Influencing Factors and Mechanisms of Value Co-Creation in Artificial Intelligence-Driven Human Resource Management: A System Dynamics Simulation
Abstract
:1. Introduction
- (1)
- What dimensions does HRMVC encompass?
- (2)
- What are the factors influencing HRMVC? What are the relationships between the influencing factors and HRMVC, as well as among the influencing factors themselves?
- (3)
- In the context of AI, how do different combinations of AI-related influencing factors affect HRMVC?
2. Identification of Influencing Factors
2.1. Research Design
2.2. Data Sources
2.2.1. Interview Survey Data
- (1)
- Enterprise interview materials. During the period from 2021 to 2023, we conducted semi-structured interviews through online and offline visits, as well as WeChat consultations, with various enterprises, including Chint Electric, NewMed Medical, DSM China, Otis Elevator, KingMed Diagnostics, and Freshippo robot restaurants. The interviews mainly focused on the interaction process between human resource managers and stakeholders during the HRMVC process. To comprehensively understand the influencing factors of HRMVC, we selected senior executives, human resources professionals, business department leaders, and company employees as interview subjects, following the principles of theoretical sampling and data availability. To ensure that the selected interviewees are sufficiently representative and diverse while also considering the impact of factors such as differences in age structure and job structure, we established the following selection criteria for interview subjects: ① The interview subjects are related to HRMVC work. ② The gender distribution of the interview subjects is balanced. ③ The job structure distribution of the interview subjects is reasonable. Ultimately, a total of 24 interview subjects were selected. Among them, 50% were male. Regarding job structure, 12.5% were senior executives, 16.6% were business department leaders, 25% were human resources staff, and 45% were company employees. During the interview, we first explained the concept of HRMVC to ensure their understanding. Then, we conducted in-depth interviews based on an open-ended questionnaire. The main interview questions included: What HRMVC situations exist in the company? How are these activities carried out? What factors can influence HRMVC? In which part of the HRMVC work have you mainly participated?
- (2)
- Enterprise questionnaire sample. We collected questionnaire data using an online platform, obtaining a total of 245 samples, of which 217 were valid. The questionnaire items included questions related to HRMVC, such as “What HRMVC situations exist in the company?” and “What factors can influence HRMVC?”
2.2.2. Non-Interview Survey Data
- (1)
- Government documents. We selected government documents related to HRMVC from human resources laws and regulations. After screening and analysis, a total of 34 government documents were included in the sample.
- (2)
- Enterprise website. Based on the corporate websites with HRMVC-related information, 18 documents were selected and included in the research sample.
- (3)
- Internal enterprise documents. Interviewees provided 12 documents related to HRMVC, including notifications, plans, and other relevant materials.
- (4)
- Case materials. We obtained 3 teaching case studies related to HRMVC themes from the China Management Case-sharing Centre and The Global Platform of China Cases.
- (5)
- Online reports. Using “HRMVC” and its similar expressions as search terms, we conducted a search through online platforms, carefully selecting authoritative reports closely related to the topic and excluding low-relevance samples. Ultimately, 67 online report samples were included in the coding analysis.
- (6)
- Academic Literature. A total of 62 relevant academic articles were collected from Chinese National Knowledge Infrastructure, Web of Science, Google Scholar, and Scopus.
2.3. Data Coding
2.3.1. Open Coding
2.3.2. Axial Coding
2.3.3. Selective Coding
2.3.4. Theoretical Saturation Test
3. Simulation Analysis
3.1. Determination of System Boundaries
- (1)
- The evolution of enterprise HRMVC is a continuous and gradual development process.
- (2)
- Other unexpected events or force majeure factors that may impact the system evolution, such as public health emergencies, wars, and natural disasters, are excluded.
- (3)
- The enterprise HRMVC system is a relatively stable system, primarily influenced by organizational, environmental, and participant factors.
3.2. Analysis of Systematic Causality
- (1)
- Value Co-creation Environment HRMVC Co-creation Support Value Co-creation Environment
- (2)
- Value Co-creation Willingness HRMVC Co-creation Support Value Co-creation Willingness
- (3)
- Value Co-creation Capacity HRMVC Co-creation Support Value Co-creation Capacity
3.3. Analysis of System Flow Diagram
3.4. Simulation Analysis of Influence Mechanism
3.4.1. Single-Factor Influence Mechanism
3.4.2. Multi-Factor Synergistic Influence Mechanism
3.4.3. Multi-Factor Non-Synergistic Influence Mechanism
- (1)
- Scenario 3 > Scenario 1 > Scenario 2. In enterprises adopting a “human + AI” hybrid workforce while enhancing the level of digital intelligence, using AI to empower participants and improve their AI capabilities can enhance the enterprise’s HRMVC level. Enterprises focusing on enhancing the level of digital intelligence and using AI to empower participants in their work yield better results compared to scenarios where enterprises empower participants while focusing solely on enhancing their own AI capabilities. Both of these scenarios outperform enterprises that only focus on overall digital intelligence without empowering AI for specific work tasks.
- (2)
- Scenario 6 > Scenario 4 > Scenario 5. It can be seen that when enterprises emphasize the improvement of digital intelligence level, the combined effect of “human + AI” mixed workforce and empowering participants with AI is better than the effect of enterprises empowering AI while participants focus on improving their own AI capabilities. These two schemes are more effective than enterprises using a “human + AI” mixed workforce while participants focus on enhancing their own AI capabilities.
- (3)
- Scenario 8 > Scenario 9 = Scenario 7. It can be seen that after enterprises empower participants with AI and use a “human + AI” hybrid workforce, schemes focusing on enhancing participants’ own AI capabilities are superior to situations where enterprises enhance their digitalization level and adopt a “human + AI” hybrid workforce, as well as cases where enterprises enhance their digitalization level while participants improve their own AI capabilities. Therefore, it can be seen that after enterprises empower participants with AI, the use of a “human + AI” hybrid workforce is more effective than schemes focusing solely on enhancing enterprise digitalization or improving participants’ AI capabilities.
- (4)
- Scenario 11 > Scenario 10 > Scenario 12. It can be seen that when participants focus on improving their own AI capabilities, the effect of enterprises using a “human + AI” mixed workforce while empowering participants with AI is better than enterprises focusing on improving their own digital intelligence level while empowering participants with AI. Both are more effective than enterprises using a “human + AI” mixed workforce while simultaneously focusing on improving their own digital intelligence level.
4. Discussion
- (1)
- Based on the varying content of co-creation, this research categorizes HRMVC into three dimensions: value co-creation environment, value co-creation capability, and value co-creation willingness. These three dimensions collectively constitute important factors influencing the effectiveness of enterprise HRMVC activities. ① The dimension of value co-creation environment encompasses both the external and internal environments in which a company operates. ② Value co-creation capability represents the combination of various skills and resources required by participants in HRMVC activities, including expertise, communication skills, coordination abilities, and resource integration capabilities. ③ Value co-creation willingness refers to participants’ enthusiasm and motivation towards HRMVC activities. The strength of participants’ willingness directly impacts their level of engagement in the co-creation process.
- (2)
- This research constructs a model of influencing factors for HRMVC through grounded theory analysis, identifying 10 major influencing factors categorized into three main groups: environmental factors, organizational factors, and participant factors. These findings align with previous research that emphasizes the role of environmental and organizational factors in HRM [22]. In addition to factors previously identified in the literature, our research reveals additional influencing factors, such as AI empowerment at the organizational level and AI capability among participants. We have further integrated all these factors into a comprehensive model, providing a more systematic and complete representation of HRMVC factors, therefore enhancing the understanding of their interactions within the HRMVC framework.
- (3)
- Based on the HRMVC influencing factors model, this research uses system dynamics simulation analysis and finds that, under single-factor conditions, environmental factors such as government policies and employment situations have a significant positive impact on enterprise HRMVC. Additionally, comprehensive support from the company for HRMVC activities also plays an important role. This confirms existing studies that highlight the importance of external and organizational factors [12]. However, our findings extend the existing literature by demonstrating how these factors specifically influence HRMVC within the context of AI, which offers new insights into the dynamic interactions of these factors under AI-driven conditions, a perspective that previous studies have not fully explored.
- (4)
- In the context of AI, this research focuses on multi-factor non-synergistic and synergistic simulations of various AI-related factors. The research results indicate that when multiple factors interact, elements such as the “human + AI” mixed labor force, digitization level, AI empowerment, and investments in AI capabilities collectively enhance the level of HRMVC. Therefore, under conditions of limited resources, prioritizing the use of AI tools for empowerment in HRMVC activities yields significant results. These results provide new insights into how AI can amplify traditional HRMVC factors, which aligns with studies suggesting the potential of AI in HRM [30]. Our research offers concrete evidence on how AI-related factors work together to significantly boost HRMVC, highlighting the importance of prioritizing AI investments in HRM practices, thus filling a critical gap in the literature.
4.1. Theoretical Contributions
- (1)
- The theoretical framework of HRMVC has been significantly extended: Combining grounded theory and system dynamics methods, this research not only identified the influencing factors of HRMVC but also explored the dynamic relationships among these factors, therefore expanding the theoretical framework of HRMVC. These include various environmental, organizational, and individual factors, such as AI empowerment and AI capability. These findings offer a more comprehensive understanding of how AI can be integrated into HRM processes, particularly in enhancing co-creation between different stakeholders. This addresses ongoing debates in the literature regarding the role of AI in transforming traditional HR practices, providing empirical support for AI’s potential to fundamentally reshape how value is co-created in HRM.
- (2)
- Advancing the application of value co-creation theory in HRM: By introducing the theory of value co-creation into enterprise HRM, this research reveals the interactive mechanisms among enterprises, government, and participants, enriching the application scenarios of the value co-creation theory. By doing so, it expands the scope of value co-creation theory beyond traditional contexts, showing its relevance and applicability in the modern HRM landscape, particularly in the era of digital transformation and AI integration. This research demonstrates how AI can serve as an active participant in co-creation processes, which not only broadens the application of value co-creation theory but also provides a new perspective on the interaction between technology and human resources. This contributes to the broader academic discourse on the implications of AI in organizational settings, particularly concerning ethical, practical, and strategic considerations.
- (3)
- Contributing to ongoing debates on AI in HRM: Against the backdrop of the AI era, this research systematically analyses the impact of AI-related factors on HRMVC and proposes specific strategies for empowering HRMVC activities using AI tools. By exploring how AI-related factors such as AI empowerment and AI capability interact with other HRMVC elements, this research provides empirical evidence that supports the strategic use of AI in HRM. This not only enriches the understanding of AI’s role in HRM but also addresses key questions in current debates about the future of work and the digital transformation of organizational processes.
4.2. Practical Implications
- (1)
- Pay attention to government policy adjustments. According to the analysis results of this research, government policies related to HRM, such as insurance, maternity, and taxation, can specifically influence the design of enterprise HRM processes and specific policies. These policies directly affect HRM stakeholders and have a substantial impact on enterprise HRM activities. Therefore, companies need to closely monitor relevant government policy trends and work closely with HRM stakeholders to promptly adjust the content, norms, and processes of HRMVC activities, thus effectively organizing enterprise HRMVC activities. Given the potential financial and operational impacts, companies need to implement proactive measures to monitor and adapt to policy changes. For instance, by anticipating shifts in taxation or labor laws, companies can optimize their HRMVC processes to maintain compliance while minimizing costs and avoiding potential disruptions to their operations.
- (2)
- Focus on providing support for enterprise HRMVC. While creating a fair, open, and innovation-supportive organizational atmosphere and corporate culture conducive to HRMVC, it is crucial to fully consider stakeholders’ opinions in the design of the HRM system and actively collect feedback during the implementation process to continuously optimize the HRM system and policies, establishing a suitable HRM framework for HRMVC activities. Additionally, it is necessary to build a resource platform for HRMVC, coordinating the diverse needs and relationships of participants, providing support from management, and keeping pace with technological advancements using AI to empower HRMVC activities. Moreover, to ensure economic efficiency and competitive advantage, companies should leverage AI to enhance decision-making processes and automate routine tasks within HRMVC. By building a robust resource platform that integrates AI technologies, companies can more effectively coordinate the diverse needs and relationships of participants, therefore improving overall productivity and responsiveness to market changes.
- (3)
- Enhance the effectiveness of HRMVC implementation from the perspective of HRMVC participants. Based on the different viewpoints and individual characteristics of the participants, it is important to enhance their identification with their own careers and the organization. Additionally, establish participants’ understanding of the future economy and company expectations and assist them in creating plans. To maximize the economic contributions of HRMVC, companies should invest in the development of participants’ professional, managerial, and AI skills, which not only improves HRMVC effectiveness but also ensures that the workforce is better equipped to drive innovation and respond to evolving market conditions. By doing so, companies can enhance both their internal capabilities and external market position.
- (4)
- In the new era of enterprise management, where AI is increasingly involved in enterprise HRMVC activities, companies must pay more attention to the impact of AI-related factors on HRMVC processes, such as “human + AI” mixed labor force, digitization level, AI empowerment, and investments in AI capabilities. When allocating resources, companies should prioritize empowering participants through AI in the design and implementation of HRMVC processes. By strategically increasing the use of ‘human + AI’ hybrid workforces and integrating AI as a core component of HRMVC, companies can enhance their operational efficiency and innovation potential. This approach not only drives cost reduction but also enables companies to rapidly adapt to market changes, therefore maintaining a competitive edge in a dynamic economic environment. Additionally, the use of “human + AI” hybrid workforces should be increased, with AI being introduced as a new type of workforce to participate in value creation. Companies should also focus on improving their level of digital intelligence to enhance their HRMVC capabilities. Furthermore, companies need to help participants fully understand the trend and efficiency of AI involvement in work. By enhancing their AI capabilities through learning, they can improve human-AI collaboration efficiency, which in turn can enhance the company’s HRMVC level.
4.3. Limitations and Future Directions
- (1)
- This research systematically explores the impact of environmental factors, organizational factors, and participant factors on HRMVC, providing a comprehensive framework. Future research could focus on a specific aspect or factor to delve deeper into the underlying mechanisms.
- (2)
- We observed that respondents with different demographic characteristics and personality traits exhibited varying degrees of corporate identification, execution feedback, and willingness to cooperate during the interviews. Subsequent research could further explore the boundaries of applicability for the theoretical model of influencing factors proposed in this research.
- (3)
- The research primarily considers the resource allocation combination after the integration of AI in the multi-factor simulation scheme. It does not cover all influencing factors, and future researchers can explore the impact mechanisms of other factor combinations on HRMVC.
- (4)
- This research did not address the implementation costs of different scenarios. Future research could further explore the cost-benefit analysis of HRMVC implementation plans to provide more comprehensive decision-making support.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Variable Classification | Variable Name | Variable Description |
---|---|---|
State variable | Value co-creation environment | The external environmental factors and internal environmental factors that influence enterprise HRMVC |
Value co-creation capacity | The combination of various abilities that participants need for the HRMVC event | |
Value co-creation willingness | Participants’ willingness to participate in HRMVC | |
Rate variable | The increase in value co-creation environment | To measure the added value of a value co-creation environment |
The increase in value co-creation capacity | To measure the added value of a value co-creation capacity | |
The increase in value co-creation willingness | To measure the added value of a value co-creation willingness | |
Auxiliary variable | HRMVC | HRM stakeholders jointly participate in creating the value of HRM activities |
Policy environment | Government-related factors such as laws and regulations, normal documents, and work efficiency | |
Marketing environment | Economic environment, product competitiveness, and other market economic factors | |
Employment environment | Employment situation and labor force structure and other enterprise employment factors | |
Employment situation | General labor market conditions and competition for job seekers | |
Economic environment | The market economy situation of the enterprise | |
Organizational environment | Characteristics, atmosphere, reputation, and other conditions of the enterprise | |
Innovation competence | Enterprise’s ability to create and improve products and management | |
Co-creation support | Resource platform, requirement coordination, and other support provided by the organization for HRMVC | |
HRM | HRM system design, policy training, and other management work carried out by enterprises | |
Knowledge and skills | The knowledge and skill base necessary for participants to participate in HRMVC activities | |
Laws and regulations | Relevant labor laws, local regulations, and other mandatory requirements | |
Individual characteristics | Participants’ personality, psychological safety, and other factors | |
Future expectations | Participants’ expectations for the future of the economy, companies, and individuals | |
Social identity | The participants’ level of recognition of their profession and organization | |
Demographic characteristics | Gender, age, and other characteristics of the participants | |
GDP | The final results of production activities of all permanent resident units in a country over a certain period of time | |
Per capita GDP | Per capita gross domestic product | |
The difference between imports and exports of goods | Gross export—gross import | |
The debt balance of the central government | Government debt—debts paid | |
Consumer price index | The per capita consumption expenditure of permanent residents on purchasing and using goods and services in domestic and international markets to directly meet their living needs | |
Per capita disposal income | Consumer price index/resident population | |
Foreign direct investment | Foreign investors in our country invest through establishing foreign-invested enterprises, partnerships, joint exploration and development of petroleum resources with Chinese investors, and setting up branches of foreign companies | |
Number of labor dispute arbitration cases accepted | The Arbitration Committee for Labor Disputes and Personnel Disputes, in accordance with national laws, regulations, and relevant rules and regulations, reviews the arbitration applications submitted by the parties involved in labor disputes and personnel disputes. The committee formally registers the number of labor disputes and personnel dispute cases that meet the acceptance criteria after examination | |
Labor union | The number of labor unions | |
Income from social insurance funds | The funds formed from insurance premiums paid by units participating in social old-age, unemployment, medical, maternity, and work injury insurance, according to the national regulations on payment base and contribution rates, as well as funds acquired through other legal means | |
Labor force population | The population aged 16 and above, capable of working, participating in, or requesting participation in socio-economic activities, including employed and unemployed individuals | |
Employed person | A laborer who is at least 16 years old and works for compensation or profit | |
Registered urban unemployment rate | The percentage of the urban unemployed population to the sum of the urban employed population and unemployed population | |
Average wage | The average wage earned per person employed in a certain period | |
The number of authorized patents | The number of authorized patents held by the company both domestically and internationally | |
Number of patent applications accepted | The number of domestic and international patent applications accepted | |
Population age structure | The proportion of the population aged 15–64 years old to the total population | |
Constant | Product competitiveness | The market share and sales performance of the enterprise products |
Policy document | Government subsidies, social security, taxation, and other relevant operation or guidance documents | |
Work efficiency | The efficiency of the interface window or office with the government | |
“Human + AI” mixed labor force | Both traditional labor and AI are put into production as labor that can create value | |
Enterprise characteristic | The industry and scale of the enterprise | |
Enterprise reputation | Enterprise industry reputation, network evaluation, legal disputes, etc. | |
Organizational climate | The overall atmosphere that participants feel in the organization | |
Organizational justice | A participant’s perception of fairness in organizational distribution, procedures, etc. | |
Digitization level | The extent to which enterprises use big data and AI to improve production and management | |
System design | Arrangement of HRM process and system | |
Policy training | Enterprises train relevant personnel on human resources policies and procedures | |
Executive feedback | Constantly collect participants’ opinions for improvement during HRM system implementation | |
Resource platform | Enterprises use hardware, personnel, and software to build the HRMVC platform | |
Demand coordination | Communicate and coordinate the needs of participants | |
Leadership support | HRMVC leadership support for co-creation efforts | |
AI empowerment | The organization provides AI-related hardware and software support to help participants work | |
Relationship management | Organize and coordinate the relationships and interactions of various participants | |
Personality traits | Participants had different personalities, such as introversion and extroversion | |
Psychological security | Participants feel safe in the organization to advise and try new things | |
Career identity | The degree to which the participants recognized their occupation | |
Organizational identification | The degree to which participants recognize the organization | |
Economic expectation | Participants’ judgments about the future economic situation | |
Enterprise expectation | Participants’ judgment on the future development situation of the enterprise | |
Personal planning | Participants’ plans for their own futures | |
Professional knowledge and skills | The degree to which the participants have mastered and applied their professional knowledge to the job | |
Basic knowledge of human resources | Participants’ knowledge of basic knowledge of human resources | |
Management communication ability | Management ability, collaboration and communication ability of participants | |
Innovation ability | The ability of participants to identify problems, create and improve |
Appendix B
- (1)
- Form of the table function equation
- (2)
- The form of functional equations
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Data Type | Data Sources | Sample Size | Coding | |
---|---|---|---|---|
Interview survey data | Enterprise Interview | Online and offline interviews, on-site investigations, WeChat consultations, re-interviews with relevant participants about the company introduction, etc. | 33 | I1 |
Questionnaire survey | Questionnaire data. | 217 | I2 | |
Non-interview survey data | Government documents | Laws and regulations, policy compilations, government portals, etc. | 34 | N1 |
Enterprise website | Chint Group, Huawei Group, and other enterprises’ official websites. | 18 | N2 | |
Internal enterprise documents | Internal enterprise documents provided by respondents. | 12 | N3 | |
Case materials | Obtain HRMVC-related case materials from the China Management Case-sharing Centre and The Global Platform of China Cases. | 3 | N4 | |
Online reports | Baidu search and WeChat search. | 67 | N5 | |
Academic Literature | Chinese National Knowledge Infrastructure, Web of Science, Google Scholar, and Scopus. | 62 | N6 | |
Total | 446 | - |
Original Material | Open Coding | ||
---|---|---|---|
Phenomenon | Conceptualization | Categorization | |
After COVID-19, market demand has not yet recovered, so enterprises are facing more severe competition. At such times, it requires us to pay more attention to the overall costs of enterprises, and achieve cost reduction and efficiency improvement. Regarding HRM, how to use machines and human resources to optimize productivity more effectively requires leadership from company executives. HRM departments and production departments need to collaborate to calculate and plan this matter together. (I1) | a1: market demand did not recover after the COVID-19 a2: productivity allocation a3: senior management takes the lead, HRM department and production department cooperate to complete the work | aa1: economic environment (a1) aa2: demand coordination (a2) aa3: relationship management (a3) | A1: marketing environment (aa1) A2: co-creation support (aa2, aa3) |
I think the company’s atmosphere is quite good, and its future development also looks promising. Therefore, when the company has job openings, and if I happen to have friends looking for jobs, I am more willing to recommend my friends to come and work here. (I1) | a14: the company atmosphere is good a15: the company is developing well | aa14: organizational climate (a14) aa15: organizational identification (a15) | A6: organizational environment (aa14) A7: social identity (aa15) |
The company policy states that if an employee’s suggestion is adopted, there will be an additional bonus. Well, how should I put it? Personally, I also have an outgoing personality and enjoy getting involved in these things. (I1) | a7: the company has a reward system a17: extrovert personality | aa5: system design (a7) aa9: personality traits (a17) | A4: individual characteristics (a17) A5: HRM (aa5) |
Main Category | Initial Category | Corresponding Category | Category Interpretation |
---|---|---|---|
Environmental factor | Marketing environment | Economic environment | The market economy situation of the enterprise. |
Product competitiveness | The market share and sales performance of the enterprise products. | ||
Policy environment | Laws and regulations | Relevant labor laws, local regulations, and other mandatory requirements. | |
Policy document | Government subsidies, social security, taxation, and other relevant operation or guidance documents. | ||
Work efficiency | The efficiency of the interface window or office with the government. | ||
Employment environment | Employment situation | The employment status of the area in which the enterprise is located. | |
“Human + AI” mixed labor force | Both traditional labor and AI are put into production as labor that can create value. | ||
Organizational factor | Organizational environment | Enterprise characteristic | The industry and scale of the enterprise. |
Enterprise reputation | Enterprise industry reputation, network evaluation, legal disputes, etc. | ||
Organizational climate | The overall atmosphere that participants feel in the organization. | ||
Organizational justice | A participant’s perception of fairness in organizational distribution, procedures, etc. | ||
Digitization level | The extent to which enterprises use big data and AI to improve production and management. | ||
Innovation competence | Enterprise’s ability to create and improve products and management. | ||
HRM | System design | Arrangement of HRM process and system. | |
Policy training | Enterprises train relevant personnel on human resources policies and procedures. | ||
Executive feedback | Constantly collect participants’ opinions for improvement during HRM system implementation. | ||
Co-creation support | Resource platform | Enterprises use hardware, personnel, and software to build the HRMVC platform. | |
Demand coordination | Communicate and coordinate the needs of participants. | ||
Leadership support | HRMVC leadership support for co-creation efforts. | ||
AI empowerment | The organization provides AI-related hardware and software support to help participants work. | ||
Relationship management | Organize and coordinate the relationships and interactions of various participants. | ||
Participant factor | Individual characteristics | Demographic characteristics | Gender, age, and other characteristics of the participants. |
Personality traits | Participants had different personalities, such as introversion and extroversion. | ||
Psychological security | Participants feel safe in the organization to advise and try new things. | ||
Social identity | Career identity | The degree to which the participants recognized their occupation. | |
Organizational identification | The degree to which participants recognize the organization. | ||
Future expectations | Economic expectation | Participants’ judgments about the future economic situation. | |
Enterprise expectation | Participants’ judgment on the future development situation of the enterprise. | ||
Personal planning | Participants’ plans for their own futures. | ||
Knowledge and skills | Professional knowledge and skills | The degree to which the participants have mastered and applied their professional knowledge to the job. | |
Basic knowledge of human resources | Participants’ knowledge of basic knowledge of human resources. | ||
Management communication ability | Management ability, collaboration and communication ability of participants. | ||
Innovation ability | The ability of participants to identify problems, create and improve. | ||
AI capability | The ability of participants to work with AI technology. | ||
HRMVC | Value co-creation environment | Organizational external environment | Environmental factors outside the organization that affect HRMVC. |
Internal organizational environment | HRM policy, leadership support, and other internal environment within the organization. | ||
Value co-creation willingness | Organizational co-creation willingness | The extent to which the organization is willing to undertake HRMVC. | |
Individual co-creation intention | The degree to which individuals are willing to participate in HRMVC. | ||
Value co-creation capacity | Organizational co-creation ability | The ability of the organization to support HRMVC activities. | |
Individual co-creation ability | The ability of the individual to participate in HRMVC and achieve the corresponding goals. |
Typical Relation Structure | Connotation of Relation Structure |
---|---|
Environmental factor → HRMVC | The marketing environment, policy environment, and employment environment in which an enterprise operates will impact the company’s HRMVC. |
Organizational factor → HRMVC | The internal environment of the enterprise and HRM, as well as the support it provides to HRMVC, will have a direct impact. |
Participant factor → HRMVC | Individual characteristics, social identity, future expectations, and knowledge and skills of HRMVC participants influence HRMVC. |
Environmental factor → Organizational factor → HRMVC | The external environment, including markets, policies, and talent, can influence a company’s environment and HRM policies. These factors also affect the co-creation support that a company can provide, therefore impacting HRMVC. |
Environmental factor → Participant factor → HRMVC | The external economic and employment environment influences HRMVC through factors such as the social identity and future expectations of its participants, therefore impacting HRMVC. |
Organizational factor → Participant factor → HRMVC | Organizations influence HRMVC by supporting and managing participants’ organizational identification, future expectations, and knowledge skills through HRM policies and provided resources. |
Simulation Schemes | Organizational Factors | Environmental Factors | Participant Factors |
---|---|---|---|
Scenario 1 | ↑10% | ||
Scenario 2 | ↑20% | ||
Scenario 3 | ↑10% | ||
Scenario 4 | ↑20% | ||
Scenario 5 | ↑10% | ||
Scenario 6 | ↑20% |
Simulation Schemes | “Human + AI” Mixed Labor Force | Digitization Level | AI Empowerment | AI Capability |
---|---|---|---|---|
Scenario 1 | ↑10% | ↑5% | ↑5% | ↑5% |
Scenario 2 | ↑20% | ↑5% | ↑5% | ↑5% |
Scenario 3 | ↑5% | ↑10% | ↑5% | ↑5% |
Scenario 4 | ↑5% | ↑20% | ↑5% | ↑5% |
Scenario 5 | ↑5% | ↑5% | ↑10% | ↑5% |
Scenario 6 | ↑5% | ↑5% | ↑20% | ↑5% |
Scenario 7 | ↑5% | ↑5% | ↑5% | ↑10% |
Scenario 8 | ↑5% | ↑5% | ↑5% | ↑20% |
Simulation Schemes | “Human + AI” Mixed Labor Force | Digitization Level | AI Empowerment | AI Capability |
---|---|---|---|---|
Scenario 1 | ↑20% | ↑5% | ↑5% | |
Scenario 2 | ↑20% | ↑5% | ↑5% | |
Scenario 3 | ↑20% | ↑5% | ↑5% | |
Scenario 4 | ↑20% | ↑5% | ↑5% | |
Scenario 5 | ↑5% | ↑20% | ↑5% | |
Scenario 6 | ↑5% | ↑20% | ↑5% | |
Scenario 7 | ↑5% | ↑20% | ↑5% | |
Scenario 8 | ↑5% | ↑20% | ↑5% | |
Scenario 9 | ↑5% | ↑5% | ↑20% | |
Scenario 10 | ↑5% | ↑5% | ↑20% | |
Scenario 11 | ↑5% | ↑5% | ↑20% | |
Scenario 12 | ↑5% | ↑5% | ↑20% |
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© 2024 by the authors. 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/).
Share and Cite
Dong, J.-J.; Yan, S.-M.; Yang, X.-W. Influencing Factors and Mechanisms of Value Co-Creation in Artificial Intelligence-Driven Human Resource Management: A System Dynamics Simulation. Systems 2024, 12, 352. https://doi.org/10.3390/systems12090352
Dong J-J, Yan S-M, Yang X-W. Influencing Factors and Mechanisms of Value Co-Creation in Artificial Intelligence-Driven Human Resource Management: A System Dynamics Simulation. Systems. 2024; 12(9):352. https://doi.org/10.3390/systems12090352
Chicago/Turabian StyleDong, Jun-Jie, Shu-Min Yan, and Xiao-Wei Yang. 2024. "Influencing Factors and Mechanisms of Value Co-Creation in Artificial Intelligence-Driven Human Resource Management: A System Dynamics Simulation" Systems 12, no. 9: 352. https://doi.org/10.3390/systems12090352
APA StyleDong, J. -J., Yan, S. -M., & Yang, X. -W. (2024). Influencing Factors and Mechanisms of Value Co-Creation in Artificial Intelligence-Driven Human Resource Management: A System Dynamics Simulation. Systems, 12(9), 352. https://doi.org/10.3390/systems12090352