1. Introduction
As the global economy develops rapidly, the importance of developing countries in the global economy is becoming increasingly prominent. However, this development has been accompanied by increasingly serious environmental pollution, resource depletion, and other issues, posing huge challenges to sustainable development [
1]. In this context, green innovation has become one of the key strategies for developing countries to achieve sustainable development. Developing countries face unique challenges and opportunities in achieving green innovation. On the one hand, developing countries often face more severe resource constraints and more prominent environmental pollution issues, making it more necessary for them to address issues such as resource consumption and environmental pollution through green innovation. On the other hand, developing countries often have lower innovation capabilities and technological levels and need to rely on the introduction and absorption of advanced foreign technologies to promote green innovation.
Enterprises, as an important force in economic and social development, play a crucial role. In developing countries, enterprise in green innovation can not only help reduce costs and improve efficiency but also promote environmental protection and sustainable development. Therefore, studying the performance and influencing factors of enterprises in green innovation in developing countries is of great theoretical and practical significance. China, as one of the world’s largest developing countries, has attracted much attention for its performance in green innovation. Chinese enterprises have made significant progress in the field of green innovation in recent years, with some enterprises becoming leaders in global green innovation. However, at the same time, Chinese enterprises still face many challenges in green innovation, such as insufficient technological innovation capabilities and the need to improve management levels. Therefore, studying the experience and lessons of Chinese enterprises in green innovation can help other developing country enterprises learn from their experiences, promote green innovation, and advance the process of global sustainable development.
As decision-makers and drivers of corporate green innovation strategies, executives have a direct impact on behaviors related to corporate green innovation output, innovation quality, and innovation efficiency. According to the executive hierarchy theory, executives’ experiences, values, and personalities influence organizational innovation outcomes, including strategic choices, performance levels, and innovation levels [
1,
2,
3]. As the helmsmen of corporate executive departments, CEOs represent vital intellectual capital driving enterprise development. This paper aims to explore the relationship between CEOs’ financial industry backgrounds and corporate green innovation. Despite the increasing number of CEOs with experience in financial institutions or holding significant financial positions, the impact of CEOs’ financial backgrounds on corporate green innovation remains uncertain [
4,
5]. On one hand, CEOs’ financial backgrounds facilitate enterprises in obtaining more financial loans, alleviating their financing constraints [
6]. Moreover, they can improve the operating conditions of enterprises by lowering financing costs and optimizing their cash holdings [
3,
7,
8,
9]. From this perspective, CEOs’ financial backgrounds can provide a stable internal environment for the innovation behavior of enterprises, thereby contributing to corporate green innovation. On the other hand, based on imprinting theory, CEOs with backgrounds in finance may transfer their experiences and professional judgments from the financial industry to the corporate management process due to the imprint of the financial industry [
10,
11,
12,
13]. CEOs may prioritize short-term financial performance to secure higher rewards, exacerbating internal agency problems within the enterprise. Additionally, given their experiences in capital market environments, financial professionals may be influenced by speculative thinking patterns, leading to a preference for speculative behavior. This inclination could potentially increase the financialization of enterprises, resulting in crowding-out effects on corporate green innovation [
14,
15,
16].
Based on the analysis above, it is evident that the impact of CEOs’ financial backgrounds on corporate green innovation behavior is uncertain. Further clarification of the relationship between the two is necessary. Examining how CEOs’ industry backgrounds influence the level of corporate green innovation from a micro perspective holds significant practical value and theoretical significance in fully mobilizing corporate green innovation vitality and advancing the implementation of national innovation strategies. In light of this, this paper integrates the “CEO financial background—corporate green innovation” into a unified analytical framework, employing imprinting theory to study the impact of CEOs’ financial backgrounds on corporate green innovation. Recognizing that the relationship between CEOs’ financial backgrounds and corporate green innovation may be influenced by the different lifecycles of enterprises, this paper further embeds lifecycle considerations into the research framework, examining how CEOs’ financial backgrounds influence corporate green innovation. The research findings indicate that, firstly, CEOs’ financial backgrounds exert a significant inhibitory effect on corporate green innovation, demonstrating a “negative” impact on corporate green innovation. This conclusion remains robust after conducting multiple sensitivity analyses such as changing core variables, sample sizes, and endogeneity tests. Secondly, based on lifecycle analysis, it is observed that compared to enterprises in the growth and decline stages, CEOs’ financial backgrounds have a stronger “negative” impact on innovation in mature-stage enterprises, particularly exhibiting a more pronounced inhibitory effect on invention patents. Thirdly, this study conducts further heterogeneous analysis based on a lifecycle perspective, revealing that, overall, CEOs with financial backgrounds exert a stronger inhibitory effect on corporate green innovation in non-state-owned enterprises and high-tech companies.
The potential contributions of this paper may be as follows: firstly, it integrates “CEO financial background—corporate green innovation” into a unified analytical framework, combining imprinting theory to explore the impact of CEOs’ financial backgrounds on corporate green innovation. This is validated through empirical analysis. Secondly, it highlights that the influence of CEOs’ financial backgrounds on corporate green innovation should not be indiscriminately applied across all lifecycles. This paper focuses on the lifecycle perspective to investigate the relationship between the two and further explores the decomposition of patent types for a deeper understanding. Thirdly, building upon the lifecycle perspective, this paper conducts heterogeneous analysis to elucidate the differential impact of CEOs’ financial backgrounds on corporate green innovation across enterprises with different ownership structures and technological attributes. By examining how CEOs’ financial backgrounds influence corporate green innovation at various lifecycle stages within different types of enterprises, this research aims to provide theoretical foundations for devising differentiated corporate green innovation strategies more effectively.
4. Empirical Design
4.1. Sample Selection and Data Sources
Considering that A-share listed companies have a high market position and representativeness and have high financial transparency, this paper selects A-share listed companies from 2011 to 2021 as the initial research sample. The data are sourced from the China Stock Market & Accounting Research Database (CSMAR), and the data are processed as follows: first, considering that financial and real estate listed companies in China have a large amount of liquid capital, which may exaggerate the conclusions, this paper excludes financial and real estate listed companies; second, it excludes risk-warning companies (ST) and companies at risk of delisting (*ST); third, it excludes samples with serious data missing issues in constructing other control variables, such as the cash flow ratio; fourth, to reduce the impact of outliers, this paper truncates all micro-level continuous variables at 1% and 99%, resulting in a final sample of 25,171 data points.
4.2. Variable Definitions
4.2.1. Dependent Variable
Innovation Output (Innovation). According to OECD, unlike measures such as the proportion of new product sales revenue, the costs incurred by firms for patent applications have a discerning effect on the green innovation output of firms [
58]. Additionally, the number of patent applications is considered more reflective of the firm’s actual innovation level compared to the number of patents granted [
59]. Therefore, this paper uses the number of patent applications related to ecological innovation in enterprise patents as a proxy variable for innovation output. In the robustness analysis section, it further uses R&D investment to measure the intensity of enterprises’ green innovation inputs, with data sourced from CSMAR.
4.2.2. Core Explanatory Variables
The core explanatory variable is a dummy variable for the CEO’s financial background. It takes a value of 1 when the CEO has worked in regulatory agencies, policy banks, commercial banks, insurance companies, securities companies, fund management companies, securities registration and settlement companies, futures companies, investment banks, trust companies, investment management companies, stock exchanges, and other financial institutions; otherwise, it takes a value of 0. This variable is denoted as “FC” in this paper.
4.2.3. Control Variables
To avoid the influence of other factors, this paper further references existing studies that control for other variables that may affect corporate green innovation, specifically as follows [
33,
60,
61,
62,
63]: enterprise size (Size), debt-to-asset ratio (Lev), return on assets (ROA), cash flow ratio (Cashflow), enterprise growth (Growth), Tobin’s Q (TobinQ), company age (FirmAge), ownership concentration (Top1), state ownership (SOE), CEO–chairman duality (Dual), and proportion of independent directors (Indep) [
64]. In addition, this study also controls for industry (Industry) and year (Year) fixed effects. The main variable definitions are presented in
Table 1.
4.2.4. Lifecycle Variable
Past studies have employed various methods to classify the lifecycle of firms, including univariate analysis, comprehensive financial indicator methods, and cash flow pattern methods [
65]. This study, following Chen’s research, adopts the cash flow pattern method to classify listed companies based on various economic characteristics of operating, investing, and financing net cash flows, dividing them into three distinct lifecycle stages: growth period, mature period, and decline period. This classification method may be more scientific and practically meaningful [
66]. The specific classification method is outlined in
Table 2.
4.3. Descriptive Statistics
Table 3 presents the descriptive statistics of the study variables. It can be observed that during the sample period, the mean and standard deviation of corporate patent applications (Innovation) are 1.785 and 1.637, respectively. The relatively large standard deviation indicates significant variation in innovation output among different firms. The range between the minimum and maximum values is 9.611, indicating substantial differences in innovation output across the sample period. Among them, 3444 samples have a patent count of 0. The descriptive statistics of the CEO’s financial background (FC) reveal a mean of 0.051, indicating that approximately 5.1% of CEOs in the sample have a financial background. This suggests that the majority of CEOs in the sample do not possess a financial background. The distribution of other control variables is consistent with those in the previous literature.
4.4. Model Settings
To estimate the effect of the CEO’s financial background on corporate green innovation, this study adopts a similar econometric model as Quan et al. [
67].
In Model (1), the subscript denotes the firm, and represents the year. represents the total number of patents of listed firm in year , denotes the CEO’s financial background characteristic variable of listed firm in year , and is a series of control variables that may affect corporate green innovation. To control for industry-level common exogenous shocks, this paper controls for industry fixed effects (Industry) and further controls for time fixed effects (Year) and provincial fixed effects to eliminate macro exogenous shocks that vary over time. represents the error term. In model (1), the sign and significance of are the key focus of this paper. If is less than 0, it indicates that CEOs with a financial background have a negative impact on corporate green innovation. Conversely, if is greater than 0, it suggests a positive impact.
6. Research Conclusions and Policy Recommendations
Studying the influencing factors of corporate green innovation is of great theoretical value and practical significance for promoting corporate green innovation and accelerating the implementation of national innovation strategies. Based on this, this paper takes A-share listed companies in China from 2011 to 2021 as the research objects and investigates the impact of the CEO’s financial background on corporate green innovation from the perspective of the corporate lifecycle. This study finds that, first, the CEO’s financial background has a limited inhibitory effect on corporate green innovation, exerting a “negative” impact on it. This conclusion remains valid after multiple robustness analyses such as changing core variables, sample sizes, estimation methods, and endogeneity tests. Second, based on the lifecycle, compared with companies in the growth and decline stages, companies in the maturity stage are more negatively influenced by the CEO’s financial background on innovation, especially in terms of invention patents. This may be because invention patents require more financial support and have longer research and development cycles, making them more prone to significant innovation risks. Third, further heterogeneity analysis based on the lifecycle reveals that, overall, CEOs with financial backgrounds in non-state-owned enterprises and high-tech enterprises have a stronger inhibitory effect on corporate green innovation, especially in the maturity stage. This may be because high-tech enterprises typically emphasize innovation, risk-taking, and rapid decision-making, while the financial industry focuses more on stability, compliance, and risk avoidance.
Based on the above research conclusions, this study offers the following policy implications: firstly, the imprinting mechanism makes CEOs with financial backgrounds susceptible to the influence of past experiences when making innovative strategic decisions. Therefore, corporate executives should adopt a more cautious and objective approach towards their past professional experiences to avoid any adverse effects on innovation strategy decision-making. Secondly, companies should diversify the diversity of executive backgrounds to fully leverage the positive influence of the imprinting mechanism, thereby promoting corporate green innovation. Moreover, when companies are in the growth phase, the financial background of the CEO may play a supportive role in promoting green innovation. However, once the company’s development matures, the CEO’s financial background will significantly inhibit innovation. Therefore, at different stages of the company’s lifecycle, the board of directors should pay close attention to the professional backgrounds of the corporate management. Thirdly, companies should enhance internal governance mechanisms by utilizing both internal and external governance mechanisms such as board governance, controlling shareholders governance, and proactive disclosure of information to strengthen supervision over management’s short-sighted behavior. This helps to prevent the influence of executives’ past professional backgrounds on their strategic decision-making.