Enhancing Psychological Well-Being Assessment Through Data Mining: A Case Study from Thailand
Abstract
:1. Introduction
2. Literature Review
2.1. Understanding Psychological Well-Being in Adolescents
2.2. Socioeconomic and Cultural Determinants of Adolescent PWB
2.3. Role of Schools and Teacher Support
2.4. Data Mining Applications in Adolescent Mental Health
2.5. Gaps in the Existing Literature
3. Materials and Methods
3.1. Population and Sample
3.1.1. Simple Random Sampling of Schools
3.1.2. Stratified Random Sampling of Students
3.2. Research Tools
Point Likert Scale Values
3.3. Data Collection and Ethical Considerations
3.4. Handling Missing Data
3.5. Research Methodology’s Model Evaluation
3.5.1. Data Cleaning
3.5.2. Data Integration
3.5.3. Data Selection
3.5.4. Data Transformation
3.6. Data Mining and Analysis Using JRip in WEKA and RapidMiner
3.6.1. Repeated Incremental Pruning to Produce Error Reduction (RIPPER) Algorithm
3.6.2. Waikato Environment for Knowledge Analysis (WEKA)
3.6.3. RapidMiner
3.6.4. Comparison of Tools: WEKA and RapidMiner
3.6.5. Algorithm Parametrization and Model Selection
3.7. Data Splitting Techniques
3.7.1. K-Fold Cross-Validation
3.7.2. Percentage Split
- 80/20: 80% of the data is for training, 20% for testing.
- 66/33: 66% training, 33% testing.
- 20/80: 20% training, 80% testing.
3.7.3. Supplied Test Set
3.8. Pattern Evaluation
3.9. Knowledge Representation
4. Results—Part A: Characteristics of the Phenomenon
4.1. Psychological Well-Being (PWB)
4.2. Questionnaire Results
4.3. PWB Characteristics by Group (Good, Fair, Poor)
- Accuracy: 90.18%
- Precision: 69.00%
- Recall: 90.90%
- F-measure: 78.40%
4.4. Level of Mental Health
4.4.1. Good Mental Health
4.4.2. Moderate/Fair Level of PWB
4.4.3. Low/Poor Level of PWB
5. Results—Part B: Assessment and Model Development
5.1. Data Analysis and Model Evaluation for PWB
5.2. Flow Chart of Study: Steps in Model Development
5.3. Synthesized Classification Rules and Knowledge Representation
- Setting the Topic and Objectives: This step aims to develop a system for synthesizing relationships using data mining techniques for lower secondary school students. It involves identifying how different factors are integrated to form a model that helps the reader understand the data mining model and provides reasoning for its formation.
- Preparing the Factors for Synthesis: The knowledge obtained from the data mining analysis in the form of rules or conditions is arranged into relationships, and the definitions of each factor affecting mental health, components of mental health, and guidelines for mental health care are reviewed. The results of the relationship synthesis are presented in written form.
- Synthesizing Factors According to Objectives: The results from data mining analysis are justified, explaining why specific factors affect mental health and its components. The synthesized results are categorized according to mental health levels: good, fair, and poor.
- Evaluating and Reviewing the Synthesis: The synthesized results are presented to the main and co-advisors for review and improvements based on feedback.
- Presenting the Synthesis Results: The synthesized relationship results are compiled and presented in a table, such as Table 6: Components and their properties of poor, fair, and good mental health.
6. Discussion
6.1. Revisiting Objectives
6.2. Implications for PWB Questionnaire Design
6.3. Limitations and Future Directions
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
AI | artificial intelligence |
BMR | Bangkok Metropolitan Region |
EDM | educational data mining |
JRip | rule-based algorithms |
PWB | psychological well-being |
RIPPER | Repeated Incremental Pruning to Produce Error Reduction Algorithm |
SESAO | Secondary Educational Service Area Offices |
SPWB | scales of psychological well-being |
WEKA | Waikato Environment for Knowledge Analysis program |
WHO | World Health Organization |
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Items | Sample Size (n = 2543) | |
---|---|---|
Number | % | |
Gender | ||
Male | 1486 | 58.43 |
Female | 1036 | 40.74 |
Other | 21 | 0.83 |
Religion | ||
Buddhism | 2368 | 93.12 |
Christianity | 37 | 1.45 |
Islam | 132 | 5.19 |
Hinduism | 1 | 0.04 |
Irreligion | 5 | 0.20 |
Secondary School Level | ||
Secondary 1 | 822 | 32.32 |
Secondary 2 | 911 | 35.82 |
Secondary 3 | 810 | 31.85 |
GPAX | ||
Less than 2.00 | 75 | 2.95 |
2.00–2.49 | 200 | 7.86 |
2.50–2.99 | 401 | 15.77 |
3.00–3.49 | 706 | 27.76 |
3.50–4.00 | 1159 | 45.58 |
Unknown | 2 | 0.08 |
Domicile | ||
Bangkok Metropolitan Region | 1847 | 72.63 |
Central | 377 | 14.83 |
Western | 8 | 0.31 |
Eastern | 24 | 0.94 |
Northeastern | 191 | 7.51 |
Northern | 58 | 2.28 |
Southern | 38 | 1.49 |
Income from parents per day (baht) | ||
Less than 100 baht | 346 | 13.61 |
100–199 baht | 1953 | 76.80 |
200–299 baht | 215 | 8.45 |
More than 300 baht | 29 | 1.14 |
Relationships with Family | ||
Excellent | 1006 | 39.56 |
Good | 1138 | 44.75 |
Fair | 352 | 13.84 |
Poor | 45 | 1.77 |
Bad | 2 | 0.08 |
Relationships with Friends | ||
Excellent | 1176 | 46.24 |
Good | 1133 | 44.55 |
Fair | 203 | 7.98 |
Poor | 31 | 1.22 |
Bad | - | - |
Relationships with Teachers | ||
Excellent | 564 | 22.18 |
Good | 1446 | 56.86 |
Fair | 495 | 19.47 |
Poor | 38 | 1.49 |
Bad | - | - |
Family status | ||
Marriage | 1802 | 70.86 |
Divorced | 611 | 24.03 |
Father or Mother Deceased | 115 | 4.52 |
Relatives | 15 | 0.59 |
Average Family Income per month (baht) | ||
Less than 10,000 baht | 213 | 8.38 |
10,000–30,000 baht | 1343 | 52.81 |
30,001–50,000 baht | 552 | 21.71 |
More than 50,000 baht | 435 | 17.11 |
Sufficiency of Family Income per month | ||
Adequate | 2167 | 85.21 |
Inadequate | 376 | 14.79 |
Feature | WEKA | RapidMiner |
---|---|---|
Interface | Text-based, research-focused | Visual GUI, industry-friendly |
Preprocessing | Requires external scripting/plugins | Built-in transformation tools |
Performance | Research-optimized | Scalable for large datasets |
Output | Detailed, text-rich | Visual, presentation-ready |
Reproducibility | Manual precision required | Workflow drag-and-drop |
PWB Level | Population (n = 2543) | |
---|---|---|
Number | % | |
Good Mental Health | 803 | 31.58 |
Fair Mental Health | 1722 | 67.72 |
Poor Mental Health | 18 | 0.71 |
Items | Item | Mean | SD |
---|---|---|---|
Autonomy (AU) | AU | 3.86 | 1.11 |
(1) People with strong opinions influence me. | AU1 | 3.49 | 1.14 |
(7) I have confidence in my opinions, even if they differ from those of most others. | AU2 | 3.70 | 1.10 |
(13) I judge myself by what I think is important, not by the values of what others think is important. | AU3 | 4.40 | 1.10 |
Environmental Mastery (EM) | 3.86 | 1.07 | |
(2) In general, I am in charge of the situation in which I live. | EM1 | 4.11 | 0.91 |
(8) The demands of everyday life often get me down. | EM2 | 3.24 | 1.27 |
(14) I am good at managing the responsibilities of daily life. | EM3 | 4.24 | 1.03 |
Personal Growth (PG) | 4.60 | 1.16 | |
(3) Having new experiences that challenge how I think about myself and the world is important. | PG1 | 4.84 | 0.98 |
(9) For me, life has been a continuous learning, changing, and growth process. | PG2 | 4.83 | 1.00 |
(15) I gave up trying to make big improvements or changes in my life long ago. | PG3 | 4.13 | 1.51 |
Positive Relationships (PR) with others | PR | 4.06 | 1.23 |
(4) Maintaining close relationships has been challenging and frustrating for me. | PR1 | 3.67 | 1.30 |
(10) People would describe me as giving and willing to share my time with others. | PR2 | 4.28 | 1.01 |
(16) I have not experienced many warm and trusting relationships with others. | PR3 | 4.24 | 1.39 |
Life Purpose (LP) | LP | 4.01 | 1.35 |
(5) I live one day at a time and do not think about the future. | LP1 | 4.28 | 1.46 |
(11) Some people wander through life, but I am not one of them. | LP | 4.16 | 1.29 |
(17) I sometimes feel as if I have done all there is to do in life. | LP3 | 3.59 | 1.29 |
Self-acceptance (SA) | SA | 3.85 | 1.24 |
(6) When I look at the story of my life, I am pleased with how things have turned out so far. | SA1 | 4.10 | 1.20 |
(12) I like most parts of my personality. | SA2 | 4.11 | 1.12 |
(18) In many ways I feel disappointed about my achievements in life. | SA3 | 3.35 | 1.41 |
Test Options | Accuracy (%) | Precision (%) | Recall (%) | F-Measure (%) |
---|---|---|---|---|
Weka Analysis | ||||
K-fold Cross-validation (5 folds) | 82.89 | 75.10 | 74.30 | 74.70 |
K-fold Cross-validation (10 folds) | 82.58 | 74.20 | 73.50 | 73.80 |
K-fold Cross-validation (20 folds) | 82.82 | 73.50 | 75.60 | 74.50 |
Percentage split: 20% | 80.19 | 72.50 | 66.40 | 69.30 |
Percentage split: 66% | 83.24 | 72.40 | 79.90 | 76.00 |
Percentage split: 80% | 82.91 | 78.20 | 74.30 | 76.20 |
Supplied Test Set (70:30) | 87.74 | 72.20 | 89.70 | 80.00 |
Supplied Test Set (80:20) | 90.18 | 69.00 | 90.90 | 78.40 |
Rapid Miner Analysis | ||||
K-fold Cross-validation (5 folds) | 81.95 | 60.52 | 53.11 | 56.57 |
K-fold Cross-validation (10 folds) | 81.56 | 58.11 | 56.48 | 57.28 |
K-fold Cross-validation (20 folds) | 81.32 | 54.97 | 53.12 | 54.03 |
Percentage split: 20% | 67.75 | 22.58 | 33.33 | 26.92 |
Percentage split: 66% | 81.83 | 53.90 | 51.03 | 52.43 |
Percentage split: 80% | 80.35 | 51.90 | 51.42 | 51.66 |
Supplied test set (70:30) | 81.13 | 61.29 | 57.88 | 59.54 |
Supplied test set (80:20) | 80.35 | 51.90 | 51.42 | 51.66 |
Bad PWB | Fair PWB | Good PWB | |
---|---|---|---|
Autonomy | Students have low self-confidence in their opinions, rarely express or reveal their needs, and listen to others more. Students are very concerned with social pressures or trends in thinking or acting and care more about those around them than themselves. | Students have confidence in their own opinions and can sometimes make decisions independently. They can occasionally choose what is best for themselves and exhibit self-confidence in certain situations. However, they follow societal trends when making decisions in unfamiliar circumstances. | Students confidently form their viewpoints and make autonomous decisions based on what best suits their needs. They are capable of choosing without succumbing to external pressure or influence. These students show resilience against societal expectations and can manage their actions independently. They assess themselves according to personal values and internal standards. |
Environmental Mastery | It is difficult for students to adapt to situations and environments or manage multiple daily responsibilities. | Students can manage various situations, even though the outcomes may not always be as desired. Additionally, they can handle their daily responsibilities effectively. | Students effectively manage daily responsibilities and handle various situations to meet their needs. They see their roles as students, children, or friends as positive. Additionally, they are confident in managing their surroundings, organizing daily life, utilizing opportunities, and shaping environments to align with their values and needs. |
Personal Growth | Students feel that encountering new experiences does not challenge their self-perception and worldview, and sometimes, students feel that past and present experiences do not result in changes in their lives. | Students are relatively satisfied with their appearance and personality and are interested in self-development. However, rapid changes can cause them stress or anxiety. | Students love and are satisfied with their appearance and image. They are constantly striving to change and develop themselves. Moreover, students have a positive attitude towards change, which makes students grow both physically and mentally. |
Positive Relationships | The outstanding characteristics of the students are: maintaining relationships with others is not difficult. Students can get along well with others, have love and good friendships with others, including seeing the characteristics of relationships with others positively, understanding giving and receiving, having trust, and being able to give love and forgive others. | Sometimes, maintaining relationships with others can be difficult for students. With time to get to know others, they are willing to open up, socialize, and form good friendships. | Students have positive relationships. Maintaining relationships with others is not difficult. Students can get along well with others, understand giving and receiving, and have trust, love, and good friendships. |
Life Purpose | Students who lack clear life goals often experience feelings of unfulfillment, which can lead to a loss of meaning and direction in their lives. When they lose the beliefs that give them a sense of purpose, they struggle to find significance in past experiences and may feel disconnected from the potential meaning in their current life. | Students are flexible in setting life goals and place importance on being able to make independent decisions in some matters. | Students have important goals, motivating them to develop themselves and giving meaning to their lives. Students also value their own decisions and are committed to achieving their goals. |
Self-Acceptance | Students are dissatisfied with themselves in the past and present and do not like their personality characteristics, such as their appearance, characteristics, and habits, which can easily cause anxiety and stress when something goes wrong with them. The student’s outstanding characteristic is that the student is happy with his/her past success. This is a good starting point for self-acceptance and having a good attitude towards himself/herself in the past and present. | Students are generally satisfied with themselves and recognize their self-worth, with rare occasions of disappointment in their achievements. | Students have a positive attitude towards themselves and have confidence and self-worth while accepting both good and bad aspects of themselves. They also like to seek new experiences that challenge their self-perception and worldview and feel optimistic about their past life. |
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© 2025 by the authors. Published by MDPI on behalf of the University Association of Education and Psychology. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
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Treearpornwong, A.; Kantathanawat, T.; Charoentham, M.; Pimdee, P.; Sukkamart, A. Enhancing Psychological Well-Being Assessment Through Data Mining: A Case Study from Thailand. Eur. J. Investig. Health Psychol. Educ. 2025, 15, 61. https://doi.org/10.3390/ejihpe15040061
Treearpornwong A, Kantathanawat T, Charoentham M, Pimdee P, Sukkamart A. Enhancing Psychological Well-Being Assessment Through Data Mining: A Case Study from Thailand. European Journal of Investigation in Health, Psychology and Education. 2025; 15(4):61. https://doi.org/10.3390/ejihpe15040061
Chicago/Turabian StyleTreearpornwong, Asamaporn, Thiyaporn Kantathanawat, Mai Charoentham, Paitoon Pimdee, and Aukkapong Sukkamart. 2025. "Enhancing Psychological Well-Being Assessment Through Data Mining: A Case Study from Thailand" European Journal of Investigation in Health, Psychology and Education 15, no. 4: 61. https://doi.org/10.3390/ejihpe15040061
APA StyleTreearpornwong, A., Kantathanawat, T., Charoentham, M., Pimdee, P., & Sukkamart, A. (2025). Enhancing Psychological Well-Being Assessment Through Data Mining: A Case Study from Thailand. European Journal of Investigation in Health, Psychology and Education, 15(4), 61. https://doi.org/10.3390/ejihpe15040061