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Keywords = R&D personnel structure

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17 pages, 495 KiB  
Article
Sustainability Uncertainty and Digital Transformation: Evidence from Corporate ESG Rating Divergence in China
by Xiaoya Chen, Yue Song, Xueqin Hu and Guangfan Sun
Sustainability 2025, 17(14), 6515; https://doi.org/10.3390/su17146515 - 16 Jul 2025
Abstract
ESG serves as a key metric for measuring corporate sustainability, but divergence among rating agencies has led to uncertainty in such an assessment. This investigation identifies ESG rating divergence as a critical catalyst for corporate digital transformation, establishing empirical analysis through a robust [...] Read more.
ESG serves as a key metric for measuring corporate sustainability, but divergence among rating agencies has led to uncertainty in such an assessment. This investigation identifies ESG rating divergence as a critical catalyst for corporate digital transformation, establishing empirical analysis through a robust positive correlation between the heterogeneity in sustainability assessments and organizational digitalization intensity. Comprehensive robustness examinations and endogeneity controls substantiate the persistent significance of this relationship. Mechanistically, such divergence drives technological adaptation by restructuring the R&D team composition and elevating capital allocation toward innovative initiatives. Contextual heterogeneity manifests through amplified effects in firms with elevated analyst scrutiny and stringent internal governance, whereas pollution-intensive enterprises exhibit significant effect suppression. These findings collectively advance theoretical frameworks concerning ESG evaluation economics and digital transformation drivers, while furnishing actionable implementation blueprints for corporate digitization strategists. Full article
(This article belongs to the Special Issue Enterprise Digital Development and Sustainable Business Systems)
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40 pages, 2090 KiB  
Article
How Do Core Management Team Network Ties Affect Green Innovation? Evidence from the Chinese ICT Industry
by Youxuan Wang and Zhuohang Li
Sustainability 2025, 17(7), 3217; https://doi.org/10.3390/su17073217 - 4 Apr 2025
Viewed by 431
Abstract
In the context of green sustainable development, improving the quality of green innovation (GI) has become an urgent issue for enterprises. Corporate social networks play a vital role in improving the quality of GI, but there is a lack of research on how [...] Read more.
In the context of green sustainable development, improving the quality of green innovation (GI) has become an urgent issue for enterprises. Corporate social networks play a vital role in improving the quality of GI, but there is a lack of research on how the social networks established by management team members influence GI, the pathways of their relationships, and their moderating effects. This study uses data from Chinese ICT industry listed companies between 2012 and 2022, employing social network analysis to construct the social network connections of core management team members. Mechanism analysis indicates that degree centrality and structural holes have positive effects on GI, while network density has a negative effect. R&D expenditure and personnel investment mediate the relationship between structural holes/network density and GI. Environmental information disclosure (EID) strengthens the relationship between structural holes/network density and GI. This research integrates the mediating effect and moderating effect models to elucidate the logical relationship among corporate social networks, R&D investment, EID, and GI, which has practical significance for further optimizing government environmental governance mechanisms, adjusting corporate social network structures, and enhancing innovation capabilities. Full article
(This article belongs to the Section Economic and Business Aspects of Sustainability)
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11 pages, 2134 KiB  
Communication
A Comprehensive View of Food Microbiota: Introducing FoodMicrobionet v5
by Eugenio Parente and Annamaria Ricciardi
Foods 2024, 13(11), 1689; https://doi.org/10.3390/foods13111689 - 28 May 2024
Cited by 3 | Viewed by 1507
Abstract
Amplicon-targeted metagenomics is now the standard approach for the study of the composition and dynamics of food microbial communities. Hundreds of papers on this subject have been published in scientific journals and the information is dispersed in a variety of sources, while raw [...] Read more.
Amplicon-targeted metagenomics is now the standard approach for the study of the composition and dynamics of food microbial communities. Hundreds of papers on this subject have been published in scientific journals and the information is dispersed in a variety of sources, while raw sequences and their metadata are available in public repositories for some, but not all, of the published studies. A limited number of web resources and databases allow scientists to access this wealth of information but their level of annotation on studies and samples varies. Here, we report on the release of FoodMicrobionet v5, a comprehensive database of metataxonomic studies on bacterial and fungal communities of foods. The current version of the database includes 251 published studies (11 focusing on fungal microbiota, 230 on bacterial microbiota, and 10 providing data for both bacterial and fungal microbiota) and 14,035 samples with data on bacteria and 1114 samples with data on fungi. The new structure of the database is compatible with interactive apps and scripts developed for previous versions and allows scientists, R&D personnel in industries and regulators to access a wealth of information on food microbial communities. Full article
(This article belongs to the Section Food Microbiology)
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19 pages, 6924 KiB  
Article
Measurement of Carbon Total Factor Productivity in the Context of Carbon–Electricity Market Collaboration: An Application of Biennial Luenberger Productivity Index
by Li Zhang, Hao Li, Zhumeng Song, Wei Shi and Wenxiang Sheng
Energies 2024, 17(5), 1219; https://doi.org/10.3390/en17051219 - 4 Mar 2024
Viewed by 1489
Abstract
China’s industrial sector generally relies on electricity as its main source of energy, and industrial production can be affected if there are problems with the electricity supply. In order to deal with the uncertain electricity supply and achieve the “dual carbon” target, the [...] Read more.
China’s industrial sector generally relies on electricity as its main source of energy, and industrial production can be affected if there are problems with the electricity supply. In order to deal with the uncertain electricity supply and achieve the “dual carbon” target, the industrial sector needs to take effective measures to enhance carbon total factor productivity (CTFP). We use the biennial Luenberger productivity index (BLPI) to try to provide strategies for low-carbon industrial development in China. The results indicate that the overall CTFP of China’s industrial sector showed an increasing trend from 2006 to 2019. Technology change was the main contributor to the change in CTFP, but fluctuations in efficiency change remained a challenge. Differences were observed between the light industry sector (LIS) and the heavy industry sector (HIS) in terms of changes in CTFP, with LIS showing more stable changes and HIS experiencing larger fluctuations. Most sub-sectors showed increased CTFP during the sample period. R&D investment and R&D personnel have a positive impact on CTFP, while energy structure is found to hinder CTFP. According to the research results of this study, we offer the corresponding policy implications. This study is the first to explore the balance between low-carbon goals and industrial production from the perspective of improving CTFP, providing a new viewpoint on the contributions of technological innovation to solving socio-economic issues. Full article
(This article belongs to the Special Issue The Extreme Climate, Electricity–Carbon Markets, and Digitalization)
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19 pages, 686 KiB  
Article
Do More Innovations Mean Less Reliance on Labor?—Evidence from Listed Chinese Manufacturing Companies in the Final Stage of Industrialization
by Donghui Shi and Ang Yang
Economies 2023, 11(9), 230; https://doi.org/10.3390/economies11090230 - 6 Sep 2023
Cited by 2 | Viewed by 2053
Abstract
This paper examines the impact of technological innovation on the role of labor within listed manufacturing companies during China’s final stage of industrialization, from a factor input structure perspective. Leveraging a balanced panel dataset from 2012–2021, we find that the rising R&D intensity [...] Read more.
This paper examines the impact of technological innovation on the role of labor within listed manufacturing companies during China’s final stage of industrialization, from a factor input structure perspective. Leveraging a balanced panel dataset from 2012–2021, we find that the rising R&D intensity has increased companies’ labor intensity and therefore factually slowed down the falling trend of labor intensity. This is because through R&D, the companies have both raised the relative productivity of capital and the percentage of well-educated and technically skilled personnel. Consequently, our research suggests that concerns about technological innovation leading to unemployment or diminishing the standing of workers are unnecessary. While the rising trend of labor cost will sustain for a long time, the intensified R&D activities in Chinese manufacturing companies, thanks to the fast-rising level of education for the Chinese since the 1980s, hold the potential not only to further enhance their global competitiveness, but also alleviate the pressure of employment by creating of more jobs. Full article
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14 pages, 587 KiB  
Article
Analysis of the Factors Affecting China’s Manufacturing Servitization from the Perspective of the Ecological Environment
by Hui Li, Lixia Chu and Xiaoyi Qin
Sustainability 2023, 15(4), 2934; https://doi.org/10.3390/su15042934 - 6 Feb 2023
Cited by 4 | Viewed by 1758
Abstract
Manufacturing servitization (MS) can effectively alleviate the contradiction between economic growth and ecological carrying capacity and can promote energy conservation and emission reduction in the manufacturing industry (MI). However, China’s MI is in the primary stage of servitization and lacks sufficient ability to [...] Read more.
Manufacturing servitization (MS) can effectively alleviate the contradiction between economic growth and ecological carrying capacity and can promote energy conservation and emission reduction in the manufacturing industry (MI). However, China’s MI is in the primary stage of servitization and lacks sufficient ability to provide services; thus, the environmental benefits of MS are not obvious. Therefore, in the context of current pressure to normalize environmental protection, how servitization can drive low-carbon development in MI while taking into account economic development has become an important topic at present. Thus, this study constructs an evaluation index system of factors based on a driver–pressure–state–impact–response (DPSIR) model, and uses the decision-making trial and evaluation laboratory (DEMATEL) and interpretive structural modeling (ISM) model to analyze the causal relationship and key elements among the influencing factors. The results show that from the perspective of the ecological environment, many factors affect MS, although to varying degrees. Among them, the proportion of R&D personnel, input intensity, and the proportion of clean energy are the main factors. Based on the transmission mechanism among these factors, we propose two paths to realizing the service-oriented, low-carbon development of China’s MI. Full article
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33 pages, 6611 KiB  
Article
Spatial Inequality in China’s Housing Market and the Driving Mechanism
by Sidong Zhao, Kaixu Zhao and Ping Zhang
Land 2021, 10(8), 841; https://doi.org/10.3390/land10080841 - 11 Aug 2021
Cited by 35 | Viewed by 5069
Abstract
Housing inequality is a widespread phenomenon around the world, and it varies widely across countries and regions. The housing market is naturally spatial in its attributes, and with the transformation of China’s urbanization, industrialization, and globalization, the spatial inequality in the housing market [...] Read more.
Housing inequality is a widespread phenomenon around the world, and it varies widely across countries and regions. The housing market is naturally spatial in its attributes, and with the transformation of China’s urbanization, industrialization, and globalization, the spatial inequality in the housing market is increasingly severe. According to the geospatial differences in the housing market supply, demand, and price, and by integrating the influencing factors of economic, social, innovation, facility environment, and structural adjustment, this paper constructs a “spatial–supply–demand–price” integrated housing market inequality research framework based on the methods of CV, GI, and Geodetector, and it empirically studies the spatial inequality of provincial housing markets in China. The findings show that the spatial inequality in China’s housing market is significant and becomes increasingly serious. According to the study, we have confirmed the following. (1) Different factors vary greatly in influence, and they can be classified into three types, that is, “Key factors”, “Important factors”, and “Auxiliary factors”. (2) The spatial inequalities in housing supply, demand, and price vary widely in their driving mechanisms, but factors such as the added value of the tertiary industry, number of patents granted, and revenue affect all these three at the same time and have a comprehensive influence on the development and evolution of spatial inequalities in the housing market. (3) All the factors are bifactor-enhanced or non-linearly enhanced in relationships between every pair, and they are classified into three categories of high, medium, and low according to the mean of interacting forces; in particular, the factors of GDP, expenditure, permanent resident population, number of medical beds, and full-time equivalent of R&D personnel are in a stronger interaction with other factors. (4) Based on housing supply, demand, price, and their coordination, 31 provinces are classified into four types of policy zones, and the driving mechanisms of spatial inequalities in the housing market are further applied to put forward suggestions on policy design, which provides useful references for China and other countries to deal with housing spatial inequality. Full article
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26 pages, 6296 KiB  
Article
Comparison of Machine Learning Classifiers for Accurate Prediction of Real-Time Stuck Pipe Incidents
by Javed Akbar Khan, Muhammad Irfan, Sonny Irawan, Fong Kam Yao, Md Shokor Abdul Rahaman, Ahmad Radzi Shahari, Adam Glowacz and Nazia Zeb
Energies 2020, 13(14), 3683; https://doi.org/10.3390/en13143683 - 17 Jul 2020
Cited by 20 | Viewed by 3820
Abstract
Stuck pipe incidents are one of the contributors to non-productive time (NPT), where they can result in a higher well cost. This research investigates the feasibility of applying machine learning to predict events of stuck pipes during drilling operations in petroleum fields. The [...] Read more.
Stuck pipe incidents are one of the contributors to non-productive time (NPT), where they can result in a higher well cost. This research investigates the feasibility of applying machine learning to predict events of stuck pipes during drilling operations in petroleum fields. The predictive model aims to predict the occurrence of stuck pipes so that relevant drilling operation personnel are warned to enact a mitigation plan to prevent stuck pipes. Two machine learning methodologies were studied in this research, namely, the artificial neural network (ANN) and support vector machine (SVM). A total of 268 data sets were successfully collected through data extraction for the well drilling operation. The data also consist of the parameters with which the stuck pipes occurred during the drilling operations. These drilling parameters include information such as the properties of the drilling fluid, bottom-hole assembly (BHA) specification, state of the bore-hole and operating conditions. The R programming software was used to construct both the ANN and SVM machine learning models. The prediction performance of the machine learning models was evaluated in terms of accuracy, sensitivity and specificity. Sensitivity analysis was conducted on these two machine learning models. For the ANN, two activation functions—namely, the logistic activation function and hyperbolic tangent activation function—were tested. Additionally, all the possible combinations of network structures, from [19, 1, 1, 1, 1] to [19, 10, 10, 10, 1], were tested for each activation function. For the SVM, three kernel functions—namely, linear, Radial Basis Function (RBF) and polynomial—were tested. Apart from that, SVM hyper-parameters such as the regularization factor (C), sigma (σ) and degree (D) were used in sensitivity analysis as well. The results from the sensitivity analysis demonstrate that the best ANN model managed to achieve an 88.89% accuracy, 91.89% sensitivity and 86.36% specificity, whereas the best SVM model managed to achieve an 83.95% accuracy, 86.49% sensitivity and 81.82% specificity. Upon comparison, the ANN model is the better machine learning model in this study because its accuracy, sensitivity and specificity are consistently higher than those of the best SVM model. In conclusion, judging from the promising prediction accurateness as demonstrated in the results of this study, it is suggested that stuck pipe prediction using machine learning is indeed practical. Full article
(This article belongs to the Section L: Energy Sources)
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20 pages, 971 KiB  
Article
Lean Path for High-Quality Development of Chinese Logistics Enterprises Based on Entropy and Gray Models
by Yimin Huang, Qiuxiang Li, Xueying Wang and Hongna Wang
Entropy 2019, 21(7), 641; https://doi.org/10.3390/e21070641 - 28 Jun 2019
Cited by 10 | Viewed by 3748
Abstract
According to literature review and the data of China’s logistics listed companies, this paper firstly designs the high-quality development evaluation system of logistics enterprises and establishes the panel data model group. Secondly, the method of entropy weight-Technique for Order Preference by Similarity to [...] Read more.
According to literature review and the data of China’s logistics listed companies, this paper firstly designs the high-quality development evaluation system of logistics enterprises and establishes the panel data model group. Secondly, the method of entropy weight-Technique for Order Preference by Similarity to an Ideal Solution (TOPSIS method) is used to synthesize and regress the indexes, and obtains that the fitting degree of the model is low, which is caused by the lack of data of some indicators in the logistics enterprises. Due to the gray nature of data information, the improved gray relational model and the three-dimensional gray relational model are constructed to study, in-depth, the strategic focus and breakthrough of high-quality development of Chinese logistics enterprises. The research finds that the innovation and the operation ability of Chinese logistics enterprises are weak, which shows specifically in the following aspects: (1) The irrational structure of the employees, the proportion of employees with a bachelor degree or above is small, and the high-education personnel fail to significantly promote the corporate performance; (2) R&D expenditure has little effect on the high-quality development of enterprises. The proportion of R&D expenses is small and cannot be translated into actual benefits, and the ability of enterprise management innovation is insufficient. According to these findings, this paper gives three lean paths for the high-quality development of China’s logistics enterprises. Full article
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