Analyzing the Shift in China’s Cultural Industries: From Economic Growth to Social Enrichment
Abstract
:1. Introduction
1.1. Characteristics of China’s Culture Industries
1.2. Social Benefits of China’s Culture Industries
1.3. Research Objectives
- To employ empirical methods from operations research and econometrics in investigating the benefits of cultural industries.
- To conduct a comprehensive evaluation of the social benefits of China’s cultural industries, incorporating actual data from government policies for correlational studies.
- To discuss the experiences and challenges in assessing the social benefits of China’s cultural industries.
2. Materials and Methods
2.1. Research Process
- Collection of various data on cultural industries publicly issued by the Chinese government.
- Conducting a comprehensive evaluation of the social benefits of China’s cultural industries based on the collected data.
- Analyzing the correlation between the comprehensive assessment results of the social benefits of the cultural industries and the variables that may influence them.
- Discussing and investigating these findings.
2.2. Methods
- and denote slack variables for inputs and outputs.
- and represent the input and rth output of the jth DMU, respectively.
- m and s are the number of inputs and outputs, and n is the number of DMUs.
- ρ in the objective function is the efficiency score, bounded within the interval [0, 1].
- is the normalized value.
- is the original data value.
- is the smallest value in the dataset.
- is the largest value in the dataset.
- is the latent (unobservable) variable that represents the true value of the dependent variable.
- is a vector of coefficients.
- is a vector of independent variables.
- is the error term, typically assumed to be normally distributed with mean zero and variance .
2.3. Data
3. Results
3.1. PCA
- Engaged Persons at Year-end measures the total employment opportunities provided by the cultural industries, indicating their capacity to generate jobs.
- Total Tax is utilized to quantify the total tax revenue generated by the cultural industries. While taxes are often considered costs in economic evaluations, they are treated as outputs in social benefit assessments.
- Per capita wage measures the income provided to individuals employed within the cultural industries, reflecting the sector’s ability to support its workforce.
- Production and Transaction of TV Program, Production and Transaction of Radio Program, and Registration of Original Product are indicators used to measure the volume of cultural products within news and information services, content creation and production, creative design services, and cultural dissemination channels.
- Granted Patent Applications on culture industries assesses the innovative capacity of the cultural industries, indicating their contribution to technological and creative advancements.
- Number of Visitors to Tourist Attractions reflects the number of visitors to provincial and municipal A-grade scenic spots as rated by the National Tourism Administration, measuring the service and benefits provided by the tourism sector.
- Number of Overseas Visitor Arrivals is used to evaluate the international social impact generated by the tourism industry.
- Museum Spectators measures the societal impact created by various museums, indicating cultural engagement and educational outreach.
- Spectators of Agencies of Cultural Relics Preservation assesses the social impact of traditional China’s culture through visitor numbers at key heritage sites, such as the Forbidden City and Mogao Caves.
- Domestic Audience Numbers for Art Performance Troupes measures the social impact of Chinese art performance groups, including Peking opera troupes and orchestras.
- Attending Art and Cultural Activities represents the number of participants in folk arts and cultural activities, encompassing not only spectators but also amateur performers.
3.2. Construction of the Global SBM Model for Cultural Industries in 31 Provinces of China, 2014–2017
3.3. Construction of Tobit Model for Influencing Factors of Social Benefits in China’s Cultural Industries
4. Discussion
4.1. Declining Scale Efficiency in China’s Cultural Industries
4.2. The Potential Improvement in Output Quality of Social Benefits in China’s Cultural Industries
4.3. Study on the Influencing Factors of Social Benefit Efficiency in Cultural Industries under Constant Returns to Scale
4.4. Study on Factors Influencing the Social and Economic Benefits of the Cultural Industries under Variable Returns to Scale
5. Conclusions
- In the realm of China’s cultural industries, the efficiency of social benefits is currently experiencing diminishing returns to scale, that is, greater asset investment and annual revenue no longer yield proportional increases in tax revenues, employment opportunities, cultural industries outputs, and service coverage. However, this does not necessarily imply that the expansion of industrial scale should be halted. This paper discusses how scaling up could enhance the economic efficiency of the cultural industries while also increasing the absolute output of social benefits. Therefore, the recommendation is to cautiously expand the scale in the future.
- As evidenced in Section 4.2 and other parts, the efficiency of China’s cultural social benefits, supported by pure technical efficiency, remains at a certain level. This reflects recent adjustments in the structure, technological innovations, and management improvements of the cultural industries which have started to positively impact social benefits and have achieved some success. This paper suggests that future policy focus should be on how to further enhance the pure technical efficiency of the cultural industries’ social benefits to address potential issues arising from changes in scale. If policymakers continue to emphasize the primacy of social over economic benefits in the cultural industries, then, policy formulation should concentrate on how to more efficiently convert economic benefits into social benefits.
- Increased financial support and improved education levels can significantly enhance the efficiency of social benefits in the cultural industries. However, China’s urbanization process negatively impacts the efficiency of social benefits in the cultural industries under variable returns to scale and should be given special attention. Since the efficiency of social benefits in the cultural industries will require efforts beyond just input scaling in the near future, attention should be paid to how structural adjustments in the cultural industries can adapt to the urbanization process, and it should not solely focus on economic calculations.
- The output analysis of the social benefits of the cultural industries suggests that the quality of outputs is improving, but there is a lack of further empirical research to substantiate this. China’s cultural industries cover a very broad scope, and studying their social benefits involves multiple outputs. While the DEA model’s advantage is that it does not require predefined weights for inputs and outputs, this could also be a limitation. Future studies should consider pre-assigning weights to data based on industry experts’ opinions, which may better reflect improvements in the quality of cultural industries’ outputs.
- In studies of cultural industries and other vital sectors of the national economy, the relationship between economic and social benefits is delicately balanced, with some aspects aligning and others conflicting. Future research can compare the economic and social benefits of industries to identify their interrelations, which could provide more substantial assistance in policy formulation.
- Due to limitations related to data sources or data availability, the findings of this study may not fully represent the actual scenario of the cultural industries. Readers are advised to interpret the results with caution. Additionally, future research should aim to obtain more comprehensive or updated data to more accurately assess the social and economic impacts of cultural industries. While this study represents the best effort under the current data conditions, a more complete understanding of the cultural industries still relies on broader data support and in-depth analysis.
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Indicator Categories | Indicators |
---|---|
Input indicators | Total Assets |
Total Revenue | |
output indicators | Engaged Persons at Year-end |
Total Tax | |
Per capita wage | |
Production and Transaction of TV Program | |
Production and Transaction of Radio Program | |
Registration of Original Product | |
Granted Patent Applications on cultural industries | |
Number of Visitors to Tourist Attractions | |
Number of Overseas Visitor Arrivals | |
Museum Spectators | |
Spectators of Agencies of Cultural Relics Preservation | |
Domestic Audience Numbers for Art Performance Troupes | |
Attending Art and Cultural Activities |
KMO and Bartlett Sphericity Test | ||
---|---|---|
KMO | 0.762 | |
Bartlett sphericity test | Approximate Chi-square | 2645.646 |
df | 78 | |
p | 0.000 |
Eigen Root | Principal Component Extraction | |||||
---|---|---|---|---|---|---|
Eigen Root | Variance Explained (%) | Cumulative (%) | Eigen Root | Variance Explained (%) | Cumulative (%) | |
1 | 6.292 | 48.401 | 48.401 | 6.292 | 48.401 | 48.401 |
2 | 2.389 | 18.378 | 66.779 | 2.389 | 18.378 | 66.779 |
3 | 1.569 | 12.070 | 78.849 | 1.569 | 12.070 | 78.849 |
4 | 0.795 | 6.118 | 84.967 | - | - | - |
5 | 0.570 | 4.382 | 89.350 | - | - | - |
6 | 0.513 | 3.944 | 93.294 | - | - | - |
7 | 0.300 | 2.308 | 95.602 | - | - | - |
8 | 0.191 | 1.472 | 97.074 | - | - | - |
9 | 0.141 | 1.082 | 98.156 | - | - | - |
10 | 0.090 | 0.694 | 98.850 | - | - | - |
11 | 0.076 | 0.587 | 99.437 | - | - | - |
12 | 0.037 | 0.287 | 99.724 | - | - | - |
13 | 0.036 | 0.276 | 100.000 | - | - | - |
Loading Factor | Commonality (Common Factor Variance) | |||
---|---|---|---|---|
PCA1 | PCA2 | PCA3 | ||
Production and Transaction of TV Program | 0.858 | −0.109 | −0.026 | 0.749 |
Production and Transaction of Radio Program | 0.829 | −0.315 | −0.065 | 0.791 |
Granted Patent Applications on cultural industries | 0.820 | 0.072 | −0.440 | 0.871 |
Number of Visitors to Tourist Attractions | 0.828 | −0.092 | 0.283 | 0.774 |
Number of Overseas Visitor Arrivals | 0.664 | 0.055 | −0.659 | 0.878 |
Museum Spectators | 0.804 | −0.287 | 0.238 | 0.786 |
Spectators of Agencies of Cultural Relics Preservation | 0.559 | −0.017 | 0.622 | 0.699 |
Registration of Original Product | 0.318 | 0.857 | 0.232 | 0.889 |
Attending Art and Cultural Activities | 0.862 | −0.203 | −0.011 | 0.784 |
Domestic Audience Numbers for Art Performance Troupes | 0.368 | −0.341 | 0.497 | 0.499 |
Per capita wage (yuan) | 0.223 | 0.820 | −0.044 | 0.724 |
Engaged Persons at Year-end | 0.910 | 0.029 | −0.262 | 0.897 |
Total Tax | 0.504 | 0.783 | 0.205 | 0.910 |
Indicator Categories | Indicators |
---|---|
Input indicators | Total Assets |
Total Revenue | |
output indicators | PCA1 |
PCA2 | |
PCA3 |
Mean Value of TE | Mean Value of PTE | Mean Value of SE | Number of DRS | Number of IRS | Number of CRS | |
---|---|---|---|---|---|---|
2014 | 0.553187223 | 0.707102526 | 0.772121474 | 25 | 3 | 3 |
2015 | 0.531712378 | 0.701887355 | 0.74713103 | 26 | 2 | 3 |
2016 | 0.534614492 | 0.718353406 | 0.730547073 | 24 | 3 | 4 |
2017 | 0.519257223 | 0.709444514 | 0.722439988 | 26 | 1 | 4 |
2018 | 0.546646427 | 0.762846347 | 0.711974004 | 26 | 1 | 4 |
2019 | 0.56806787 | 0.807803125 | 0.708881076 | 24 | 2 | 5 |
−2 Log-Likelihood Value | Chi-Square Value | df | p | AIC | BIC | |
---|---|---|---|---|---|---|
Intercept Only | 15.597 | |||||
Final Model | −97.964 | 113.561 | 5 | 0.000 | −85.964 | −66.610 |
Regression Coefficient | |
---|---|
Distance | 0.807 ** (6.225) |
Proportion of Urban Population | −0.002 (−0.737) |
Degree of financial support | 0.081 * (2.324) |
Per Capita Gross Regional Product | −0.000 * (−2.159) |
Per Capita Disposable Income | −0.000 ** (−3.842) |
Percentage of persons with tertiary education or above | 0.019 ** (4.728) |
Log (Sigma) | −1.682 ** (−32.447) |
Likelihood Ratio Rest | χ2 (5) = 113.561, p = 0.000 |
McFadden R2 | 7.281 |
Dependent Variable: TE |
−2 Log-Likelihood Value | Chi-Square Value | df | p | AIC | BIC | |
---|---|---|---|---|---|---|
Intercept Only | −124.629 | |||||
Final Model | −198.803 | 74.173 | 5 | 0.000 | −186.803 | −167.448 |
Regression Coefficient | |
---|---|
Distance | 0.970 ** (9.804) |
Proportion of Urban Population | −0.009 ** (−4.507) |
Degree of financial support | 0.093 ** (3.504) |
Per Capita Gross Regional Product | −0.000 ** (−3.128) |
Per Capita Disposable Income | 0.000 ** (2.887) |
Percentage of persons with tertiary education or above | 0.009 ** (2.962) |
Log (Sigma) | −1.953 ** (−37.675) |
Likelihood Ratio Rest | χ2 (5) = 74.173, p = 0.000 |
McFadden R2 | −0.595 |
Dependent Variable: PTE |
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Li, J.; Zhang, R.; Zou, Y. Analyzing the Shift in China’s Cultural Industries: From Economic Growth to Social Enrichment. Sustainability 2024, 16, 4194. https://doi.org/10.3390/su16104194
Li J, Zhang R, Zou Y. Analyzing the Shift in China’s Cultural Industries: From Economic Growth to Social Enrichment. Sustainability. 2024; 16(10):4194. https://doi.org/10.3390/su16104194
Chicago/Turabian StyleLi, Jiayao, Rong Zhang, and Yuntao Zou. 2024. "Analyzing the Shift in China’s Cultural Industries: From Economic Growth to Social Enrichment" Sustainability 16, no. 10: 4194. https://doi.org/10.3390/su16104194
APA StyleLi, J., Zhang, R., & Zou, Y. (2024). Analyzing the Shift in China’s Cultural Industries: From Economic Growth to Social Enrichment. Sustainability, 16(10), 4194. https://doi.org/10.3390/su16104194