1. Introduction
The rapid development of artificial intelligence (AI) is profoundly transforming enterprises’ innovation paradigms and competitive advantages, becoming a key driver of global digital transformation. AI adoption improves operational efficiency and reshapes innovation processes in research and development, product design, process management, and market decision-making [
1,
2]. Studies indicate that establishing AI labs or embedding AI systems can enhance knowledge integration and organizational innovation performance [
3]. In the context of the digital economy, AI is considered a new-generation general-purpose technology, whose degree of internal integration is increasingly critical to the evolution of enterprise technologies and the formation of competitive advantages [
4].
Despite AI’s enabling potential, post-adoption innovation performance remains highly heterogeneous. Some firms achieve substantial breakthroughs, while others fall into a “technology investment trap”, where high expenditures fail to generate expected innovation returns [
5]. This has prompted those in both academic and industry circles to ask the following: Does AI adoption truly improve enterprise innovation efficiency? Under which governance mechanisms and external conditions can AI’s innovation value be realized?
The relationship between AI and enterprise innovation has emerged as a key focus in academic research. Drawing on dynamic capability theory and the resource-based view, some studies suggest that AI enhances innovation performance by improving knowledge absorption, resource allocation, and learning capacity [
6,
7]. Empirical evidence shows that AI can promote green innovation, improve patent quality, and optimize technology transformation paths [
8,
9]. However, three main limitations remain in the literature. First, most studies examine AI’s direct effects on innovation quantity or outcomes, neglecting innovation efficiency, a core indicator of the conversion of R&D inputs into outputs [
10,
11]. Second, boundary conditions influencing AI’s innovation effects are underexplored, particularly the synergistic roles of governance structures, managerial characteristics, and external oversight [
12,
13]. Third, empirical evidence largely draws from developed countries in Europe and North America, with limited exploration of the mechanisms underlying AI-driven innovation in emerging markets and the external validity of existing theories [
14].
This study addresses these gaps by investigating the impact of AI adoption on enterprise innovation efficiency using panel data from Chinese A-share listed companies from 2012 to 2023. It constructs a moderation framework from a three-dimensional governance perspective, examining the roles of institutional ownership, executives’ digital background (EDB), and media attention. Unlike traditional AI input measures, this study applies text mining to extract AI-related keyword frequencies from corporate annual reports, constructing a firm-level AI adoption index that captures the degree of AI integration and depth of technology application. In addition, this study adopts “innovation efficiency”—defined as ln(1 + number of patents)/ln(1 + R&D investment)—as the core dependent variable, providing a precise measure of AI’s transformation of R&D output.
China offers a highly relevant empirical setting for this research. As one of the world’s fastest-growing AI markets, China has issued strategic plans such as the “New Generation Artificial Intelligence Development Plan” and “Made in China 2025” to support large-scale AI applications in manufacturing, finance, and retail sectors. A significant digital divide exists among Chinese enterprises: some are at the forefront of application, while others remain in the exploratory phase [
15]. In addition, China’s capital market exhibits unique governance characteristics: institutional investors vary in structure and capacity, executives’ digital competence is unevenly distributed, and media oversight environments differ widely. These factors provide a rich empirical basis for analyzing how governance mechanisms moderate the relationship between AI adoption and innovation efficiency. Therefore, studying China helps us to understand the mechanisms of AI-driven innovation in emerging economies and tests the applicability and scalability of existing theories in diverse institutional contexts.
This study contributes to the literature in four key ways. First, it shifts the focus from AI’s impact on innovation “output volume” to its influence on “innovation efficiency”, enhancing the explanatory power of R&D transformation theories. Second, it develops a three-pronged governance framework—linking internal cognition, ownership structure, and external supervision—to uncover the multidimensional logic behind AI-enabled innovation. Third, by constructing an AI adoption index through text mining, it improves measurement precision and operationalizability, expanding methodological tools for studying digital transformation. Fourth, using China as a representative emerging market, it extends the external validity of research on AI and innovation efficiency and enriches cross-disciplinary discussions in digital governance, strategic decision-making, and enterprise innovation.
In summary, this study aims to clarify the enabling pathways and governance boundaries of AI in real-world enterprise innovation. It constructs a theoretical logic chain linking AI adoption to innovation efficiency, providing theoretical support and practical insights for promoting high-quality enterprise development and implementing digital strategies.
3. Methods
3.1. Research Samples and Data Sources
This study selected data on China’s A-share listed companies from 2012 to 2023 and processed it as follows. First, only companies listed before 2012 were retained. Second, samples classified as ST, *ST, or delisted during the period were excluded. Third, samples with missing key variables were removed. After processing, 19,637 observations remained. Data were sourced from the China Stock Market and Accounting Research (CSMAR) database, the CNIPA Patent Publication Database, the Wind database, and the China Research Data Service Platform (CNRDS). AI-related word frequency data were derived from textual analysis of enterprises’ annual reports. To mitigate the influence of extreme values, all continuous variables were winsorized at the 1% level at both tails. Data were processed using Stata 18.0 and Python 3.8.
3.2. Dependent Variable
China’s Patent Law divides patents into three categories: invention, utility model, and design. An invention is a new technical solution related to a product or method. A utility model pertains to improvements in a product’s shape or structure. A design pertains to the aesthetic appeal and industrial applicability of a product’s shape, pattern, or color.
Following Hirshleifer et al. (2013), patent output was measured using the year of application rather than the year of authorization to align with the timing of innovation and avoid biases caused by authorization delays [
10]. The specific procedure was as follows: the total number of patent applications in year
t was obtained by summing the three types of patents, denoted as Patent, serving as a measure of overall innovation output. Given the right-skewed distribution of patent counts, all patent-related variables were transformed using the natural logarithm of one plus the original value—LnPatent = ln(1 + Patent)—representing enterprise innovation output based on quantity expansion. Similarly, R&D expenditure was log-transformed as lnRD = ln(1 + RD) to indicate the level of R&D investment in patents.
Innovation efficiency (InnoEff) was calculated as the ratio of ln(1 + Patent filings) to ln(1 + R&D expenditure), reflecting R&D productivity. This measure captures the efficiency of converting R&D expenditures into patentable outputs while addressing diminishing returns on innovation.
3.3. Independent Variable
Following Yao et al. [
40], annual report text was used to assess the extent of AI adoption. AI-related terms were identified using a specialized dictionary and machine-counted in the annual reports of listed companies. The dictionary contained 73 AI-related terms, covering expressions such as “AI”, “machine learning”, “deep learning”, “neural networks”, “computer vision/image recognition”, “natural language processing/speech recognition”, “recommendation systems”, “data mining”, “big data”, “distributed computing”, “knowledge graph”, “RPA”, “AR/VR”, “generative AI”, “pre-training”, and “Transformer/large model”, along with synonyms and English abbreviations (e.g., ML, DL, NLP, RPA, LLM, and CNN) [
40]. The degree of AI adoption was measured as the natural logarithm of the number of AI-related keywords plus one: (ln(words)).
3.4. Moderator Variable
3.4.1. Shareholding Ratio of Institutional Investor Group
To extract a single institutional investor group from the institutional investor network, Crane et al. (2019) proposed a method based on whether two institutional investors jointly held a large number of shares in the same company [
41]. This approach enables the construction of an institutional investor network and the identification of institutional investor groups within it. Specifically, if two institutional investor companies (denoted by i and j, respectively) jointly held more than 5% of the total outstanding shares of at least one common company at the end of quarter t, an association was established (X
ij = 1); otherwise, no association was recorded (X
ij = 0). An adjacency matrix A linking pairs of institutional investors was then constructed. Using matrix A, the institutional investor network was built, and institutional investor groups were extracted. After group extraction, the shareholding ratio was calculated using Equation (1). For a given year
t, among institutions holding shares in company i,
was computed as
where
represents the proportion of shares of company
held by organization
in quarter
relative to the company’s outstanding shares, and 1
indicates a dummy variable equal to 1 if organization j belongs to a group member, and 0 otherwise.
3.4.2. Executives’ Digital Background
EDB influences digital decision-making. This study followed Yuan [
42] to construct a dummy variable for EDB based on professional information of directors and supervisors. Executives with academic majors in “information, intelligence, software, electronics, communications, systems, networks, automation, wireless, or computers” were defined as having a digital background. If any executive in a listed company had such a background, the indicator was assigned a value of 1; otherwise, it was 0 [
42].
3.4.3. Media Supervision
Following Li et al. (2022), media supervision was measured using the number of positive, negative, and neutral reports from the CNRDS financial database and the Janis–Fadner coefficient (J-F), as shown in Equation (2) [
36]:
where e is the number of positive media reports, c is the number of negative media reports, and t is the sum of positive and negative reports. The J-F coefficient ranges from −1 to 1. The closer the coefficient is to 1, the more positive reports there are and the less media supervision pressure enterprises face. Conversely, if negative reports dominate, the coefficient approaches −1, indicating greater pressure from media supervision.
3.5. Control Variable
To account for factors that might affect enterprise innovation efficiency, this study included several control variables identified in recent research [
11,
43]. These were enterprise size (Size), asset–liability ratio (Lev), return on assets (ROA), largest shareholder’s shareholding ratio (Top1), operating income growth rate (Growth), enterprise age (Age), board size (Board), independent director ratio (Indep), total asset turnover (ATO) [
44], and inventory ratio (INV) [
45]. Industry (Ind) and year (Year) dummy variables were also included. If a company belonged to the specified industry or year, the variable was set to 1; otherwise, it was set to 0.
Table 1 is the definition of all variables.
Table 2 presents the descriptive statistics of the study.
3.6. Model Design
To empirically test the proposed hypotheses, this study employed a two-way fixed-effects panel regression framework accounting for industry and year effects. Independent variables, control variables, and interaction terms were gradually introduced across Models (1) through (4) to examine baseline and moderating effects.
3.6.1. Benchmark Model
Model (1) tests Hypotheses 1 and 2, where i represents the enterprise and t represents the year.
represents the degree of AI adoption and is the core explanatory variable. Controls includes the control variables: enterprise size (Size), asset-liability ratio (Lev), return on assets (ROA), the largest shareholder’s shareholding ratio (Top1), board size (Board), independent director ratio (Indep
is the regression coefficient, ε
denotes the constant term. To address potential endogeneity and unobserved heterogeneity, a two-way fixed-effects panel model with industry and year fixed effects was used. Firm-level fixed effects were not included because moderator variables such as executives’ digital background (EDB) and institutional ownership exhibit little within-firm variation over time. Including firm fixed effects would absorb these time-invariant or slow-moving variables, making it difficult to identify their moderating roles.
3.6.2. Moderating Effect Model
Models (4)–(6) examine the boundary conditions of AI adoption and test Hypotheses 2–4. The following regression models were developed based on the benchmark model:
where
is the moderator variable for institutional ownership in Model (4),
is the moderator variable for EDB in Model (5), and
is the moderator variable for media attention in Model (6). If the regression coefficients of the core explanatory variable
and its interaction term with a moderator are both significantly positive, the corresponding moderator strengthens the effect of AI on enterprise innovation efficiency. Specifically, institutional ownership, the EDB, and media attention are expected to enhance the positive impact of AI adoption on innovation performance.
4. Results
4.1. Descriptive Statistics
Table 2 presents the descriptive statistics of the main variables. Overall, the skewness and kurtosis of each variable satisfy the requirements for a normal distribution, indicating a reasonable data distribution. The mean of enterprise innovation efficiency (InnoEff) is 0.039, with a standard deviation (SD) of 0.084, a minimum of 0, a maximum of 0.303, and a median of 0.000. This indicates substantial variation in innovation efficiency among the sample enterprises. Most enterprises exhibit low innovation efficiency, while only a few demonstrate high innovation capability, consistent with the pronounced stratification observed in the innovation capabilities of Chinese enterprises. The mean level of AI adoption is 1.121, with an SD of 1.328 and a median of 0.693, indicating substantial variation across enterprises. While some enterprises have achieved a high degree of digitalization, many remain in the early stages of AI adoption—a pattern that is consistent with recent scholarly findings on the “polarization phenomenon” in the digital transformation of China’s manufacturing sector [
15]. The mean value of institutional ownership (Inst) is 0.401, with an SD of 0.259, indicating that institutional investors generally hold a relatively high stake in the sample enterprises, although there are substantial differences across firms, reflecting varying levels of market attention to corporate governance. The mean of EDB is 0.247, with an SD of 0.431, suggesting that approximately one-quarter of executives in the sample have a digital background. This indicates that Chinese enterprises have room to improve top-level digital capabilities and that digital leadership varies significantly across firms. The mean value of media attention (Media) is 0.169, with an SD of 0.209 and a median of 0.167, indicating that most enterprises in the sample receive relatively low media coverage, and disparities in public opinion and public supervision across firms are evident.
4.2. Correlation Analysis
As shown in
Table 3, Pearson’s correlation coefficient was used to examine the correlations among the main variables. The correlation between enterprise innovation efficiency (InnoEff) and the extent of AI adoption is 0.063, significant at the 1% level, indicating that AI adoption modestly promotes enterprise innovation efficiency. This supports Hypothesis 1. All correlation coefficients among the variables are below 0.6, and the variance inflation factor (VIF) values are below 3, indicating no serious multicollinearity in the model.
4.3. Benchmark Regression
As shown in
Table 4, this study constructed two regression models to explore the influence of enterprise AI adoption on innovation efficiency: one without control variables and one including all control variables. This approach verified the robustness of the effect of AI adoption under different model specifications. The first column presents the regression results excluding the control variables. The coefficient of the core explanatory variable, AI, with respect to the dependent variable, InnoEff, is 0.006 and significant at the 1% level. This indicates that a one-unit increase in ln(1 + AI keyword frequency) is associated with a 0.006 increase in the innovation efficiency index, holding other factors constant. The second column shows the regression results obtained after adding control variables. The effect of AI on InnoEff remains positive and statistically significant, with a coefficient of 0.005 at the 1% significance level. These findings suggest that the extent of enterprise AI adoption promotes improvements in innovation efficiency. Overall, the empirical results indicate that AI adoption significantly enhances enterprise innovation efficiency, supporting the conclusions of Li et al. [
46].
4.4. Analysis of Moderating Effect
A Hausman test was conducted before the regression analysis to ensure the accuracy of the regression results. The test indicated that the fixed-effects model was more appropriate. Therefore, the subsequent regression analysis employed a two-way fixed-effects model that included both industry and year fixed effects.
As shown in
Table 5, this study introduced three moderators—institutional ownership (Inst), EDB, and media attention (Media)—to examine their moderating roles in the relationship between AI adoption and enterprise innovation efficiency. In Column 1, the coefficient of AI is 0.005 and significant at the 1% level. In Column 2, the coefficient of AI × Inst is 0.008, also significant at the 1% level, indicating that institutional ownership positively moderates the relationship between AI adoption and innovation efficiency. In other words, institutional investor participation strengthens enterprises’ innovation orientation and risk identification capabilities in AI adoption, thereby enhancing innovation efficiency. Thus, Hypothesis H2 is supported.
In Column 3, the coefficient of EDB is 0.006, significant at the 1% level. The interaction term AI × EDB in Column 4 is 0.002, significant at the 5% level, indicating that executives’ digital backgrounds enhance the effect of AI adoption on enterprise innovation efficiency. Executives with digital cognition and technical capabilities can better identify the potential value of AI-enabled innovation and improve innovation efficiency through resource integration and strategic guidance, confirming Hypothesis H3.
In Column 5, the coefficient of media attention (Media) is 0.022, significant at the 1% level. The interaction term AI×Media in Column 6 is 0.006, also significant at the 1% level, indicating that media attention positively moderates the relationship between AI adoption and innovation efficiency. External public opinion supervision and public exposure mechanisms improve transparency and social recognition of enterprises’ AI adoption, thereby promoting innovation efficiency, supporting Hypothesis H4.
In summary, institutional investor oversight, executives’ digital literacy, and the media’s public opinion environment significantly enhance the positive effect of AI adoption on enterprise innovation efficiency, demonstrating that external governance mechanisms and top management characteristics play important roles in promoting AI-enabled innovation.
Figure 2,
Figure 3 and
Figure 4 present marginal effect plots of the interaction between AI adoption and each moderator.
Figure 2 shows that firms with higher institutional ownership exhibit a steeper positive slope, indicating that institutional investors enhance AI adoption’s effectiveness in improving innovation efficiency.
Figure 3 shows that when EDB = 1, the marginal effect of AI on innovation is significantly stronger, suggesting that digital-savvy executives can better leverage AI to drive innovation outcomes.
Figure 4 highlights that higher levels of media attention amplify the positive association between AI and innovation efficiency, consistent with the reputational pressure and signal-amplification mechanisms. These visualizations corroborate the regression results in
Table 5 and provide intuitive evidence of the conditions under which AI adoption more effectively fosters innovation.
4.5. Robustness Test
To verify the robustness of the research results, this study examined the following aspects:
- (1)
Replacement of the dependent variable. Initially, innovation efficiency was measured as the number of patent applications per unit of R&D investment. To address potential limitations of a single metric, the number of patent applications was replaced with a composite index, calculated as the total number of invention, utility, and design patent applications, weighted in a 3:2:1 ratio, plus the natural logarithm of 1. Innovation efficiency was then recalculated using this composite index.
- (2)
Change in the regression model. The innovation efficiency variable contains many zeros and exhibits truncated data characteristics. Therefore, a Tobit model was employed to further examine the effect of enterprise AI adoption on innovation efficiency.
- (3)
Exclusion of specific years. To account for the heterogeneous effects of the COVID-19 pandemic on enterprise production, operations, and innovation investment, samples from 2020 and 2021 were excluded, and the regression analysis was repeated.
- (4)
Alternative measurement of AI adoption. A machine learning-based variable, implemented, was constructed to capture the number of AI-related sentences classified as “actually implemented” or “in practical use” in annual reports. The bert-base-chinese model was fine-tuned using 5000 manually annotated sentences to distinguish substantive AI applications from symbolic or promotional mentions. The binary classifier was trained with weighted cross-entropy loss, and hyperparameters were optimized on a validation set using grid search. The final model was selected based on the F1 score for implementation-type sentences. The constructed variable counts sentences with predicted label = 1, capturing the semantic depth of AI application. This approach provides a more nuanced proxy for AI adoption than keyword frequency and mitigates concerns of symbolic disclosure bias.
Table 6 presents the robustness test results. Across all four tests, the regression coefficients for enterprise AI adoption were significantly positive, indicating that higher AI adoption improves innovation efficiency. These results are consistent with the baseline regression, supporting this study’s conclusions.
4.6. Endogeneity Test
As shown in
Table 7, to address potential endogeneity, this study employed an instrumental variable approach using the first and second lagged periods of enterprise AI adoption as instruments. As lagged versions of current AI adoption, these variables are closely correlated with the present level of AI adoption and are exogenous, satisfying the key requirements for valid instruments. The “underidentification” test, based on the Kleibergen–Paap rk LM statistic, yielded a
p-value less than 0.05, refuting the null hypothesis and indicating that the instruments were sufficiently identified. The weak identification test showed that the Kleibergen–Paap rk Wald F statistic (16.38) exceeded the 10% critical value from the Stock–Yogo test, allowing rejection of the null hypothesis of weak instruments and suggesting no evidence of weak identification. The Hansen J test yielded a
p-value greater than 0.1, indicating no over-identification problem. These results confirm that the instrumental variables used in this study are valid.
The regression results of the second stage show that, after controlling for the endogeneity problem, the effect of enterprise AI adoption (the core explanatory variable) on innovation efficiency (the dependent variable) remains positive and significant at the 5% level. This indicates that the conclusions of the baseline empirical analysis are robust.
4.7. Heterogeneity Analysis
To examine whether the effect of enterprise AI adoption on innovation efficiency varies across different types of property rights, the sample was divided into state-owned enterprises and non-state-owned enterprises.
The regression results in
Table 8 indicate that, for state-owned enterprises, AI adoption remains positively correlated with innovation efficiency, but the effect is only significant at the 10% level, with a coefficient of 0.003. For non-state-owned enterprises, the coefficient is 0.006 and significant at the 1% level. Both the significance levels and coefficient magnitudes suggest heterogeneous effects of AI adoption across enterprise types. Fisher’s combined
p-value test further confirmed the difference between the two groups, significant at the 10% level. These findings suggest that non-state-owned enterprises experience a stronger positive effect of enterprise AI adoption on innovation efficiency compared with state-owned enterprises.
5. Discussion and Conclusions
5.1. Discussion
Existing research generally finds that AI adoption positively affects enterprise innovation efficiency, although the mechanisms of action and boundary conditions remain controversial. Early research focused on the direct effects of AI on knowledge acquisition, process optimization, and product innovation [
2,
39], emphasizing that machine learning and data analysis can enhance innovation efficiency. However, subsequent studies show that this positive relationship is not universal, with some enterprises experiencing “high input and low output” from AI investments [
5].
Empirical evidence further shows that the innovation impact of AI adoption is constrained by internal governance, the external environment, and leader characteristics [
6,
47]. In particular, when institutional frameworks are imperfect or managerial awareness is insufficient, AI often fails to translate into innovative outcomes [
4].
Three main shortcomings remain in prior research. First, the perspective is narrow: most studies examine AI’s impact on innovation solely from technical or R&D perspectives, neglecting the role of governance factors such as equity structure, managerial characteristics, and external supervision [
12,
13]. Second, there is limited systematic discussion of the mechanisms through which AI affects innovation. Although existing studies verify that AI can improve innovation efficiency, they rarely analyze mediating and moderating mechanisms or the conditions under which AI exerts its influence [
21]. Third, empirical samples and methodologies are limited. Most research relies on European, U.S., or high-tech industry samples [
14], with limited focus on large samples of listed companies in emerging markets, and it often overlooks endogeneity and heterogeneity issues [
48].
This study addressed these gaps in three ways. First, starting with the main line, “AI adoption—innovation efficiency,” it integrates enterprise governance (institutional ownership), the upper echelons (EDB), and external governance (media attention) into a three-dimensional moderation framework, forming a “dual internal and external mechanism”. This multilevel analysis goes beyond previous research conducted from a single technical or organizational perspective, revealing the complex governance logic of AI-driven innovation. Second, unlike prior studies that relied on cross-sectional data, this study employs a two-way fixed-effects model and an instrumental variable approach to address potential endogeneity, using panel data from A-share listed companies between 2012 and 2023 [
11]. Robustness and heterogeneity tests further confirm the reliability of the results, addressing sample selection bias and estimation robustness identified in earlier literature [
24]. Third, within the context of China’s digital transformation, this study reveals the unique mechanisms of AI-enabled innovation in emerging market institutions. Specifically, institutional investors enhance innovation returns from AI investments through governance effects, EDBs increase enterprise AI adoption [
29], and media attention promotes innovation transformation via reputational pressure. These findings extend the applicability of research on AI and innovation efficiency and enrich interdisciplinary theories on digital governance and enterprise innovation performance.
5.2. Conclusions
Amid the accelerating wave of global digitization and intelligence, enterprises face a more complex innovation environment and greater technological transformation challenges. As a key driver of industrial upgrading and enterprise innovation, AI is becoming an important resource for gaining a competitive advantage and achieving high-quality development. AI adoption has reshaped enterprise operating models and profoundly influenced innovation productivity, resource allocation efficiency, and strategic decision-making. Based on a sample of Chinese A-share listed companies, this study systematically explored the impact of AI adoption on enterprise innovation efficiency, examining moderating mechanisms from the perspectives of institutional ownership, EDB, and media attention. The main conclusions are summarized below.
AI adoption significantly promotes enterprise innovation efficiency. Empirical results show that higher levels of AI adoption enhance innovation capability and technological transformation efficiency. AI improves R&D efficiency and innovation output through data analysis and predictive capabilities [
49,
50,
51], highlighting its role in achieving technological breakthroughs and sustaining continuous innovation.
External governance mechanisms strengthen the effect of AI on innovation. Institutional ownership significantly and positively moderates the relationship between AI and innovation efficiency. By leveraging their information advantage and governance oversight, institutional investors promote the transparency and scientific rigor of AI project investment decisions and reinforce the normative and performance-oriented application of technology. This finding suggests that effective capital market supervision can amplify the economic and social benefits of AI-driven innovation.
Management characteristics and the external public opinion environment play significant roles in promoting the effectiveness of AI innovation. EDB significantly enhances the positive impact of AI on innovation efficiency, indicating that executives with technical capabilities enable AI to improve financial stability and innovation decision-making [
2,
9] and guide the integration of AI with innovation strategies. Similarly, media visibility in AI strategic decisions strengthens external supervision, indirectly promotes innovation investment, and increases enterprise transparency and social responsibility, further improving innovation performance.
In conclusion, AI adoption not only directly improves enterprise innovation efficiency but also generates synergistic effects through external governance, executive capabilities, and social supervision, enhancing the systematization and sustainability of AI-enabled innovation. To maximize these benefits, enterprises should strengthen governance structures, enhance the digital capabilities of management teams, and consider external public opinion supervision to achieve technology-driven, long-term innovation and growth in uncertain environments.
5.3. Revelations
This study has significant theoretical and practical limitations.
From a theoretical perspective, starting from the micro-level of enterprises, this study reveals the positive effect of AI adoption on innovation efficiency and systematically examines the moderating roles of institutional investors, EDB, and media attention, expanding the theoretical boundaries of existing research. The results show that AI functions not only as a technical tool but also as a strategic resource. Its impact on enterprise innovation capability is influenced by the interplay of governance structures and external supervision. This finding enriches interdisciplinary research at the intersection of artificial intelligence, enterprise governance, and innovation performance, providing a new analytical perspective and systematic interpretive framework for innovation theory in the digital economy.
From a practical perspective, enterprises should first define the strategic positioning of AI within their innovation systems, integrating AI into key areas such as R&D, production, management, and market decision-making, and establishing data-driven, intelligence-enabled innovation mechanisms. They should leverage institutional investors’ supervisory and incentive roles to promote rational AI investment allocation and scientific project evaluation through capital governance. Enterprises should also enhance the digital capabilities of executives by recruiting management talent with technical expertise and data analysis skills, thereby improving the top management team’s strategic understanding and execution of AI applications. Furthermore, enterprises should proactively engage with the media, increase transparency in information disclosure, and strengthen social responsibility. They should leverage external reputation mechanisms to boost social recognition and the long-term value of AI innovation.
At the policy level, the government should continue improving AI industry policies; promoting technological R&D, data openness, and collaborative industrial innovation; and creating an institutional environment conducive to AI adoption. Simultaneously, the capital market should be standardized, and institutional investors should be guided to fulfill long-term supervision responsibilities. AI-driven innovative enterprises must be supported in their growth. Senior executives’ digital capabilities should be developed through collaboration between government, industry, academia, and research institutions, with a multi-level digital education and vocational training system to strengthen enterprise digital governance capabilities. Finally, media supervision and information disclosure systems should be improved, and the active role of social supervision in promoting enterprise innovation transparency and ethical compliance should be encouraged, thereby building a high-quality innovation ecosystem based on the trinity of “technological innovation, governance optimization, and social consensus.”
5.4. Limitations and Future Research Directions
This study empirically analyzed a sample of Chinese A-share listed companies from 2012 to 2023. Although the sample is representative, it may not fully reflect conditions in other countries or regions. Future research could be expanded to include different economies, industries, and enterprise types, particularly small and medium-sized enterprises and emerging sectors, to test the universality and robustness of these findings. Broadening the sample and comparative dimensions will enhance the representativeness and international applicability of the results.
This study measures innovation efficiency using the ratio of ln(1 + patents) to ln(1 + R&D), a widely used and tractable indicator for large panel data [
11,
40]. However, unlike frontier methods such as DEA or SFA, this measure cannot accommodate multiple inputs and outputs or benchmark against best-practice firms. Given the focus on AI’s effect and the inclusion of moderator variables, DEA and SFA were not applied in the main analysis. Future research could employ these methods to further validate the findings.
Using lagged values of AI adoption as instruments is a widely accepted practice, but their validity depends on the strict exogeneity assumption—that is, lagged variables must be uncorrelated with the error term in the innovation efficiency equation. However, if unobserved factors are serially correlated (e.g., persistent strategic orientation, managerial preferences, or omitted variables), this exclusion restriction may be violated. We therefore acknowledge that this approach may not fully address all endogeneity concerns. Future research could explore alternative instruments—such as AI-related government subsidies, regional AI infrastructure rollout, or exogenous AI policy shocks—to strengthen causal identification.
Finally, this study does not examine potential external environmental influences on the relationship between AI adoption and enterprise innovation efficiency. For example, policy support, industry competition patterns, and regional digital infrastructure may moderate AI-enabled innovation. Future research should consider external variables such as the macro-policy environment, industry characteristics, and economic development stage to refine the research framework and reveal the multi-level mechanisms of AI-driven innovation.