1. Introduction
Industry 4.0 refers to the integration of various emerging information and communication technologies, marking a transformative shift in industrial processes [
1]. Similarly, Analytics 4.0 represents a significant advancement beyond traditional analytics in the context of business analytics, marking the evolution of traditional analytics alongside the rise of artificial intelligence [
2]. While the topic of business analytics (BA) is seen as interesting by practitioners and academics [
3], currently, there is a growing perspective that the 5.0 revolution is leading the industry by enabling AI to enhance the development of data analytics [
4,
5]. The rapid advancement and adoption of AI challenge firms to transition from Big Data and analytics to AI-driven solutions as they consider new transformative technologies [
6].
With the beginning of AI, the demand for business analytics (BA) is increasing exceptionally [
7,
8]. This increased interest in BA and prepared to enhance firms’ capabilities by integrating AI into business analytics (AI-BA) to gather, analyze, and utilize data to make informed decision-making. Yet, data-driven decision-making is now considered an essential competency that ultimately positions firms for sustained growth and innovation and plays a critical role in digital transformation and the development of analytics capabilities [
9].
One of the critical aspects of this transformation is linking business analytics (BA) with artificial intelligence, which represents a significant technological progression that empowers firms to analyze data effectively using these emerging technologies [
10,
11]. For example, although enterprises apply Customer Relationship Management (CRM) systems to inspect customer data for enhanced insights, Chatterjee et al. argue that an abundance of data may pose significant challenges [
12]. According to Gnizy, the integration of AI can effectively address these difficulties by providing enterprises with more trustworthy information rapidly, thereby facilitating the success of decision-makers [
13].
Zhao et al. examine how the combination of Big Data and artificial intelligence will fundamentally reshape the future of innovation and transformation across various sectors, particularly in businesses and academic institutions [
6]. A particularly remarkable aspect of business analytics is its strong connection to artificial intelligence, which enhances data processing, predictive capabilities, data visualization, statistical modeling, and enriching its effectiveness in enhancing decision-making capabilities and gaining deeper insights to make more informed decisions [
10,
11].
However, current studies primarily emphasize the opportunities and practical applications of artificial intelligence (AI) in business, particularly in data analytics [
4,
7,
14]. Despite this emphasis, a gap remains in addressing and exploring the role of integrated AI and data analytics in enhancing their ability to drive innovation. This gap persists despite technological advancements in data analytics and artificial intelligence, which enable firms to enhance their technological innovation initiatives [
15]. Furthermore, Zameer et al. highlighted that although technological innovation is a significant subject, examining the factors that facilitate technological innovation and the associated challenges is essential [
16].
In addition, Saleem et al. noted that while firms concentrate on their business operations due to intense competition, they must enhance their capabilities by utilizing big data for technological innovation [
17]. This approach enables them to develop innovative products utilizing their existing resources, including organizational culture and IT infrastructure. However, Saleem et al. argue that while current studies focus mainly on linking data analytics with firm performance, there is a lack of exploration into how the essential elements of data analytics are interconnected with technological innovation, particularly within the framework of data-driven decision-making [
17]. Also, Zamani et al. emphasize that AI-BA is an important topic that needs to be discovered for firms aiming to ensure business continuity [
18]. This suggests the need for a more comprehensive understanding of how new data analytics technologies, such as AI-BA, interact and influence technological innovation while addressing the main enablers within the data-driven decision-making framework.
However, as Business Analytics (BA) and integrated AI-BA are emerging fields that present significant opportunities to explore their benefits and impact to understand their advantages fully [
7,
10,
11,
18], this study applies the Dynamic Capability View (DCV) and Organizational Information Processing Theory (OIPT) to demonstrate how AI-BA and data-driven innovation can significantly enhance technological innovation. This exploration is critical, as existing studies have not examined how AI-BA improves data-driven and technological innovation. By addressing this gap, the study aims to show the transformative potential of integrating AI-BA.
Furthermore, this study broadens the discussion on AI-BA initiated by scholars such as Rana et al., Zamani et al., Davenport, Gómez-Caicedo et al., and Conboy et al. [
2,
7,
8,
10,
18]. It highlights that AI-BA influences data-driven innovation, a key element for technological innovation. Additionally, while 95% of analytics-driven innovation projects fail and technical difficulties are considered as one of the main causes [
19], and while the capabilities of IT improve strategic innovation capabilities, which boosts the performance of innovation [
20], the study highlights the crucial role of integration capabilities and digital platforms in enhancing the effectiveness of data-driven innovation initiatives by addressing two key research questions: (RQ1) Do integration capabilities mediate the relationship between AI-BA and data-driven innovation? (RQ2) Do digital platforms mediate this relation?.
However, this study represents a significant advancement as it is the first to examine the aforementioned variables within the context of Saudi Arabia. Saudi Arabia is a prominent member of the G20 and is currently undergoing intense digital transformation, driven by the ambitious Saudi Vision 2030 initiative launched in 2016. This initiative has resulted in substantial advancements in digital capability, as reflected in its impressive standing on global indices [
21].
Saudi Arabia presents an opportunity to advance integrated AI-BA, particularly within the framework of its national transformation agenda, Vision 2030. As a key initiative, the Kingdom introduced the National Strategy for Data and AI (NSDAI) in 2020, guided by the Saudi Data & AI Authority (SDAIA). This forward-thinking strategy aims to establish Saudi Arabia as a global leader in data-driven economies by recognizing data and artificial intelligence as crucial assets for economic diversification, while supporting 66 of the 96 objectives outlined in Vision 2030 [
22]. Also, the National Data Management Office (NDMO) has proactively introduced comprehensive standards that support governance relevant to both the public and private sectors. Furthermore, initiatives like the Saudi Open Data Portal demonstrate a strong commitment to enhancing transparency and fostering data sharing [
23]. Together, these efforts create a supportive environment for adopting integrated AI-BA, highlighting the significant role of national strategies, governance frameworks, and digital infrastructures in shaping and advancing organizational capabilities.
The current study is designed to address specific research objectives. The upcoming section presents the theoretical framework, which includes an in-depth literature review of two essential concepts: the dynamic capability view (DCV) and the organizational information processing theory (OIPT). Following this exploration, the proposed model is introduced, and the specific hypotheses derived from it are elaborated on. This model will highlight the critical elements of AI-BA and data-driven innovation, examining how these components can significantly impact technological innovation. Furthermore, the study investigates the roles of integration capabilities and digital platforms, treating them as essential mediating variables that may enhance the primary relationships discussed. The subsequent sections will provide a comprehensive outline of the research methodology, detailing the procedures for data collection and the analytical techniques employed throughout the study. They will then present the results of model testing, accompanied by a thorough discussion of the empirical findings resulting from the statistical analyses conducted. To conclude, the study will summarize its findings by presenting theoretical insights and practical implications drawn from the research. Additionally, the limitations encountered during the study and suggestions for future research are presented in this developing field.
3. Methods
This study employed a deductive approach, which guided the selection of a quantitative method for gathering data from the identified target population. Glymour et al. noted that a causal research design is instrumental in testing hypotheses and producing numerical outcomes to help validate the research questions [
86]. Additionally, this research was explanatory, aiming to provide a comprehensive understanding of theoretical concepts alongside empirical findings. This approach aims to establish necessarily actual knowledge, provided that all the parameters involved are well-defined and accurately measured [
27]. By taking this step, the study can enhance outcomes, increase clarity, and make a significant contribution to the existing body of knowledge.
3.1. Sampling and Data Collection
To achieve the objectives set forth in this study, the measurement scales were adapted from existing literature, and a comprehensive theoretical examination and an extensive literature review were conducted. All items were explicitly attached to firm-level practices in the context of integrated AI-BA and innovation capabilities. During the second phase of the project, an English-language survey was developed to be sent to the experts in the field. English was selected due to its widespread use in professional and academic environments in Saudi Arabia, which ensures respondents can effectively engage with the survey instrument, leading to more meaningful and accurate feedback.
To establish content and face validity, a small pre-test was conducted involving three professional respondents outside the main sample to gather valuable insights and ensure the validity of our approach. The experts in the field were tasked with evaluating the survey for clarity and accuracy, ensuring that survey items were clearly understood and interpreted consistently with their intended meaning. This clarity will help ensure accurate responses and valuable insights. Based on their insightful feedback, the necessary modifications were implemented to refine the wording of the instrument, ensuring that it effectively captures the intended data. By following these steps, a solid theoretical foundation has been established, and practical clarity for the instrument, as well as its validity in the context of Saudi business practices, has been ensured.
The data were collected within the Saudi Arabian context. In 2024, the country achieved notable recognition by securing second place in the ICT Development Index, highlighting its commitment to enhancing its technological infrastructure and innovation [
87].
The survey comprises several questions that contain categorical variables, including the industry sector, the number of employees in the organization, and the respondent’s position within the company. To evaluate respondents’ opinions effectively, the questionnaire employs a five-point Likert scale ranging from “strongly disagree” to “strongly agree.” This scale is particularly beneficial for expressing levels of agreement or disagreement with the presented statements [
88].
The data collection for this study was conducted among firms across various industries in Saudi Arabia, utilizing a purposive sampling approach. This method was chosen to effectively target respondents with specific expertise relevant to the research objective [
26]. The focus was on individuals knowledgeable about business analytics (BA), artificial intelligence (AI), digital and integration capabilities, and the potential for data-driven and technological innovation to enhance business value. Also, this sampling approach has proven effective in previous studies, including an AI-CRM study by Chaudhuri et al. [
26].
In addition, to ensure a rich and diverse dataset, respondents were recruited through established professional networks and industry associations, and data collection was conducted between October and January 2025. A survey link was shared with approximately 600 professionals, achieving a commendable response rate of 26%. This engagement attracted 230 participants from diverse firms and professions, yielding a robust sample size for hypothesis testing. By adhering to the guidelines set by Gefen et al. [
89], we can confidently evaluate the research model. The characteristics of the sample are detailed in
Table 1 below.
In addition, the dataset underwent a thorough quality control process to ensure its accuracy and completeness before analysis began. An analysis of the missing data revealed that all variables had zero missing values, as the survey was conducted online, eliminating the need for imputation. Furthermore, the skewness and kurtosis values for all items fell within the acceptable ranges—±2 for skewness and ±7 for kurtosis, which met the distribution diagnostics. As Hair et al. [
90] point out, this supports the assumption of approximate normality, which is essential for valid results. Moreover, all responses fell within the 1–5 Likert scale range, confirming that there were no outliers beyond this interval. However, the alignment of skewness, kurtosis, and observed ranges within these acceptable parameters positively suggests the absence of extreme univariate outliers in the dataset, reinforcing the reliability of our analysis.
To enhance data adequacy assessment, the Kaiser-Meyer-Olkin (KMO) measure has been used and shows that sampling adequacy yielded an impressive overall value exceeding 0.90, with all individual MSAs also scoring above 0.90. This suggests a strong foundation for conducting factor analysis [
90]. Moreover, the Principal Component Analysis (PCA) results indicated that the first four components had eigenvalues greater than 1, together explaining 67.5% of the variance, which reinforces the view that the dataset possesses a robust factor structure, providing a solid basis for further analysis [
90]. See
Table A1 and
Table A2 in
Appendix C.
3.2. Data Analysis
The Partial Least Squares Structural Equation Modeling (PLS-SEM) analysis technique is valuable for scholars. It enables them to gain detailed insights into variance and facilitates a thorough examination of both the measurement and structural models [
91]. This can effectively conduct hypothesis testing, enhancing the robustness and validity of their findings. Additionally, Hair et al. have argued that PLS-SEM is frequently recommended as a superior method to Covariance-Based Structural Equation Modelling (CB-SEM) in various research contexts when the objective is to improve prediction accuracy [
91].
However, PLS-SEM was utilized for model testing using Smart Partial Least Squares version 4.1.0.2. This multivariate statistical analysis technique focuses on predictive purposes and incorporates reflective measurement within the model, enabling a comprehensive understanding of the relationships between variables [
91]. Additionally, this approach is employed by several relevant studies, including those of Rana et al. and Chatterjee et al. [
7,
12].
3.3. Data Analysis
This study employed two data analysis approaches, as outlined in the methodology by [
91]. The first step involves developing a measurement model to assess validity and reliability. Following this, the structural model aims to explore the relationships and effects between the constructs of the model.
3.4. Measurement Model
To effectively develop the measurement model, the factor loadings and average variance extracted (AVE) values must exceed the threshold of 0.5. This indicates that a significant portion of the variation in the indicators is explained and demonstrates a strong relationship between the constructs [
91]. Additionally, the composite reliability must be greater than the recommended threshold of 0.7, reflecting the internal consistency of the measurement [
91].
Table 2 provides a detailed overview of the results obtained for convergent validity. Since all observed loadings, along with the AVE values (ranging from 0.665 to 0.770) and composite reliability values, exceeded these critical thresholds, it can be confidently asserted that convergent validity has been thoroughly established for this study.
Additionally, the discriminant validity test is a technique used to assess the effectiveness and precision of a measurement tool. To achieve this, it is essential to ensure that the underlying variables demonstrate significantly stronger correlations with their constructs than those of competing constructs [
92]. The loading factor results presented in
Table 2 exceed 0.5, indicating a strong association between the variable and its indicators. Moreover,
Table 3 demonstrates discriminant validity, as the loading factor for each indicator is higher than its cross-loading values with other variables. This further confirms the distinctiveness of the indicators. Consequently, these indicators can be considered valid and reliable for analysis [
92].
Moreover, the discriminant validity test is a technique used to evaluate the effectiveness and precision of a measurement tool. To achieve this, it is essential to ensure that the underlying variables demonstrate significantly stronger correlations with their constructs than those of competing constructs [
93]. The loading factor results presented in
Table 2 exceed 0.5, indicating a strong association between the variable and its indicators.
Additionally, the HTMT analysis reveals that the values fall within the liberal criterion of 0.90, which is considered an acceptable threshold [
94], as shown in
Table 3. Additionally, to enhance the credibility of the measurement model, the Fornell–Larcker criterion is incorporated as a dual approach, which strengthens the analysis and reinforces the overall reliability of our findings. As presented in
Table 4, the result demonstrates discriminant validity, as the loading factor for each indicator is higher than its cross-loading values with other variables. This further confirms the distinctiveness of the indicators. Consequently, these indicators can be considered valid and reliable for analysis [
92].
However, while the correlation between Digital Platforms and Integration Capabilities is relatively strong, it is essential to acknowledge that these concepts are theoretically different, as highlighted by prior research. A Digital Platform serves as the technological foundation that enables interactions among businesses and various stakeholders [
15,
54,
55]. In contrast, Integration Capabilities focus on an organization’s ability to improve overall performance through the enhancement of product value, which involves effective collaboration and engagement [
65]. This distinction is supported by HTMT confidence intervals, which remain below 1.00, affirming the validity of differentiating between these two constructs.
To assess the potential impact of common method bias (CMB), both procedural and statistical measures were completed. First, prioritized participant privacy by ensuring anonymity and confidentiality, which fosters a safe environment. Additionally, the survey was structured by organizing items into distinct sections to help alleviate any concerns about evaluation apprehension. On the statistical side, an analysis has been performed of full collinearity variance inflation factors (VIFs), all of which were below 5.0 as shown in
Table 5. This evidence confirms that our data is free from multicollinearity and common method bias, reinforcing the integrity of our findings [
95].
Nevertheless, the results provided above offer acceptance values that facilitate the evaluation of the research hypotheses through assessments within the structural model.
5. Discussion
This research shows that AI-BA significantly enhances the innovation performance of firms by leveraging both the Dynamic Capabilities View (DCV) and Organizational Information Processing Theory (OIPT). The findings indicate that OIPT plays a crucial role as a mechanism for implementing dynamic capabilities, empowering firms to more effectively sense, seize, and transform opportunities. This integration highlights the positive interplay between DCV and OIPT, providing valuable insights into how AI-BA can drive successful innovation outcomes. However, while this research aims to conduct a detailed empirical analysis of how AI-BA enhances firms’ innovation performance, it additionally explores the significance of data-driven innovation (DDI) in facilitating this enhancement, examining how these elements interact to drive innovative outcomes within firms.
To fulfill the study’s objective, the study thoroughly examined a comprehensive model that incorporates Artificial Intelligence-Business Analytics (AI-BA), Data-Driven Innovation (DDI), and technological innovation performance. This analysis also explored the mediating effects of integration capabilities and the role of digital platforms in enhancing the overall model’s effectiveness. Additionally, this investigation examines the role of DDI and the contributions of digital platforms and integration capabilities in facilitating this process. By leveraging these theories, it is possible to gain a deeper understanding of the complex interplay between technology and organizational innovation performance, enabling firms to thrive in a rapidly changing environment.
While AI-BA is recognized as a vital component for achieving business success, empowering firms to drive growth by advancing innovation and effectively navigating challenging crises [
10,
37,
42], this research has leveraged the concept of AI-BA to develop hypothesis H1, which was subsequently subjected to thorough verification.
The results confirm a correlation between AI-BA and data-driven innovation (H2), as supported by the research of Bahrami and Shokouhyar, Zamani et al., Akter et al., and Kumar et al. [
18,
45,
51,
53]. This finding reinforces the idea that integrating AI-BA can enhance innovation levels by facilitating the generation of new ideas, the development of products, and improving the efficiency of information processing within firms to help businesses remain competitive in a rapidly evolving market [
18,
45]. However, the improved analytical capabilities provide firms with insights into their operations and market dynamics. This empowered understanding allows firms to make informed, data-driven decisions that not only enhance their strategic planning but also significantly reinforce their competitive advantage in the industry [
51,
53].
The results also confirm a correlation between AI-BA and integration capabilities (H3), as supported by the research of Akter et al., Kumar et al., Saleem et al., Zamani et al., and Wadho and Chaudhry [
17,
18,
48,
51,
53]. Additionally, while integrating AI provides an opportunity to enhance innovation levels, as suggested by Zamani et al. [
18], it could be argued that integrating AI promotes innovation and plays a crucial role in enhancing integration capabilities. By leveraging AI alongside analytics, firms can enhance their integration capabilities and more accurately forecast supply and demand. This enables them to respond more effectively to market dynamics and better analyze comprehensive client data [
46,
47,
49].
Furthermore, the study confirms the effect of AI-BA on digital platforms (H4) by developing a complete platform that creates business value from the benefits of using new data analytics technologies, as discussed by Akter et al. study [
51], It could be argued that firms may be motivated to invest in a strong and reliable IT infrastructure, as pointed out by Saleem et al. [
17], to enable businesses to harness the full potential of integrating AI with data analytics technologies. This powerful combination allows them to process and analyze vast amounts of raw data, turning it into insightful and actionable decisions. These meaningful insights are crucial in guiding strategic decision-making and helping firms thrive in an increasingly competitive environment.
In addition, while integration capabilities and digital platform elements are regarded as essential resources [
4,
15,
54,
55,
57,
68], the study indicates that integration capabilities (H7) have a stronger positive association with DDI than the digital platform (H5). This suggests that firms with strong integration capabilities may achieve more effective DDI outcomes.
However, it is equally important to note that the digital platform serves as a more significant mediator in the relationship between AI-BA and DDI (H6) than integration capabilities do (H8). This observation underscores the crucial role of digital platforms in facilitating and enhancing data-driven innovation processes, particularly when utilizing AI-BA technologies. Additionally, it can be argued that digital platforms serve as comprehensive infrastructures that facilitate the integration of various data sources and enable seamless interaction among diverse stakeholders involved in the innovation process. They enhance an organization’s capability to leverage data analytics effectively, promoting more agile and informed decision-making.
Overall, it is crucial to acknowledge that integration capabilities and digital platforms are essential mediators and fundamental resources for driving successful data-driven innovation initiatives. This positioning of the mediation role is supported by the findings of various studies in the field, including those by Helfat & Raubitschek, Pietronudo et al., Akter et al., Chatterjee et al., Saleem et al., Wang et al., and Guan and Liu [
17,
51,
57,
63,
70,
71,
72]. The study confirms that firms aiming to thrive in an increasingly data-centric environment with AI-BA must harness the power of both digital platforms and integration capabilities to forward innovation and achieve sustainable competitive advantage.
Additionally, this research has empirically validated four hypotheses through statistical analysis. Firstly, it establishes that DDI has a significant influence on technological innovation performance (H9). Furthermore, the findings indicate that DDI positively mediates the relationships among AI-BA, digital platforms, and integration capabilities, enhancing their association with technological innovation performance (H10, H11, H12). This suggests that DDI is crucial in advancing innovation within these technological domains.
The findings suggest that DDI plays a more significant mediating role in the relationship between AI-BA and integration capabilities (H12). This suggests that DDI enhances integration capabilities by enabling firms to improve and leverage their data assets. However, this approach can lead to positive outcomes, allowing the firms to drive innovation, enhance their existing products, and effectively translate this data into actionable insights and novel innovations, as highlighted by Babu et al. and Dubey et al. [
75,
76].
7. Conclusions
Research has highlighted the association of AI-BA on data and technology innovation firms that attempt to enhance both their processes and products. The research has employed the Dynamic Capabilities View (DCV) and Organizational Information Processing Theory (OIPT) to explore how AI-BA helps firms navigate the complexities of innovation in today’s competitive environment and meet their unique needs for technological innovation.
This study fills an important gap by offering valuable insights into the broader implications of AI-BA applications and their association with technological and data-driven innovation. It highlights the significance of integration capabilities in enhancing data-driven innovation and ultimately driving a firm’s success in technological innovation performance. Additionally, the research examines the role of digital platforms in advancing data-driven innovation and enabling firms to achieve exceptional levels of technological innovation performance. Through this investigation, the study demonstrates the interconnectedness of AI-BA, integration capabilities, digital platforms, and DDI, providing a comprehensive perspective on how businesses can leverage these elements to sustain technological innovation.
However, like any other study, it is essential to acknowledge the various limitations of this research that may impact the interpretation of the findings and several opportunities for future research that could expand on these results. Initially, the study primarily used PLS-SEM to make predictions based on the collected data [
91], while future studies could employ alternative models, such as covariance-based SEM, for theory testing. This would provide deeper validation of the underlying theories related to the study.
Moreover, given the limited time available for data collection, the framework developed in this study was validated through a targeted survey that covered only firms operating within Saudi Arabia, with a sample size of 230. To enrich the model’s applicability and gain more comprehensive insights, future research should consider expanding and incorporating data from diverse geographic regions to provide a clearer understanding and enhance the overall validity of the findings. Additionally, employing probability-based sampling strategies can improve representativeness [
91].
Furthermore, future research could uncover several moderating factors that could impact AI-BA. For instance, it might explore how different environmental pressures, such as market competition and regulatory changes, may affect the implementation of AI-BA and influence overall technological innovation performance. Moreover, explore the algorithmic and governance dimensions and their impact on the implementation of AI-BA, including aspects such as data-sovereignty regulations, state-sponsored AI ethics frameworks, and sector-specific data-sharing mandates across Gulf economies and beyond. Furthermore, future research has the potential to enhance the model by examining additional factors, such as different industry sectors, firm size, or various contextual moderators. Also, future research could employ longitudinal or experimental designs to further enhance the understanding of causal relationships and provide stronger evidence of causal linkages. Finally, future research has a valuable opportunity to enhance measurement precision by incorporating multi-informant designs and multi-method approaches.