Constructing Sports Promotion Models for an Accessibility and Efficiency Analysis of City Governments
Abstract
:1. Introduction
2. Materials and Methods
2.1. Data Collection
- The funds in each administrative district (FUND), including the annual budget for the sports administrative authorities (central government) and the annual budget for the sports bureau (office) in each administrative district. The total budget for the sports administrative authorities of the central government and the local governments was NTD 21,145,764,497 (USD 704,858,817), including NTD 7,771,174,000 (USD 259,039,133) from the central government and NTD 13,374,590,839 (USD 445,819,683) from local governments [27];
- Human resources in sports organizations in each administrative district (HR): In 2015, the central and local government sports authorities hired a total of 1319 people, including 486 regular employees, approximately 310 contractors, and 523 other types of personnel [27];
- Average sports funds per person (AFPP): The average number of sports funds per person in each administrative district, calculated as the total sports funds in each administrative district/total population in each administrative district [27];
- Average exercise frequency per week (AEF): Average exercise times per week for people in each administrative district (unit: times) [28];
- Average exercise time (AET): The total time each person spends exercising in each administrative district (unit: minute) [28];
- Exercise intensity of each exercise session (EIEE): This represents the average number of people (7333) in each administrative district who exercise 3 times per week at 30 min per session, with a heart rate >130 or wheezing and sweating after exercise. The Sports Administration, Ministry of Education, and Republic of China (Taiwan), conducts an annual sports survey in each administrative district and uses a threshold of 7333 as the criteria to define the regular exercise population (unit: %) [28];
- Walking/commute time to sports venues (walk time to sports venue, WTSV): There are significant differences in the transportation methods to the most frequently used sports venues between administrative districts, and the walking time to sports venues is used for all administrative districts. Taipei had the highest proportion (>70%) in 2016, and the walking times in Kinmen County and Lienchiang County were the shortest (unit: minute) [28];
- Host sports activities ratio in each administrative district (HSAR): The proportion of people in each administrative district who think that the administrative district holds sports activities frequently or occasionally. In 2016, the proportion in Lienchiang County (69.5% > 60%) was the highest, while the proportion in Taipei was the lowest proportion (<30%) (unit: %) [28];
- The frequency of receiving sports promotion (FRSP): This is the frequency of people receiving messages related to sports promotion in each administrative district. In 2016, the proportion of people frequently or occasionally receiving messages related to sports promotion in Lienchiang County was the highest (63.7%), while that in Keelung was the lowest (28.0%) (unit: %) [28];
- Satisfaction with sports facilities (SWSF): This reflects the satisfaction of people towards the public sports facilities in each administrative district. In 2016, Kinmen County and Lienchiang County had the highest proportion (>70%) of people who were satisfied with the facilities (unit: %) [28];
- Construction of sports facilities (CSF): This represents the proportion of people in each administrative district who think that there are facilities near to their home. In 2016, Chiayi County, Hualien County, Kinmen County, and Lienchiang County had the highest proportions (>70%) (Unit: %) [28];
- Satisfaction with life (SWL): This represents the people in each administrative district who think that they are happy with life. In 2016, the proportion of people in Lienchiang County who were very happy was 25.5%, while the proportion of people in Yuanlin County who were very happy was low (unit: %) [28];
- Regular exercise population in each administrative district (REP): This represents the proportion of the population who regularly participate in sports in each administrative district. In 2015, using a threshold of 7333 to calculate the regular exercise frequency, the regular exercise population accounted for 33% of the population in Taiwan (unit: %) [28];
- The BMI values for people in each administrative district (BMI): According to the standards of the Ministry of Health and Welfare of Taiwan, for people over 18 years old, BMI values ≥ 27 indicate obesity, 24–27 indicate overweight, 18.5–24 indicates a standard body weight, and values less than 18.5 indicates underweight (unit: %) [28].
2.2. Data Envelopment Analysis
2.3. Network DEA Procedures
2.4. Truncated Regression
3. Results
4. Discussion
4.1. Discussion and Conclusions
4.2. Suggestions for Future Studies
- ‘Sports big data’, ‘data analysis’, and ‘modelling’ should be used to meet the practical needs and the trend of the times so that governments and users can make good use of them [4]. In the future, sports promotion efficiency can be analysed together with the complete health insurance data for Taiwan, including information on medical behaviors, health behaviors, and birth and death data, in order to provide an important reference for constructing a complete information network for the big health industry, which is one of the ultimate goals of this study;
- Sports policy-making and continuous sports promotion are necessary. The Sports Administration, Minister of Education, and Republic of China (Taiwan) [26], for example, have promoted the ‘sunlight fitness promotion plan’ and the ‘sports population doubling plan’ since 1997; furthermore, the six-year project to ‘mould Taiwan into a sports island’ has been promoted since 2010, with the goal of gradually having 33% of the population regularly exercising. From 2016 to 2021, the ‘Taiwan I Sports Program’ was implemented with the hope of shaping a new culture of sports and encouraging the public to actively participate in sports [33,34]. Data analysis has made a significant contribution to the practical perspective of sports management in this study, expanding the channels of sports promotion and enhancing awareness and knowledge regarding people’s participation in sports, training professional human resources, enhancing the efficiency of mass sports promotion, fostering connections between sports venues and daily life and promoting the spirit of sports among the public and at the grassroots level;
- Performance evaluations for sports policy implementation are important [35,36]. The purpose of the ‘mould Taiwan into a sports island’ plan was to increase the percentage of the regularly exercising population to 33% by 2016, although the results of this study show that at least nine administrative districts failed to reach this target. Different data analyses and continuous monitoring could help promote the formulation, promotion, and implementation of long-term sports and health policies;
- Academic research related to the governments’ administrative efficiency is relatively rare in the sports field [6], although it has significant reference value [2,4,22,23]. Long-term and continuous research and promotion require more attention and effort than that which is seen at present. Research and practice can complement each other to increase the sports promotion and policy implementation of the 22 administrative districts of the Taiwanese government, creating a win–win situation that strengthens the nations’ human resources and public health. This study provides information on data science and efficiency management based on the gap between practical needs and academic research, constituting an initial contribution that focuses on the connection between public spending and sports participation at the sports administrative level;
- As for the sports industry [37], setting appropriate input and output indicators, introducing different research methods, and constructing different models for calculation could help meet the unique needs for measuring government efficiency, improving management efficiency and resource allocation across the whole sports industry, and determining the advantages and disadvantages of operations to achieve the best possible outcomes. By strengthening the ‘control’ function of management, implementing efficiency management, and through the effective use of resources, the purpose of this study, which is to apply scientific management techniques and improve sports management, can be achieved;
- The COVID-19 crisis has been a turning point. The Taiwanese government formulated economic development strategies, deployed policies in advance, and used innovative medicine that combines technology and healthcare (the two most powerful industries in Taiwan) to build a strong health industry [24]. Specific implementation policies include promoting digital therapies, accelerating the development of precision medicine, developing epidemic prevention technologies, promoting the healthcare service industry, and exporting intelligent medical systems. These five policies are closely related to the sports promotion approaches examined above and form another significant contribution to this study. After connections between these policies have been established, new competitive advantages in the post-pandemic era could improve digital productivity and produce new lifestyles, a new economy, and new values.
4.3. Limitations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Max | Min | Average | SD | |
---|---|---|---|---|
Funds (NTD) | 8,115,196,905.00 | 35,047,100.00 | 773,998,309.00 | 1,652,252,178.00 |
Average funds (NTD) | 4689.25 | 108.64 | 721.85 | 837.86 |
Human resources (person) | 466.00 | 9.00 | 62.52 | 80.05 |
Average exercise frequency per week (time) | 4.33 | 3.38 | 3.76 | 0.24 |
Average exercise time (minute) | 72.51 | 50.91 | 60.53 | 3.96 |
Exercise intensity (%) | 50.80 | 39.20 | 43.75 | 2.89 |
Walk time to sport venue (minute) | 0.17 | 0.07 | 0.11 | 0.02 |
Max | Min | Average | SD | |
---|---|---|---|---|
Funds (NTD) | 8,115,196,905.00 | 35,047,100.00 | 773,998,309.00 | 1,652,252,178.00 |
Average funds (NTD) | 4689.25 | 108.64 | 721.85 | 837.86 |
Human resources (person) | 466.00 | 9.00 | 62.52 | 80.05 |
Host sports activities ratio (%) | 76.60 | 28.30 | 37.90 | 11.80 |
Frequency of receiving sports promotion (%) | 46.90 | 18.20 | 27.23 | 7.87 |
Satisfaction with sports facilities (%) | 76.37 | 40.20 | 57.27 | 8.05 |
Construction of sports facilities (%) | 73.90 | 43.90 | 59.80 | 6.34 |
Satisfaction with life (%) | 85.50 | 71.56 | 74.79 | 3.44 |
Max | Min | Average | SD | |
---|---|---|---|---|
Sports behavior promotion (efficiency value) | 1 | 0.10 | 0.67 | 0.27 |
Sports information promotion (efficiency value) | 1 | 0.11 | 0.65 | 0.27 |
Regular exercise population (%) | 41.00 | 29.0 | 33.49 | 2.51 |
BMI values (%) | 40.6 | 30.9 | 37.7 | 2.36 |
Rank | 2018 | 2017 | 2016 | 2015 | 2014 | 2013 | 2012 | 2011 | ||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
DMU | Score | DMU | Score | DMU | Score | DMU | Score | DMU | Score | DMU | Score | DMU | Score | DMU | Score | |
1 | TPC | 1.000 | TPC | 1.000 | TPC | 1.000 | NTC | 1.000 | TPC | 1.000 | KOC | 1.000 | TPC | 1.000 | KOC | 1.000 |
2 | TYC | 0.504 | CHCO | 0.468 | NTC | 0.363 | TPC | 1.000 | NTC | 0.832 | TPC | 1.000 | PTCO | 0.865 | PTCO | 0.748 |
3 | TNC | 0.442 | LCCO | 0.462 | TYC | 0.268 | TNC | 0.941 | KLC | 0.607 | NTC | 0.752 | KOC | 0.785 | TPC | 0.697 |
4 | KOC | 0.403 | TYC | 0.447 | TCC | 0.238 | KLC | 0.728 | HCC | 0.594 | PTCO | 0.662 | NTC | 0.647 | TNC | 0.691 |
5 | TCC | 0.343 | TCC | 0.344 | CHCO | 0.199 | KOC | 0.669 | TCC | 0.447 | KLC | 0.388 | TCC | 0.490 | LCCO | 0.653 |
6 | KMCO | 0.281 | PHCO | 0.231 | PTCO | 0.199 | TCC | 0.641 | CHCO | 0.406 | CYC | 0.332 | TYC | 0.458 | NTC | 0.561 |
7 | CHCO | 0.263 | CYCO | 0.204 | KLC | 0.194 | KMCO | 0.628 | KMCO | 0.401 | LCCO | 0.329 | CHCO | 0.451 | ILCO | 0.496 |
8 | KLC | 0.246 | KMCO | 0.190 | KOC | 0.183 | TYC | 0.610 | TYC | 0.367 | MLCO | 0.326 | YLCO | 0.405 | CHCO | 0.484 |
9 | NTC | 0.236 | YLCO | 0.185 | HCC | 0.180 | HCC | 0.551 | HSCO | 0.354 | HSCO | 0.316 | KLC | 0.350 | TCC | 0.479 |
10 | PHCO | 0.222 | NTC | 0.181 | HLCO | 0.163 | CHCO | 0.493 | HLCO | 0.334 | TNC | 0.314 | ILCO | 0.345 | KLC | 0.414 |
11 | HCC | 0.202 | HLCO | 0.176 | TNC | 0.154 | MLCO | 0.429 | MLCO | 0.323 | KMCO | 0.302 | TTCO | 0.332 | TTCO | 0.413 |
12 | CYCO | 0.189 | ILCO | 0.157 | CYCO | 0.129 | HSCO | 0.414 | YLCO | 0.322 | HCC | 0.301 | MLCO | 0.318 | HLCO | 0.368 |
13 | HLCO | 0.169 | KLC | 0.151 | MLCO | 0.128 | CYC | 0.409 | TTCO | 0.321 | TYC | 0.293 | PHCO | 0.276 | YLCO | 0.367 |
14 | CYC | 0.168 | MLCO | 0.151 | HSCO | 0.126 | HLCO | 0.400 | KOC | 0.316 | HLCO | 0.246 | LCCO | 0.268 | TYC | 0.341 |
15 | MLCO | 0.159 | CYC | 0.134 | LCCO | 0.125 | YLCO | 0.357 | CYC | 0.289 | NTCO | 0.245 | HCC | 0.265 | PHCO | 0.340 |
16 | HSCO | 0.148 | KOC | 0.122 | TTCO | 0.121 | ILCO | 0.351 | NTCO | 0.280 | PHCO | 0.244 | HLCO | 0.263 | KMCO | 0.336 |
17 | ILCO | 0.146 | HCC | 0.116 | KMCO | 0.120 | TTCO | 0.334 | TNC | 0.267 | TTCO | 0.236 | KMCO | 0.244 | CYC | 0.299 |
18 | LCCO | 0.142 | TNC | 0.116 | PHCO | 0.119 | LCCO | 0.258 | PHCO | 0.229 | ILCO | 0.230 | NTCO | 0.222 | CYCO | 0.283 |
19 | TTCO | 0.127 | HSCO | 0.113 | CYC | 0.118 | PHCO | 0.246 | PTCO | 0.223 | TCC | 0.210 | CYC | 0.220 | HSCO | 0.279 |
20 | PTCO | 0.120 | TTCO | 0.103 | YLCO | 0.116 | NTCO | 0.238 | CYCO | 0.204 | CHCO | 0.204 | TNC | 0.212 | NTCO | 0.273 |
21 | NTCO | 0.115 | PTCO | 0.100 | NTCO | 0.114 | PTCO | 0.233 | ILCO | 0.202 | YLCO | 0.193 | HSCO | 0.212 | MLCO | 0.260 |
22 | YLCO | 0.103 | NTCO | 0.098 | ILCO | 0.113 | CYCO | 0.226 | LCCO | 0.196 | CYCO | 0.187 | CYCO | 0.196 | HCC | 0.242 |
Variable | Coefficient | SD | t Value |
---|---|---|---|
Constant | −0.83 | 0.48 | −1.72 |
Funds | 0.01 *** | 0.00 | 4.99 |
Human resources | 0.00 | 0.00 | 1.66 |
Average funds | 0.00 | 0.00 | 0.06 |
Average exercise frequency per week | 0.04 | 0.07 | 0.56 |
Average exercise time | 0.00 | 0.00 | −0.83 |
Exercise intensity | 0.01 | 0.00 | 1.19 |
Host sports activities ratio | 0.00 | 0.00 | 0.59 |
Frequency of receiving sports promotion | 0.00 | 0.00 | 1.29 |
Satisfaction with sports facilities | 0.00 | 0.00 | −1.43 |
Construction of sports facilities | 0.00 | 0.00 | −0.05 |
Satisfaction with life index | 0.01 ** | 0.00 | 2.07 |
Walk time to sport venue | −0.53 | 1.18 | −0.45 |
Regular exercise population | 0.00 | 0.01 | −0.42 |
BMI | 12.03 ** | 5.27 | 2.28 |
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Chen, M.-J.; Lin, W.-B.; Yeh, S.-W.; Chen, M.-Y. Constructing Sports Promotion Models for an Accessibility and Efficiency Analysis of City Governments. Sustainability 2021, 13, 9390. https://doi.org/10.3390/su13169390
Chen M-J, Lin W-B, Yeh S-W, Chen M-Y. Constructing Sports Promotion Models for an Accessibility and Efficiency Analysis of City Governments. Sustainability. 2021; 13(16):9390. https://doi.org/10.3390/su13169390
Chicago/Turabian StyleChen, Mei-Jung, Wen-Bin Lin, Shao-Wei Yeh, and Mei-Yen Chen. 2021. "Constructing Sports Promotion Models for an Accessibility and Efficiency Analysis of City Governments" Sustainability 13, no. 16: 9390. https://doi.org/10.3390/su13169390
APA StyleChen, M. -J., Lin, W. -B., Yeh, S. -W., & Chen, M. -Y. (2021). Constructing Sports Promotion Models for an Accessibility and Efficiency Analysis of City Governments. Sustainability, 13(16), 9390. https://doi.org/10.3390/su13169390