Mitigating Involutionary Competition Through Corporate ESG Adoption: Evidence from the Consumer Electronics Manufacturing Industry
Abstract
1. Introduction
2. Literature Review
2.1. Research on ESG Strategy for Corporations
2.2. Research on Corporate Price Competition
2.3. Research on the Correlation Between ESG and Corporate Competitiveness
2.4. Literature Summary and Commend
3. Measurement of Involutionary Competition and Its Relation with ESG
3.1. Construction of a Comparative Scoring System
3.1.1. Product Performance Parameter Evaluation
3.1.2. Derivation of Corporate ESG Scores
3.2. Measuring the Degree of Involutionary Competition Based on Profit Erosion
3.3. Empirical Analysis
4. Feasibility Analysis of ESG Engagement as a Mitigation Pathway for Involutionary Competition
4.1. Alleviating Price Competition
4.1.1. Environmental Dimension (E)
4.1.2. Social Dimension (S)
4.1.3. Governance Dimension (G)
4.2. Mitigating Homogeneous Competition
4.3. Mitigating Inefficient R&D (Duplicative Research)
5. Spiral Progressive Pathways of ESG Mitigating Involutionary Competition
5.1. Stochastic Time-Series Analysis of Apple and Huawei Price–Demand Relations
5.2. Optimizing the Relationship Between Sales Volume and Price Using Generalized Additive Model (GAM)
5.2.1. The Feasibility and Shortcomings of Linear Relationships
5.2.2. Generalised Additive Model (GAM)
- (i)
- Data distribution characteristics
- (ii)
- Applicability of Economic Principles
- (iii)
- Parameter calibration process
5.2.3. Economic Drivers of Function Shape Transformation
5.3. Sales Volume Change Simulation and the Ultimate Trajectory of Corporate ESG Engagement
5.3.1. The Overall Impact of Price Increases on Corporate Revenue
5.3.2. The Relationship Between R&D Expenditures and Corporation Market Share
5.3.3. Future Sales Trajectories Under Counter-Involutionary Competition Strategies
5.3.4. ESG’s Gradual Upward Cycle Route to Alleviate Involutionary Competition
6. Summary and Outlook
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Cell Phone Model | Affiliated Corporation | Year | Profit Decline Rate Due to Involutionary Competition | Corresponding Corporate Quarterly ESG Scores | Years Since Establishment | Industry Lerner Index | Corporation Size |
---|---|---|---|---|---|---|---|
Transsion TECNO Phantom X3 (83 points) | Transsion Holdings Co., Ltd., Shenzhen, China | 2024 | 43.07% | 6.65 | 25 | 0.113825 | 620 |
OPPO Reno4 Pro (83 points) | Guangdong Oppo Holdings Co., Ltd., Dongguan, China | 2020 | 3.16% | 6.70 | 20 | 0.126929 | 1290 |
OPPO Find X7 Ultra (90 points) | Guangdong Oppo Holdings Co., Ltd. | 2024 | 5.00% | 8.20 | 20 | 0.113825 | 1210 |
Huawei P40 Pro (96 points) | Huawei Technologies Co., Ltd., Shenzhen, China | 2020 | 0% | 7.70 | 37 | 0.126929 | 4800 |
Huawei Mate 50 Pro (81 points) | Huawei Technologies Co., Ltd. | 2022 | 6.25% | 8.60 | 37 | 0.125683 | 1160 |
Huawei P60 Pro (91 points) | Huawei Technologies Co., Ltd. | 2023 | 0% | 8.90 | 37 | 0.117904 | 1050 |
Meizu 17 Pro (89 points) | Meizu Technology Co., Ltd., Zhuhai, China | 2020 | 19.87% | 4.80 | 21 | 0.126929 | 98 |
Motorola edge s pro (85 points) | Motorola (China) Electronics Co., Ltd., Tianjin, China | 2021 | 38.75% | 5.40 | 33 | 0.139781 | 118 |
Nubia Z20 (88 points) | Nubia Technology Co., Ltd., Shenzhen, China | 2020 | 29.29% | 4.60 | 12 | 0.126929 | 52 |
Nubia Z30 Pro (80 points) | Nubia Technology Co., Ltd. | 2021 | 21.67% | 5.10 | 12 | 0.139781 | 65 |
Nubia Z50 (80 points) | Nubia Technology Co., Ltd. | 2022 | 15.00% | 5.70 | 12 | 0.125683 | 72 |
ZTE Nubia Z60 Ultra (88 points) | Nubia Technology Co., Ltd. | 2023 | 31.25% | 5.80 | 12 | 0.117904 | 78 |
Honor Magic3 (86 points) | Honor Device Co., Ltd., Shenzhen, China | 2021 | 11.25% | 7.70 | 4 | 0.139781 | 800 |
Honor Magic4 Pro (87 points) | Honor Device Co., Ltd. | 2022 | 6.25% | 7.90 | 4 | 0.125683 | 980 |
Honor Magic7 Pro (89 points) | Honor Device Co., Ltd. | 2024 | 12.00% | 8.90 | 4 | 0.113825 | 1180 |
realme X50 Pro (88 points) | Shenzhen Realme Mobile Communications Co., Ltd., Shenzhen, China | 2020 | 6.33% | 5.40 | 6 | 0.126929 | 210 |
realme GT (80 points) | Shenzhen Realme Mobile Communications Co., Ltd. | 2021 | 23.34% | 5.80 | 6 | 0.139781 | 310 |
realme GT2 Pro (91 points) | Shenzhen Realme Mobile Communications Co., Ltd. | 2022 | 0% | 6.10 | 6 | 0.125683 | 390 |
realme GT3 (82 points) | Shenzhen Realme Mobile Communications Co., Ltd. | 2023 | 61.49% | 6.60 | 6 | 0.117904 | 480 |
OnePlus 9 Pro (96 points) | Shenzhen OnePlus Technology Co., Ltd., Shenzhen, China | 2021 | 6.25% | 6.00 | 4 | 0.139781 | 380 |
OnePlus 11 (94 points) | Shenzhen OnePlus Technology Co., Ltd. | 2023 | 49.82% | 6.80 | 11 | 0.117904 | 340 |
iQOO 3 (84 points) | Vivo Mobile Communications Co., Ltd., Dongguan, China | 2020 | 0% | 6.70 | 15 | 0.126929 | 1380 |
vivo X70 Pro+ (95 points) | Vivo Mobile Communications Co., Ltd. | 2021 | 0% | 7.40 | 15 | 0.139781 | 1480 |
vivo X90 Pro+ (98 points) | Vivo Mobile Communications Co., Ltd. | 2023 | 0% | 7.80 | 15 | 0.125683 | 1420 |
vivo X200 Pro (98 points) | Vivo Mobile Communications Co., Ltd. | 2024 | 0% | 8.60 | 15 | 0.113825 | 1480 |
Xiaomi 10 Pro (98 points) | Xiaomi Technology Co., Ltd., Beijing, China | 2020 | 11.64% | 6.00 | 14 | 0.126929 | 1502 |
Xiaomi 12 Pro (92 points) | Xiaomi Technology Co., Ltd. | 2021 | 0% | 7.00 | 14 | 0.125683 | 1670 |
Xiaomi 12S Ultra (98 points) | Xiaomi Technology Co., Ltd. | 2022 | 0% | 7.32 | 14 | 0.125683 | 1670 |
Xiaomi 13 Ultra (95 points) | Xiaomi Technology Co., Ltd. | 2023 | 6.25% | 7.98 | 14 | 0.117904 | 1550 |
Xiaomi 14 Ultra (95 points) | Xiaomi Technology Co., Ltd. | 2024 | 0% | 8.17 | 14 | 0.113825 | 1720 |
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Calculation Items | Key Events | Assessment Stratification | Score Breakdown | Project Proportion | Project Score |
---|---|---|---|---|---|
E | Greenhouse Gas Emissions | Data Performance | Total carbon emissions amounted to 85,000 metric tons of carbon dioxide equivalent (t CO2e), with a carbon emissions intensity of 3.2 t CO2e per million dollars of revenue. Compared to the previous quarter, this represents a decrease of 4.5%. | 30% | 6.5 |
Industry Comparison | Compared to industry peers such as Samsung Electronics and ZTE Corporation, the carbon emissions intensity remains at a relatively high level; Samsung Electronics’ carbon emissions intensity for the quarter was 2.8 t CO2e per million USD in revenue, while ZTE Corporation’s was 2.5 t CO2e per million USD in revenue. | ||||
Goal Achievement | The corporation plans to reduce carbon emissions per unit of revenue by 40% over the next 10 years. | ||||
Energy Management | Venue Energy-Saving Measures | Over 70% of the lighting systems in the headquarters office area have been upgraded, resulting in a 22% reduction in lighting energy consumption compared to the previous quarter. Additionally, intelligent temperature control technology has been introduced in the air conditioning systems, reducing energy consumption in office spaces by 15%. | 40% | 7.5 | |
Data Center Energy Optimization | Self-developed intelligent energy management systems have been deployed in multiple large-scale data centers, with energy utilization rates in these data centers increasing by 8% compared to the previous quarter, and energy consumption per unit of computing power decreasing by 6%. | ||||
Renewable Energy Utilization | In a data center in a European country, a long-term power purchase agreement was signed with a local renewable energy supplier, increasing the proportion of renewable energy used from 30% to 45% in this quarter. In China, distributed solar photovoltaic power generation equipment has also been installed in some office buildings and data centers, with photovoltaic power generation accounting for 12% of total electricity consumption in this quarter. | ||||
Resource Recycling and Utilization | Green Product Design | The new smartphone series features a modular design that facilitates disassembly and component recycling at the end of the product life cycle. In terms of raw materials, 35% of the phone casings are made from recycled plastic. Material substitution technology has been used to reduce resource consumption during the production process. According to an assessment, the green design ratio of the new smartphone series has increased by 15% compared to the previous generation. | 30% | 7 | |
Resource Optimization in Production Process | In the manufacturing process, Huawei has optimized production processes and supply chain management to reduce raw material waste; introduced advanced production management systems to achieve fine-grained control; and worked closely with suppliers to promote optimization of raw material packaging and reduce the use of packaging materials. This quarter, the amount of raw materials used per unit of product in the manufacturing process decreased by 5% compared to the previous quarter. | ||||
Recycling System Construction | Continuously improved the product recycling system: In China, established in-depth partnerships with a number of professional recycling corporations to expand recycling channels; online, set up convenient recycling access points on Huawei’s official website and mobile app; offline, set up recycling points in Huawei stores in major cities; overseas, cooperated with well-known local recycling organizations to carry out electronic product recycling, with a waste product recycling rate of 28%, an increase of 3 percentage points over the previous quarter. | ||||
S | Protection of Employees’ Rights and Interests | Training and Development | We have enriched and improved the employee training system, with the average training time per employee reaching 28 h, an increase of 5 h compared to the previous quarter. We have provided customized leadership training courses for employees with promotion potential. | 40% | 8 |
Compensation, Benefits and Satisfaction | The corporation’s compensation levels are competitive within the industry, with the addition of supplementary commercial insurance and flexible working arrangements. Employee satisfaction survey results show that employee satisfaction has increased by 3% compared to the previous quarter, reaching 85%. | ||||
Health and Safety Assurance | Installed advanced fire alarm systems and emergency evacuation equipment; strengthened employee safety training, organized regular safety drills to enhance employees’ safety awareness and emergency response capabilities; provided health consultation and psychological counseling services to employees; and established health stations in some office locations. | ||||
Supply Chain Social Responsibility | Supplier Audit | Social responsibility audits were conducted on 80% of first-tier suppliers, covering areas such as labor rights, environmental protection, and workplace safety. Audit results revealed that 8 suppliers had instances of overtime work, and 4 suppliers had insufficient investment in environmental protection facilities. | 30% | 6.5 | |
Rectification and Assistance | For suppliers with overtime issues, Huawei collaborated with them to analyze production processes and personnel allocation, and reasonably scheduled employee working hours. For suppliers with insufficient environmental protection facility investments, Huawei organized expert teams to provide environmental protection technical solutions and assist suppliers in upgrading and renovating their equipment. | ||||
Community Participation and Public Welfare Activities | Educational Public Welfare Projects | Active educational welfare programs globally. In a certain African country, Huawei collaborated with local governments and educational institutions to launch a digital education empowerment program (the project donated communication equipment, smart teaching terminals, and online education platform services to 20 schools), benefiting over 5000 students | 30% | 7 | |
Environmental Public Welfare Activities | Large-scale environmental public welfare activities were organized. With the theme of “Green Action, Guarding Our Home”, the total number of trees planted in this quarter reached 15,000. At the same time, garbage classification publicity activities were carried out through a combination of online and offline methods, covering 80 communities, and the number of directly benefited residents exceeded 30,000. These activities have enhanced the public’s environmental awareness and promoted the improvement of the local ecological environment. | ||||
G | Corporate Governance Structure | Operation of Governance Entities | All governance entities in the corporate governance structure operate in a standardized and efficient manner. In this quarter, the board of directors conducted in-depth discussions on major issues such as the corporation’s business development direction and market expansion strategies; the board of supervisors earnestly performed its supervisory duties to ensure that the corporation’s operations comply with laws, regulations and the articles of association. | 30% | 8 |
Transparency of Decision-Making Process | The decision-making process is highly transparent. When formulating a new product research and development strategy, opinions are widely collected through internal forums, expert consultation meetings, etc., and after multiple rounds of demonstration and evaluation, it is submitted to the board of directors for deliberation. The corporation promptly discloses decision results and related information to internal employees and external stakeholders. | ||||
Risk Management and Compliance | Risk Identification and Assessment | Through the risk early warning mechanism and regular risk assessment meetings, various risks including market risks, technical risks, compliance risks, etc., have been identified; the risk of declining market competitiveness caused by lagging technological innovation has been identified; the compliance risks brought by differences in laws and regulations in different countries and regions have been identified. | 40% | 7.5 | |
Risk Response Measures | In this quarter, through effective risk response measures, some potential risks were successfully resolved, and the impact of policy adjustments in a certain country on the corporation’s business was dealt with in advance, avoiding major losses. | ||||
Effectiveness of Compliance Management | Compliance training was organized for all employees, with a training coverage rate of 100%. The corporation actively cooperated with the inspections and audits of government departments in various countries, and no major compliance issues occurred. | ||||
Information Disclosure and Transparency | ESG Report Quality | The content of the report is comprehensive and detailed, covering goals, strategies, practices and achievement data in various aspects such as environment, society and governance. | 30% | 8 | |
Other Information Disclosure | The corporation’s major information is promptly disclosed through various channels such as the official website, press conferences, and investor relations platforms. | ||||
Overall score | 7.46 |
Group Number | Year Quarter | Apple Model | Comparable Model | Profit Decline Rate due to Involutionary Competition |
---|---|---|---|---|
1 | 2020 Q4 | iPhone 12 Pro | Huawei P40 Pro | 0.00% |
Xiaomi 10 Pro | 11.64% | |||
Meizu 17 Pro | 19.87% | |||
Nubia Z20 | 29.29% | |||
2 | 2020 Q4 | iPhone 12 | iQOO 3 | 0.00% |
realme X50 Pro | 6.33% | |||
OPPO Reno4 Pro | 3.16% | |||
3 | 2021 Q4 | iPhone 13 Pro | vivo X70 Pro+ | 0.00% |
OnePlus 9 Pro | 6.25% | |||
Honor Magic3 | 11.25% | |||
Motorola edge s pro | 38.75% | |||
4 | 2021 Q4 | iPhone 13 | Xiaomi 12 Pro | 0.00% |
realme GT | 23.34% | |||
Nubia Z30 Pro | 21.67% | |||
5 | 2022 Q4 | iPhone 14 Pro | Xiaomi 12S Ultra | 0.00% |
iQOO 9 Pro (Vivo Mobile Com-munications Co., Ltd., Dongguan, China) | 12.50% | |||
Honor Magic4 Pro | 6.25% | |||
Huawei Mate 50 Pro | 6.25% | |||
6 | 2022 Q4 | iPhone 14 | realme GT2 Pro | 0.00% |
Nubia Z50 | 15.00% | |||
7 | 2023 Q4 | iPhone 15 Pro | vivo X90 Pro+ | 0.00% |
Xiaomi 13 Ultra | 6.25% | |||
ZTE Nubia Z60 Ultra | 31.25% | |||
8 | 2023 Q4 | iPhone 15 | Huawei P60 Pro | 0.00% |
OnePlus 11 | 49.82% | |||
realme GT3 | 61.49% | |||
9 | 2024 Q4 | iPhone 16 Pro | vivo X200 Pro | 0.00% |
OPPO Find X7 Ultra | 5.00% | |||
Honor Magic7 Pro | 12.00% | |||
10 | 2024 Q4 | iPhone 16 | Xiaomi 14 Ultra | 0% |
Transsion TECNO Phantom X3 | 43.07% |
Notation | yit | xit | x1it | x2it | x3it |
---|---|---|---|---|---|
Meaning | Value of internal interest rate | ESG score | years since establishment | Industry Lerner Index | corporation size |
y | x | x1 | x2 | x3 | |
---|---|---|---|---|---|
y | 1 | ||||
x | −0.445 ** | 1 | |||
x1 | −0.087 | 0.226 | 1 | ||
x2 | −0.068 | −0.465 *** | −0.11 | 1 | |
x3 | −0.508 *** | 0.566 *** | 0.400 ** | −0.169 | 1 |
(1) | (2) | (3) | (4) | |
---|---|---|---|---|
Variable | y | y | y | y |
x | −0.059 *** | −0.060 *** | −0.082 *** | −0.053 ** |
(0.012) | (0.013) | (0.020) | (0.021) | |
x1 | 0.000 | 0.000 | 0.002 | |
(0.003) | (0.003) | (0.003) | ||
x2 | −6.749 * | −5.845 | ||
(3.836) | (3.489) | |||
x3 | −0.688 * | |||
(0.338) | ||||
_cons | 0.546 *** | 0.545 *** | 1.542 ** | 1.272 ** |
(0.100) | (0.102) | (0.598) | (0.556) | |
N | 31 | 31 | 31 | 31 |
R2 | 0.198 | 0.199 | 0.295 | 0.382 |
(1) | |
---|---|
Variable | y |
x | −0.045 ** |
(0.021) | |
x1 | 0.001 |
(0.003) | |
x2 | −5.723 |
(4.935) | |
x3 | −0.635 * |
(0.341) | |
_cons | 1.210 * |
(0.692) | |
N | 26 |
R2 | 0.343 |
Pursuit Category Actions Conditions Affecting Internal Roll-Up | Increase R&D Expenses | Decrease Inventory Turnover Rate | Improve Unit Profit Margin | Increase Product Prices | Rising Labor Costs | Increased Capital Expenditures | Taxes Reduced on a Project-by-Project Basis | |
---|---|---|---|---|---|---|---|---|
E | Green material research and development | |||||||
Carbon-neutral factory certification | ||||||||
Low-carbon construction initiatives | ||||||||
Purchase of environmentally friendly equipment | ||||||||
Water recycling systems | ||||||||
S | Employee salary increases | |||||||
Barrier-free production line construction | ||||||||
Enhanced privacy protection | ||||||||
Rural education partnerships | ||||||||
G | Rural education partnerships Blockchain-based anti-corruption systems | |||||||
Circular business models | ||||||||
ESG data platforms | ||||||||
Open-source technology patents |
Price Range | Dominant Decision-Making Factors | Average Activation Intensity of the Prefrontal Cortex (μV) | Pro Max Model’s Neuro-Response Intensity for Status-Seeking Consumption |
---|---|---|---|
<8000 yuan | Functional value assessment | 12 | 1 |
≥8000 yuan | Symbolic Value | 280 | 2.3 |
Price Range | Main Competitors | Substitution Elasticity | Demand Curve Characteristics |
---|---|---|---|
<8000 yuan | Xiaomi 14 Ultra | 0.8 | Flat |
≥8000 yuan | Huawei Mate X5 Foldable Screen (12% market share) | 0.19 | Steepening |
Sales Stage | Price Elasticity | Decay Characteristics | Fitting Function |
---|---|---|---|
Initial Sales Period (January–February) | −5.2 | Linear Decay | Linear function |
Steady-state period (≥3 months) | −15.1 | Exponential Decay (New Product Replacement Pressure) | e−βt function |
Price Range | Product Positioning | Price Elasticity Characteristics | Price Reduction Effect |
---|---|---|---|
<8000 yuan | Volume-driven models | Maintain market share, with inelastic demand | - |
≥8000 yuan | The Pro Max series of technological luxury items | Dramatic increase in demand elasticity | Sales growth reached 25% (linear model predicted only 9.2%) |
Corporation | Estimation Parameter Model | Influence of Price Increase in 2024 on Annual Sales | R&D Investment Ratio | Change in R&D Investment | Forecast of Market Share Change | Sales 2025 | Sales 2026 | Sales 2027 |
---|---|---|---|---|---|---|---|---|
Huawei Terminal, Dongguan, China | be the same as the Formula (7) | ¥0.361 billion | 20.80% | 75,088,000.00 | 0.0293% | 1,392,775,500 | 5,373,472,558 | 79,983,953,824 |
Xiaomi Group-W, Beijing, China | Q = −4.01P + 34,020.42 | ¥0.090873 billion | 6.57% | 5,970,400.00 | 0.00261% | 123,930,264.7 | 169,011,671.1 | 314,336,875.9 |
Guangdong Ouga Holdings, Dongguan, China | Q = −5.08P + 41,112.66 | ¥0.28295 billion | 6.50% | 18,392,100.00 | 0.007856% | 373,454,228.8 | 492,897,709.6 | 858,609,396.9 |
Lenovo Group, Beijing, China | Q = −5.35P + 41,100.52 | ¥0.11874 billion | 3.60% | 4,274,700.00 | 0.001872% | 88,990,305.33 | 66,693,307.12 | 37,459,447.38 |
Haier Group, Qingdao, China | Q = −2.14P + 48,300.09 | ¥0.10537 billion | 4.14% | 4,362,500.00 | 0.001911% | 90,818,399.58 | 78,273,110.02 | 67,460,776.46 |
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Share and Cite
Shao, M.; Liu, Y.; Zhao, G.; Sun, H.; Zhao, P. Mitigating Involutionary Competition Through Corporate ESG Adoption: Evidence from the Consumer Electronics Manufacturing Industry. Sustainability 2025, 17, 8998. https://doi.org/10.3390/su17208998
Shao M, Liu Y, Zhao G, Sun H, Zhao P. Mitigating Involutionary Competition Through Corporate ESG Adoption: Evidence from the Consumer Electronics Manufacturing Industry. Sustainability. 2025; 17(20):8998. https://doi.org/10.3390/su17208998
Chicago/Turabian StyleShao, Menghan, Yue Liu, Guanbing Zhao, Haitao Sun, and Peiyuan Zhao. 2025. "Mitigating Involutionary Competition Through Corporate ESG Adoption: Evidence from the Consumer Electronics Manufacturing Industry" Sustainability 17, no. 20: 8998. https://doi.org/10.3390/su17208998
APA StyleShao, M., Liu, Y., Zhao, G., Sun, H., & Zhao, P. (2025). Mitigating Involutionary Competition Through Corporate ESG Adoption: Evidence from the Consumer Electronics Manufacturing Industry. Sustainability, 17(20), 8998. https://doi.org/10.3390/su17208998