportunities, while interactive online learning provides flexibility in space and time, a diversity of resources, interactive communication, instant messages, and the opportunity to reach a wider audience [32]. However, the question of which model increases teachers’ knowledge and self-efficacy levels in MLD more effectively has not yet been clarified.
The literature takes into account various variables when evaluating the effectiveness of in-service training programs [33]. These variables include teachers’ educational status, length of professional experience, age, previous in-service training in special education, and educational background in learning disabilities. For instance, in a study conducted by Kaçar [34], it was determined that vocational high school teachers’ level of knowledge about learning disabilities showed significant differences according to their branches, the presence of students receiving inclusive education in their classes, and their previous participation in in-service training on special education. This finding shows that the effectiveness of in-service training programs may vary depending on the professional and personal characteristics of teachers. In addition, teachers who have previously received training in the field of special education may initially have an advantage in recognizing and intervening in students with MLD. Such teachers may benefit from the training programs offered, especially in terms of strategy development, material design, or integration of new technological tools [35]. On the other hand, teachers who have not received any training in special education or vocational education before may need to be given basic conceptual information first.
Training teachers in MLD is essential to the success of inclusive education policies. International organizations and educational policies emphasize the importance of providing inclusive and equitable learning environments that address the diverse learning needs of all students [36]. Teachers who understand the academic, cognitive, and affective needs of MLD students are crucial for fostering an inclusive and high-quality education. Thus, focusing on MLD within teacher education programs can be seen as a strategic approach to improving the quality and equity of education systems globally.
However, there is a limited body of research examining the effects of interactive online learning and face-to-face mathematics learning disability education programs on teachers’ knowledge and self-efficacy. In particular, the post-2020 surge in digitalization and interactive online learning has created new research demands in this area [32,37]. Comparative studies can offer valuable insights for both policymakers guiding teacher education programs and teacher training institutions. For instance, the study by De Krischler and Pit-ten Cate [38] demonstrated the effectiveness of an in-service training program aimed at enhancing teachers’ adaptive expertise in relation to students with learning disabilities, yet it did not extensively explore the impact of face-to-face versus interactive online learning delivery formats. Similarly, while Dowker’s [39] research on mathematics intervention strategies for primary school students informs teacher education models, it does not sufficiently address the comparative analysis of interactive online learning and face-to-face education programs. In contrast, current challenges, particularly in the post-COVID-19 era, necessitate remote teacher training programs that are sustainable, effective, and inclusive [37]. The influence of interactive online learning programs on teachers’ knowledge acquisition, their impact on self-efficacy beliefs, and the characteristics that shape these outcomes remain crucial areas for further investigation [32].
One of the most important ways to enhance sustainable teacher preparation is through interactive online learning, especially when it comes to preparing teachers to help kids who struggle with math. The COVID-19 pandemic’s shift to online learning highlighted the necessity of customized instruction that includes appropriate, cutting-edge approaches for these pupils [40]. In the context of helping children who struggle with mathematics, interactive online learning has become an essential tool for teacher preparation. The use of interactive online learning approaches necessitates a review of their sustainability and efficacy in pedagogical practices, particularly with regard to the distribution of resources meant to enhance these students’ academic performance.
The COVID-19 pandemic hastened the use of interactive online learning and forced teachers to find creative ways to teach math to kids who struggle with it. The necessity of adapting conventional teaching strategies to properly address the requirements of secondary students with learning disabilities in an online setting is emphasized by Bouck, Myers, and Witzel [41]. The significance of teaching teachers to use differentiated pedagogic tactics that take into account the varying cognitive profiles of pupils in a virtual environment is underscored by their findings. Since these methods aim to enable educators to design inclusive learning experiences in spite of physical classroom limitations, they have a direct impact on the sustainability of educational practices.
Cassibba et al. [42] further examine the difficulties of teaching mathematics remotely, emphasizing that standard pedagogical approaches frequently do not translate well into an online setting, especially for disciplines like mathematics that call for practical involvement. Acknowledging the challenges faced by educators, the authors recommend that teacher training programs and resource distribution should change to incorporate technology and pedagogical approaches tailored to online settings. In this context, sustainability refers to both the efficacy of teaching methods and the ongoing professional development of teachers, which is crucial for meeting the complex requirements of students with learning disabilities.
This research is expanded upon by Videla et al. [43], who looked at the educational resources and tactics that arose throughout the COVID-19 pandemic. According to their study, educators have implemented a number of creative methods that could be used as a foundation for future teacher training cadres. The focus on developing accessible learning environments emphasizes the necessity of a resource allocation approach that encourages an increase in the variety of instructional strategies and resources available to teachers. Sustainable teaching methods that may be tailored to the specific requirements of math students with disabilities can be informed by the insights gathered by these initiatives.
Another way to achieve educational sustainability is by integrating adaptive technologies into teacher preparation programs. According to Marienko et al. [44], adaptive technology-enabled personalized learning benefits students with learning disabilities and fosters a more sustainable model of teacher education by enabling teachers to modify their lessons to fit the needs of various learning profiles. This strategy encourages participation and long-term success among students who struggle with mathematics by supporting the creation of customized learning pathways.
In light of the findings presented so far, the impact of intelligent learning technologies on educational experiences and results in special education environments is a multifaceted topic. The research suggests that interesting learning environments, adaptive platforms of electronic learning, and the promotion of self-regulated learning are key factors to improve educational experiences for students with special needs. As technology continues to evolve, its reflexive integration into special education practices offers promising paths to improve educational equity and results. The literature collectively underlines the need for the continuous exploration of the effectiveness of online learning technologies to promote inclusive, attractive, and supportive learning environments for all students.
According to the literature, there is a complicated relationship between teacher preparation, interactive online learning, and the assistance given to pupils who struggle with math. The key lesson is that, in the wake of the COVID-19 pandemic, efforts to improve education must prioritize sustainability in both teaching techniques and financial allocation. By prioritizing teacher training and interactive technology integration, educational institutions may create more inclusive learning environments that successfully address the needs of all students, especially those who struggle with mathematics. Therefore, the shift to interactive online learning presents both a challenge and an opportunity to reconsider instructional practices and resource allocation in order to support equitable access and long-term success for students with learning disabilities.
Therefore, a study examining the effects of interactive online learning and face-to-face mathematics learning disability education programs on teachers’ knowledge and self-efficacy will contribute significantly to both the academic literature and educational practices. The findings can provide sustainable information to institutions investing in teacher education, policymakers, and school administrators on how to improve the content, methods, and delivery formats of such programs. In addition, the results can provide valuable insights into the professional development of potential and current teachers and provide guidance on how to best support their sustainable career development and growth in more effective learning environments. The most important innovation that this research will add to the body of knowledge may be the effectiveness of smart learning environments. In addition, a significant part of the research gap in this area can be filled with the results that will be obtained.
The purpose of this study is to examine the effects of an interactive online learning (ILL) and face-to-face mathematics learning disability program on teachers’ knowledge and self-efficacy levels in terms of their contribution to teaching practices.
In this context, the following questions were investigated:
  • Is there a significant difference between the self-efficacy scores of teachers who received the mathematics learning disability program via interactive online learning (ILL) compared to the face-to-face program?
  • What is the effect size on the knowledge and self-efficacy levels of teachers who received interactive online learning and face-to-face training?

2. Materials and Methods

2.1. Research Model

This research was designed to examine the effects of the mathematics learning disability program, which offered interactive online learning (IOL) and face-to-face training, on the knowledge levels and self-efficacy levels of teachers. The research was conducted using a quasi-experimental design model, which involved comparing two experimental groups through quantitative research methods. While this design facilitates the comparison of the effectiveness of different educational methods, it differs from fully experimental designs due to the absence of strict control over experimental conditions [45].

2.2. Participants

The study group consisted of 80 classroom teachers who volunteered to participate in the research and who worked in the center of Adapazarı, Sakarya province (Turkey) in the 2023–2024 academic year. Since this study was designed experimentally, the number of participants was limited so that the process could be kept under natural control and would not be affected by external factors. By drawing lots, 40 of the teachers were divided into the interactive online learning group and 40 into the face-to-face education group. Table 1 provides an overview of the descriptive characteristics of the participants, including key demographic variables relevant to the study. These teachers were identified to have experience and knowledge related to this research topic, based on their professional seniority, education status, participation in in-service training related to the field of special education, and previous receipt of education about mathematics learning disability (dyscalculia).

2.3. Data Collection Tool

Data were collected in this study using a survey method. The survey form consisted of two sections. The first section included five questions regarding the demographic characteristics of the teachers participating in the study, and the second section included the five-point Likert-type Mathematics Learning Difficulty Area Teacher Self-Efficacy Scale developed by the researchers. The data collection tool did not participate in the main application, three hundred and twenty-nine (329) teachers participated in the scale development study, and validity and reliability analyses were conducted for the scale.
Exploratory factor analysis (EFA) was performed to determine the construct validity of the scale and to reveal the factor structure. In this process, principal component analysis and the direct oblique rotation method were used. While the principal component method was preferred because it is a widely used method in practice, the direct oblique rotation method was applied with the assumption that there is a relationship between the factors [45].
Before the analysis, the Kaiser–Meyer–Olkin (KMO) sample adequacy coefficient was calculated as 0.949 and the sample size was found to be sufficient for EFA. This value expresses an “excellent” level of adequacy according to the KMO index [22,23]. In addition, the Bartlett sphericity test result was found as χ2 = 2286.609, df = 136, p < 0.001, and it was determined that the correlations between the items were at an appropriate level for factor analysis [46]. Table 2 provides the factor analysis results for the Mathematics Learning Difficulty Area Teacher Self-Efficacy Scale, highlighting the underlying dimensions and validity of the scale.
When the factor analysis results were examined, it was determined that the scale consisted of two sub-dimensions. The first factor was named “Personal Teaching Efficacy” and was found to consist of 11 items (items 1, 2, 3, 4, 5, 6, 7, 8, 9, 11, and 13). The second factor was named “Instructional Support Efficacy” and was found to consist of 6 items (items 14, 15, 16, 17, 18, and 19).
Tabachnick and Fidell [47] state that, if an item loads on more than one factor, it is appropriate to remove these items from the analysis if the loading difference is less than 0.10. Accordingly, in the preliminary application study of the scale, items 10 and 12 loaded on more than one factor and were removed from the analysis because the difference between the factor loadings was less than 0.10. In addition, Büyüköztürk [45] emphasizes that items that do not give significant loadings on any factor should be removed from the analysis. Based on this, items 20, 21, and 22, which did not give factor loadings, were also removed from the scale.
As a result of EFA, the lowest factor loading was determined as 0.508, and it was established that the factors made a significant contribution to the scale items because this value was above the 0.40 threshold value accepted in the literature [48]. As a result, it was determined that the scale consisting of 17 items had a two-factor structure and that these two factors explained 71.34% of the total variance.
Table 2 shows the reliability analyses of the scale and its sub-factors. Accordingly, it is seen that the scale has a very high reliability level (Cronbach’s Alpha = 0.970). When the values obtained as a result of the reliability analyses of the sub-dimensions of the scale, personal teaching competence (Cronbach’s Alpha = 0.961) and instructional support competence (Cronbach’s Alpha = 0.938), are taken into consideration, it can be seen that they have a very high reliability level. Therefore, this indicates that the reliability of the scale developed in this study is generally high.

2.4. Procedure

In the experimental application process of this study, the mathematics learning disability program developed by the researchers was applied to the teachers in the experimental group. Since the number of teachers participating in this study was not very large, it was assumed that they were equally affected by previous education or other independent variables. The program consisted of both interactive online learning and face-to-face education modules and lasted 4 weeks in total. The training was carried out in 4 h sessions each week, one day a week, and a total of 16 h of training was provided.
The sessions for the 40 teachers who participated in the face-to-face training were organized in the researcher’s office in the Adapazarı district of Sakarya. Two training sessions were held on weekends between 10:00 and 12:00 in the morning and between 13:00 and 15:00 in the afternoon. In these sessions, basic topics such as working methods with students with learning difficulties in mathematics, special education practices, and in-class support strategies were conveyed to the teachers. During the training, real case examples were presented to the teachers, and they were encouraged to develop solution suggestions for these situations. In addition, practical activities were performed to show how to use the training materials and practical work was conducted on preparing individualized education plans (IEP).
For teachers participating in interactive online learning education, sessions were held synchronously via the Google Meet platform. In the training, presentations, video content, and interactive materials prepared in advance by the researcher were used. Teachers participated in instant question–answer activities via digital tools during the sessions and completed the assigned tasks. Each interactive online learning session was supported by group work and discussions where teachers could collaborate. In addition, short assignments were given to teachers at the end of the sessions and these assignments were evaluated before the next session. The findings obtained in this research are limited within the scope of Google Meet and other interactive tools used.
The training program included the following topics to enhance teachers’ ability to work effectively with students experiencing mathematics learning difficulties:
  • Dyscalculia: Dyscalculia is defined as a type of learning disability in mathematics. Its causes can be based on genetic, neurological, and environmental factors. The main symptoms in students include difficulty understanding the concept of numbers, difficulty with basic mathematical operations, and problems understanding temporal relationships.
  • Misconceptions and Facts: Dyscalculia is often confused with intellectual disability, but this is a common misconception. Students’ cognitive potential should be assessed accurately, and misconceptions should be corrected. Dyscalculia is a learning disability in which students can be successful with appropriate teaching methods.
  • Effective Teaching Methods: Visual materials make it easier for students to understand mathematical concepts. Game-based learning concretizes abstract mathematical topics in a fun way. Individualized teaching methods require developing strategies that are appropriate to the student’s learning pace and needs.
  • Teacher Role: Teachers should understand the emotional and academic needs of students with dyscalculia while creating awareness. Students can be supported by establishing effective cooperation with families. Teachers can increase students’ self-confidence by creating a positive learning environment in the classroom.
  • Definition and Symptoms of Mathematics Learning Disability: Mathematics learning disability can manifest itself in different types, including dyscalculia. These difficulties are generally characterized by students’ difficulties in understanding and applying mathematical concepts. If symptoms are detected early, appropriate interventions can increase success.
  • Application Examples for Students with Learning Disabilities: Classroom applications can be adapted to develop students’ mathematical skills. For example, number and operation concepts can be taught using concrete materials and visual supports. The needs of students with learning disabilities can be met with group work and individual support.
  • Special Education Support Services and Legal Regulations: Special education support services in Turkey offer various regulations to support students’ right to education. Teachers can make the most of these services by knowing their legal rights and responsibilities. Individual education plans can be prepared for the education of students with dyscalculia.
  • Assessment and Feedback Strategies: Students’ mathematical skills should be assessed regularly. Teachers should provide constructive feedback to students as they monitor their progress. Methods that will increase students’ motivation throughout the development process should be used.

2.5. Analysis of Data

The data obtained in this study were evaluated using the SPSS 26.0 statistics program in a computer environment. In order to evaluate the effects of the education programs, the knowledge and self-efficacy levels before and after the face-to-face and interactive online learning education programs were compared. In this context, the dependent sample t-test was applied to determine whether there was a significant difference between the scores before and after the education program. The independent sample t-test was applied in the comparison of the groups. Cohen’s d statistic was used to evaluate the magnitude of the difference between the groups. Cohen’s d expresses the magnitude of the mean difference between two groups in terms of standard deviation [49]. This method is used especially to determine whether group differences are statistically significant and is important in the evaluation of effect size. According to the standard interpretations suggested by Cohen [26], d < 0.2 indicates a small effect, 0.2 ≤ d ≤ 0.8 indicates a medium-sized effect, and d > 0.8 indicates a large effect.

3. Results

3.1. Results for Knowledge and Self-Efficacy

The findings regarding whether there is a significant difference between the knowledge and self-efficacy levels of the teachers in the application group who were given the mathematics learning disability training program before and after the application in terms of the variable of participation in the study on mathematics learning disability are shown in Table 3.
Table 3 presents the independent sample t-test results examining the pre- and post-implementation differences in terms of the knowledge and self-efficacy levels of teachers who received IOL and face-to-face education.
Before the application, it was observed that the knowledge and self-efficacy levels of teachers who received IOL education (M = 1.732, SD = 0.176) were higher than those who received face-to-face education (M = 1.652, SD = 0.144), and this difference was statistically significant (t = 2.250, p = 0.027 < 0.05). However, after the application, it was determined that the difference between the two groups was not significant (t = −0.829, p = 0.410 > 0.05).
According to the analyses conducted at the factor level, it was determined that the average scores of the teachers who received IOL education (M = 1.880, SD = 0.190) were significantly higher than those who received face-to-face education (M = 1.784, SD = 0.183) for the personal teaching adequacy factor (pre-test F1) (t = 2.289, p = 0.025 < 0.05). However, this difference was not found to be significant for the instructional support adequacy factor (pre-test F2) (t = 1.066, p = 0.290 > 0.05).
After the application, no significant differences were found between the groups in terms of both personal teaching efficacy (Post-test F1) and instructional support efficacy (post-test F2) factors (t = −0.721, p > 0.05). These findings show that at the end of the training process, the knowledge and self-efficacy levels of teachers who received IOL and face-to-face training were balanced and both methods had similar effects.

3.2. The Effect Size

Cohen’s d analysis was conducted to determine the effect size of IOL and face-to-face education on teachers’ knowledge and self-efficacy levels. The findings of the analysis are shown in Table 4.
Before the application, it was determined that the average knowledge and self-efficacy level of the teachers who received IOL education (M = 1.73, SD = 0.18) was higher than the average for the teachers who received face-to-face education (M = 1.65, SD = 0.14). The difference between the groups was statistically significant (p = 0.027 < 0.05) and the effect size was calculated as Cohen’s d = 0.503. This value indicates a medium effect size. This finding shows that the teachers who participated in the IOL education program may have a higher initial level of knowledge and self-efficacy before the application.
After the application, it was determined that the difference between the two groups was not statistically significant (p = 0.410 > 0.05). The mean for the teachers who received IOL education (M = 3.73, SD = 0.34) remained at a level close to the mean for the teachers who received face-to-face education (M = 3.79, SD = 0.31). The effect size was calculated as Cohen’s d = 0.185, indicating a small effect.
These findings show that both types of training have similar effects on increasing teachers’ knowledge and self-efficacy levels and that the initial differences are balanced at the end of the training process. According to Cohen’s d analysis, while a significant difference was observed among the teachers who participated in IOL education at the beginning, this difference was no longer statistically significant after the completion of the program. This situation reveals that the training programs offered by both methods contribute to teacher development to a similar extent.

4. Discussion

This study aimed to assess the effectiveness of training programs designed to enhance teachers’ knowledge and self-efficacy in helping those with mathematics learning disability (MLD). Specifically, it examined the comparative effects of IOL and face-to-face training and analyzed their impact on teachers’ professional development. The findings indicate that while both training modalities support teachers’ professional growth, they exhibit distinct dynamics.
The results reveal that, prior to the implementation, teachers in the IOL group had significantly higher knowledge and self-efficacy levels compared to those in the face-to-face education group. This may suggest that teachers opting for IOL have higher individual learning motivation or are better prepared for the training process due to their greater familiarity with technology [32]. Additionally, prior experience with digital learning platforms may have facilitated smoother adaptation to the IOL format.
However, the post-intervention results indicate that the knowledge and self-efficacy levels of both groups became comparable. This suggests that both training approaches effectively contribute to teachers’ professional development and that initial differences in learning processes tend to balance out over time. This finding aligns with previous research demonstrating that IOL and face-to-face education can yield equivalent outcomes in teacher development [32,37].
Factor-level analyses indicate a significant increase in teachers’ personal teaching competence and instructional support competence. Following the training program, teachers demonstrated greater proficiency in recognizing the needs of students with MLD, utilizing appropriate instructional materials, and developing individualized teaching strategies. The improvement in instructional support competence suggests that teachers enhanced their ability to implement in-class adaptations and provide guidance services for students. These findings align with previous research indicating that training programs designed to enhance teachers’ competencies in special education are effective [25,29].
The training program proved to be highly effective in increasing teachers’ knowledge and self-efficacy. The mode of participation, whether remote or face-to-face, did not significantly influence the program’s effectiveness, as both groups achieved comparable levels of success. This finding is particularly important for the accessibility and scalability of the training program. The fact that similar outcomes can be achieved regardless of the training format presents a significant advantage in addressing teachers’ professional development needs under varying circumstances.
The differences observed before the implementation may be due to the teachers’ professional experience levels, learning styles, motivation, or previous professional development training. The higher level of knowledge and self-efficacy of teachers who participated remotely in particular may be explained by the differences in the technological aptitude of this group or their self-learning skills. In this context, analyzing the reasons for these differences before the implementation in more depth may contribute to the development of different strategies according to the needs of teachers in the preliminary preparation process of the training program. Designing training programs in an individualized manner may help to eliminate such differences.
The findings further contribute to the discussion on the effectiveness of IOL and face-to-face education. According to Cohen’s d analysis, the initial difference observed in the IOL group before the intervention had a medium effect size. However, no significant difference was found between the two groups after the training. This suggests that both educational modalities were equally effective in enhancing teachers’ knowledge and self-efficacy. In addition, it should be taken into consideration that IOL is more prevalent and may be more effective than face-to-face teaching for those with mathematics learning disability. By the end of the training program, there was no statistically significant difference in the knowledge levels of teachers who participated in IOL versus face-to-face education. This result aligns with the existing literature indicating that different instructional formats yield comparable learning outcomes [50].
Furthermore, the insights gained from distant learning during seizures suggest useful support systems for students with particular needs, like those with autism spectrum disorder, as well as those with typical learning challenges [51,52]. Distance education offers the opportunity to improve teacher preparation in a sustainable way by implementing evidence-based approaches and encouraging an interactive online learning environment. This could improve outcomes for children who struggle with math.

5. Conclusions

The findings of this study demonstrate that training programs significantly contribute to teachers’ professional development. However, variations in teachers’ pre-training knowledge levels may be influenced by individual learning styles, technological proficiency, and prior professional experiences. Therefore, future research should explore these individual differences in greater detail and enhance training programs with personalized content. Additionally, long-term follow-up studies are needed to examine how teachers apply their newly acquired knowledge in classroom settings and to assess its impact on student achievement over time. Finally, similar studies can be conducted over longer periods of time.
In conclusion, this study confirms the effectiveness of in-service training programs designed to enhance teachers’ knowledge and self-efficacy in the field of mathematics learning disability. Notably, the findings indicate that interactive online learning and face-to-face education produce comparable learning outcomes. As a result, education policies and teacher training programs should prioritize hybrid education models that integrate the strengths of both approaches. Such models can better accommodate teachers’ learning paces and preferences, ultimately leading to more effective and inclusive professional development opportunities.

6. Recommendations

The following recommendations were developed based on the study results.
It is recommended that students who have difficulty learning mathematics receive education through interactive online learning environments and that their teachers provide guidance in this practice.
This research can be repeated after a certain period of time. In addition, comparative applications can be facilitated in other innovative learning environments, and their effects on new learning can be revealed. It is particularly recommended that research be conducted comparing different smart learning environments. Additionally, similar studies can be conducted on larger sample sizes and in different geographical locations.
It is recommended that a follow-up assessment be implemented six months after the intervention to measure the maintenance and practical application of knowledge and self-efficacy gains. Researchers are also preparing to conduct research in this direction.

Author Contributions

Conceptualization, H.U.; Methodology, H.U.; Validation, M.S.D.; Investigation, N.S.; Resources, H.U.; Data curation, M.S.D.; Writing—original draft, N.S.; Writing—review & editing, N.S. and H.U.; Supervision, G.A. and M.S.D.; Project administration, G.A. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

This research was approved by the Near East University Scientific Research Ethics Committee, NEU/EB/2022/849, 7 June 2022.

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

Data will be made available on request.

Acknowledgments

The authors would like to extend their gratitude to all the participants in this study. Without their participation, this study would not have been possible.

Conflicts of Interest

The authors declare no conflicts of interest.

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Table 1. Descriptive characteristics of the participants.
Table 1. Descriptive characteristics of the participants.
Frequency (n)Percentage (%)
GenderMale5670.0
Woman2430.0
Total80100.0
Professional Seniority5 years and under1316.3
Between 5 and 10 years1620.0
Between 10 years and 15 years1012.5
Between 15 years and 20 years1822.5
20 years and above2328.7
Education StatusAssociate degree11.3
License7188.8
Degree810.0
Participated in in-service training related to the field of special educationYes4455.0
No3645.0
Previously received education about mathematics learning disability (dyscalculia)Yes1518.8
No6581.3
Total80100.0
Table 2. Mathematics Learning Difficulty Area Teacher Self-Efficacy Scale factor analysis findings.
Table 2. Mathematics Learning Difficulty Area Teacher Self-Efficacy Scale factor analysis findings.
ArticlesFactor 1 (PTC)Factor 2 (ISE)
Personal Teaching Competence (PTC)I can plan teaching for students with learning difficulties in mathematics (4)0.976
I can adapt methods and techniques for students with Mathematics Learning Disability. (6)0.941
I can determine methods and techniques for students diagnosed with Mathematics Learning Disability. (5)0.940
I am competent in learning strategies for students with learning difficulties in mathematics. (7)0.884
I am knowledgeable about the characteristics of students with Mathematics Learning Disability. (2)0.746
I am qualified to conduct program-based assessments for students with symptoms of Mathematics Learning Disability. (3)0.735
I am competent in organizing content for students diagnosed with Mathematics Learning Disability. (9)0.735
My knowledge of adapting teaching for students with learning disabilities in mathematics is sufficient. (13)0.630
I can use special teaching strategies that are appropriate for students with Mathematics Learning Disability. (11)0.628
I can recognize the symptoms in students with learning difficulties in mathematics. (1)0.620
I am competent in improving the mathematical skills of students with learning difficulties in mathematics. (8)0.553
Cronbach’s Alpha 0.961
Instructional Support Efficacy (ISE)I can prepare different materials for students with learning difficulties in mathematics. (19) 0.894
I am competent in the process evaluation used to improve the success of students diagnosed with Mathematics Learning Disability. (18) 0.891
Collaborating with other teachers for students diagnosed with Mathematics Learning Disability. (16) 0.761
I can help my students with Mathematics Learning Disability solve number problems. (17) 0.759
I can guide families of students with learning difficulties in mathematics. (15) 0.718
I can organize appropriate classroom environments for students with Mathematics Learning Disability. (14) 0.508
Cronbach’s Alpha 0.938
Eigenvalue8.3884.531
Variance Explained66.8754.460
Total Variance Explained71.335
Cronbach’s Alpha 0.970
Table 3. T-test results for knowledge and self-efficacy levels before and after the training programs on mathematics learning difficulty.
Table 3. T-test results for knowledge and self-efficacy levels before and after the training programs on mathematics learning difficulty.
Group StatisticsIndependent Samples Test
(Levene’s Test for Equality of Variances)
What is your participation in the study?nMSDFt* p
Knowledge and Self-Efficacy Levels Pre-testFrom IOL401.7320.1761.7272.2500.27
Face to face401.6520.144
Knowledge and Self-Efficacy Levels Post-testFrom IOL403.7270.3360.630−0.8290.410
Face to face403.7870.315
Pre-test F1From IOL401.8800.1900.0632.2890.025
Face to face401.7840.183
Pre-test F2From IOL401.4630.2574.4041.0660.290
Face to face401.4080.192
Post-test F1From IOL403.6750.3150.375−0.7210.473
Face to face403.7250.306
Post-test F2From IOL403.8210.5221.625−0.7210.473
Face to face403.9000.457
* p < 0.05; IOL = interactive online learning; F1 = personal teaching efficacy factor; F2 = instructional support efficacy factor; M = mean; SD = standard deviation; n = sample; M = mean; SD = standard deviation; F = the ratio of the mean square between groups to the mean square within groups; t compares the means of the two groups; p measures the probability of obtaining the observed results.
Table 4. Cohen’s d effect size table between groups.
Table 4. Cohen’s d effect size table between groups.
VariableIOLFace-to-Face Education* p** Cohen’s dInterpreting Effect Size
NMSDNMSD.
Pre-Application Avg.401.730.18401.650.140.0270.503At an intermediate level
Post-Application Avg.403.730.34403.790.310.4100.185At a small level
* p < 0.05; ** d (d < 0.2, small effect; 0.2 ≤ d ≤ 0.8, medium effect; d > 0.8, large effect).
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Sağıroğlu, N.; Uzunboylu, H.; Akçamete, G.; Demirok, M.S. The Effect of a Mathematics Learning Disability Program Offered Face to Face with Interactive Online Learning from Smart Learning Environments on Teachers’ Knowledge and Self-Efficacy Levels. Appl. Sci. 2025, 15, 5326. https://doi.org/10.3390/app15105326

AMA Style

Sağıroğlu N, Uzunboylu H, Akçamete G, Demirok MS. The Effect of a Mathematics Learning Disability Program Offered Face to Face with Interactive Online Learning from Smart Learning Environments on Teachers’ Knowledge and Self-Efficacy Levels. Applied Sciences. 2025; 15(10):5326. https://doi.org/10.3390/app15105326

Chicago/Turabian Style

Sağıroğlu, Necmi, Hüseyin Uzunboylu, Gönül Akçamete, and Mukaddes Sakallı Demirok. 2025. "The Effect of a Mathematics Learning Disability Program Offered Face to Face with Interactive Online Learning from Smart Learning Environments on Teachers’ Knowledge and Self-Efficacy Levels" Applied Sciences 15, no. 10: 5326. https://doi.org/10.3390/app15105326

APA Style

Sağıroğlu, N., Uzunboylu, H., Akçamete, G., & Demirok, M. S. (2025). The Effect of a Mathematics Learning Disability Program Offered Face to Face with Interactive Online Learning from Smart Learning Environments on Teachers’ Knowledge and Self-Efficacy Levels. Applied Sciences, 15(10), 5326. https://doi.org/10.3390/app15105326

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