Evaluation of Self-Development Ability and Study of Its Obstacle Factors for State-Owned Forest Farms: Applying the SEM–PPM
Abstract
:1. Introduction
2. Index System Construction
3. Methodology and Data
3.1. Standardized Treatment
3.2. Determination of Index Weight: SEM
3.3. Comprehensive Evaluation: PPM
3.4. Diagnostic Factors: Obstacle Degree Model
3.5. Data
4. Results
4.1. Comprehensive Evaluation of Self-Development Ability of SOFFs
4.1.1. Self-Development Ability of SOFFs for Each Province
4.1.2. Self-Development Abilities of SOFFs with Different Subordination Relationships
4.2. Obstacle Degree Regarding Self-Development Abilities of SOFFs
4.2.1. Obstacle Degrees in Each Province
4.2.2. Obstacle Degrees at Different Development Levels
4.2.3. Obstacle Degrees with Different Subordination Relationships
5. Discussion
5.1. Relationship between Self-Development Ability of SOFFs and Positive Externalities of Forestry Production
5.2. Government Support Has Limited Impact on the Development of SOFFs
5.3. Sample Limitations of the Research
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Type | Details | |
---|---|---|
The concept | The development ability derived internally [1] | |
The composition | Public libraries | The abilities for innovative development, main factor aggregation, resource utilization, coordinated development, and public influence [1] |
Farmers’ cooperatives | Chairman ability and abilities for financing, technical innovation, and marketing [2] | |
Tobacco and farmer cooperatives | The dependence on the tobacco sector, profitability, and member benefits [3] | |
Modern agricultural demonstration parks | The scientific and technological support ability, demonstration driving ability, hardware investment, economic development ability, and sustainable development ability [4] | |
New energy industries | The resource endowment, institutional environment, technical talents, market development, and economic costs [5] | |
Cultural industries | The productivity, driving forces, and influences [6] | |
Big data industries | The basic development ability, industrial development support ability, system coordination and integration ability, overall level of informatization and information industry, information infrastructure support ability, science and technology, and talents [7] | |
“Internet + agriculture” | Society, the economy, resources, and the environment [8] | |
“Internet + agricultural products and its processed products industry” | The degrees of development, continuity, and coordination [8] | |
“Internet + agricultural products and its processed products services” | The indices of overall strength, internal structure, and development matching [8] | |
Small and micro-enterprises | The leadership ability, innovation income, financing ability, enterprise culture, and product development [9] | |
The state-owned enterprise of Xinjiang corps | The capability for resource utilization, operation and management, profitability, and innovation [10] | |
The evaluation method | Weighted averages [9], principal component analysis [10], the combined multivariate statistical method of global principal component analysis [6], the analytic hierarchy process [5], the fuzzy analytic hierarchy process [4], the DEMATEL and system simulation method [11], and the BP neural network evaluation model based on entropy weights [7] | |
The influencing factors | Enterprise factors and management ability [12] |
Dimension | Sub-Dimensions | Index | Index Explanation |
---|---|---|---|
Factor gathering ability (A1) | Forest resources (B1) | Unit stock volume (C1) [18,19,20,21,22] | Forest stock per unit area (m3/ha). The higher the index, the better the quality of the forest. |
Forest coverage rate (C2) [18,19,20,21,22] | Forest area as proportion of total operating area (%). The higher the index, the more forests there are. | ||
Non-public welfare forest area proportion (C3) [18,19] | Non-national or non-local public welfare forest as proportion of total operating area (%). The higher the index, the greater the available range of forest resources. | ||
Hardware construction (B2) | Production and office housing (C4) [18,19] | Proportion of area in the production office accords with the national construction standard (%). The higher the index, the better the operating conditions. | |
Network coverage (C5) [18,21] | Access to the Internet (The value is 0 or 1. 0 means No; 1 means Yes). The index is 1, the better the operating conditions are. | ||
Traffic accessibility (C6) [18,19,20] | Constructed length of highway and grade of highway in forest per unit area (km/ha). The higher the index, the better the operating conditions. | ||
Forest road density (C7) [21] | Forest road length as proportion of total operating area (km/ha). The higher the index, the better the operating conditions. | ||
Transportation facilities (C8) [19] | Whether equipped with forest traffic facilities, such as patrol cars and fire trucks (The value is 0 or 1. 0 means No; 1 means Yes). The index is 1, the better the operating conditions are. | ||
Innovation ability (B3) | Proportion of senior high school (including technical secondary school) and above graduates (C9) [19,20] | Senior high school (including technical secondary school) and above graduates as proportion of on-the-job workers (%). The higher the index, the higher the level of cultural quality of workers. | |
Proportion of senior, intermediate professional, and technical personnel (C10) [20] | Senior, intermediate professional, and technical personnel as proportion of on-the-job workers (%). The higher the index, the higher the skill level. | ||
Resource utilization ability (A2) | Management ability (B4) | Per capita operating income (C11) [19,21,22] | Average annual operating income per person (yuan per person per year). The higher the index, the higher the level of operation. |
Proportion of asset expenditure of forest farms (C12) [18] | Proportion of expenditure for infrastructure construction and forest production expenditure in total income (%). The higher the index, the higher the level of operation. | ||
Profitability (B5) | Operating income proportion (C13) [19,20] | Operating income as proportion of total income (%). The higher the index, the higher the level of economic development. | |
Profit levels (C14) [19,21] | Total net profit (ten thousand yuan). The higher the index, the higher the level of economic development. | ||
Asset–liability ratio (C15) [18,19,20,21,22] | Total liabilities as proportion of total assets (%). This index is a moderate index. In a certain range, the higher the index is, the stronger the development ability will be. If the index exceeds this range, it will be the opposite. | ||
Public service ability (A3) | People’s livelihood security (B6) | Employee income ratio (C16) [22] | Average annual income of forest farm workers as proportion of that of staff members in public institutions (%). The higher the index, the higher the self-actualization value of workers. |
Social security (C17) [19,20,21,22] | Circumstances in which forest farm worker attends “five insurances and housing fund” (The value is 0 or 1. 0 means No; 1 means Yes). The index is 1, the more employees feel safe and stable. | ||
Worker housing (C18) [21] | Proportion of worker housing that accords with national construction standards for worker housing (%). The higher the index, the higher the living standard of the workers. | ||
Social services (B7) | Construction of forest parks at all levels (C19) [21] | Whether there are national or provincial forest parks (The value is 0 or 1. 0 means No; 1 means Yes). The index is 1, the higher the contribution to society. | |
Construction of various educational and cultural bases (C20) [21,22] | Whether there are educational bases or cultural sites (The value is 0 or 1. 0 means No; 1 means Yes). The index is 1, the more conducive it is to the propaganda and education of forest culture, the higher its contribution to society. | ||
Construction of scenic spots or geoparks (C21) [21] | Whether located in a scenic area or built geopark (The value is 0 or 1. 0 means No; 1 means Yes). The index is 1, the higher the contribution to society. |
Area | Province | Area (km2) | Sample Size | Proportion (%) | Area | Province | Area (km2) | Sample Size | Proportion (%) |
---|---|---|---|---|---|---|---|---|---|
Southern collective forest area | Zhejiang | 102,000 | 11 | 0.84 | northeast state-owned forest area | Heilongjiang | 473,000 | 17 | 1.30 |
Fujian | 121,300 | 82 | 6.28 | Jilin | 187,400 | 336 | 25.75 | ||
Jiangxi | 167,000 | 13 | 1.00 | Liaoning | 145,900 | 179 | 13.72 | ||
Hubei | 185,900 | 221 | 16.93 | central area | Henan | 167,000 | 24 | 1.84 | |
Hunan | 211,800 | 7 | 0.54 | Shandong | 153,800 | 115 | 8.81 | ||
Guangxi | 236,000 | 126 | 9.66 | Shanxi | 156,300 | 11 | 0.84 | ||
Guizhou | 176,000 | 105 | 8.05 | northwest little forest area | Ningxia | 66,400 | 14 | 1.07 | |
Hainan | 34,000 | 23 | 1.76 | Xinjiang | 1,660,000 | 21 | 1.61 | ||
Total | 4,243,800 | 1305 | 100 |
Dimension | Sub-Dimension | Sub-Dimensional Projection Direction | Index | Index Weight |
---|---|---|---|---|
A1 | B1 | 0.265 | C1 | 0.190 |
C2 | 0.357 | |||
C3 | 0.453 | |||
B2 | 0.206 | C5 | 0.352 | |
C7 | 0.306 | |||
C8 | 0.342 | |||
B3 | 0.024 | C9 | 0.691 | |
C10 | 0.309 | |||
A2 | B4 | 0.189 | C11 | 0.802 |
C12 | 0.198 | |||
B5 | 0.019 | C13 | 0.549 | |
C14 | 0.225 | |||
C15 | 0.226 | |||
A3 | B6 | 0.647 | C16 | 0.463 |
C17 | 0.537 | |||
B7 | 0.658 | C19 | 0.573 | |
C20 | 0.249 | |||
C21 | 0.179 |
Subordination Relationship | Number | Projection Value | Variance Test |
---|---|---|---|
Provincial Management | 45 | 0.946 | F = 70.32 p = 0.000 |
Municipal management | 171 | 1.017 | |
County Management | 1089 | 0.755 |
Province | Ability Ranking | Obstacle Factor (from Large to Small) | ||||||
---|---|---|---|---|---|---|---|---|
1 | 2 | 3 | 4 | 5 | 6 | 7 | ||
Fujian | 1 | B7 (32%) | B6 (27%) | B4 (19%) | B1 (12%) | B2 (8%) | B5 (2%) | B3 (1%) |
Xinjiang | 2 | B7 (31%) | B6 (22%) | B4 (18%) | B1 (17%) | B2 (8%) | B5 (2%) | B3 (1%) |
Guizhou | 3 | B7 (37%) | B6 (21%) | B4 (18%) | B1 (13%) | B2 (8%) | B5 (2%) | B3 (1%) |
Shandong | 4 | B7 (32%) | B6 (24%) | B4 (17%) | B1 (16%) | B2 (9%) | B5 (2%) | B3 (1%) |
Zhejiang | 5 | B7 (35%) | B6 (24%) | B4 (16%) | B1 (14%) | B2 (8%) | B5 (2%) | B3 (1%) |
Shanxi | 6 | B7 (40%) | B1 (18%) | B6 (17%) | B4 (16%) | B2 (6%) | B5 (2%) | B3 (1%) |
Hunan | 7 | B7 (39%) | B6 (25%) | B4 (16%) | B1 (11%) | B2 (8%) | B5 (1%) | B3 (1%) |
Hubei | 8 | B7 (39%) | B6 (23%) | B4 (15%) | B1 (13%) | B2 (8%) | B5 (1%) | B3 (1%) |
Guangxi | 9 | B7 (45%) | B6 (22%) | B4 (14%) | B1 (10%) | B2 (7%) | B5 (1%) | B3 (1%) |
Henan | 10 | B7 (36%) | B6 (25%) | B4 (16%) | B1 (14%) | B2 (7%) | B5 (1%) | B3 (1%) |
Hainan | 11 | B7 (46%) | B6 (21%) | B4 (15%) | B1 (11%) | B2 (5%) | B5 (1%) | B3 (1%) |
Liaoning | 12 | B7 (44%) | B6 (23%) | B4 (14%) | B1 (11%) | B2 (6%) | B5 (1%) | B3 (1%) |
Heilongjiang | 13 | B7 (42%) | B6 (22%) | B4 (14%) | B1 (13%) | B2 (6%) | B5 (1%) | B3 (1%) |
Jiangxi | 14 | B7 (43%) | B6 (23%) | B4 (15%) | B1 (10%) | B2 (7%) | B5 (1%) | B3 (1%) |
Ningxia | 15 | B7 (50%) | B1 (16%) | B6 (14%) | B4 (13%) | B2 (5%) | B5 (1%) | B3 (0%) |
Jilin | 16 | B7 (44%) | B6 (26%) | B4 (13%) | B1 (10%) | B2 (5%) | B5 (1%) | B3 (1%) |
Group | Number | Obstacle Factor (from Large to Small) | ||||||
---|---|---|---|---|---|---|---|---|
1 | 2 | 3 | 4 | 5 | 6 | 7 | ||
Group 1 (1.1936–1.5851) | 154 | B6 (27%) | B4 (23%) | B7 (21%) | B1 (16%) | B2 (10%) | B5 (2%) | B3 (1%) |
Group 2 (0.9735–1.1936) | 232 | B7 (30%) | B6 (24%) | B4 (19%) | B1 (16%) | B2 (8%) | B5 (2%) | B3 (1%) |
Group 3 (0.7880–0.9735) | 119 | B7 (47%) | B6 (21%) | B4 (14%) | B1 (10%) | B2 (6%) | B5 (1%) | B3 (1%) |
Group 4 (0.6743–0.7880) | 446 | B7 (50%) | B6 (19%) | B4 (13%) | B1 (11%) | B2 (5%) | B5 (1%) | B3 (1%) |
Group 5 (0.4647–0.6743) | 154 | B7 (46%) | B6 (19%) | B4 (13%) | B1 (12%) | B2 (8%) | B5 (1%) | B3 (1%) |
Group 6 (0–0.4647) | 200 | B7 (39%) | B6 (35%) | B4 (10%) | B1 (9%) | B2 (6%) | B5 (1%) | B3 (1%) |
Subordination Relationship | Obstacle Factor (from Large to Small) | ||||||
---|---|---|---|---|---|---|---|
1 | 2 | 3 | 4 | 5 | 6 | 7 | |
Provincial management | B7 (35%) | B6 (25%) | B4 (18%) | B1 (13%) | B2 (7%) | B5 (2%) | B3 (1%) |
Municipal management | B7 (40%) | B6 (23%) | B4 (16%) | B1 (12%) | B2 (7%) | B5 (1%) | B3 (1%) |
County management | B7 (42%) | B6 (23%) | B4 (15%) | B1 (12%) | B2 (7%) | B5 (1%) | B3 (1%) |
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Bai, J.; Tan, P.; Chen, W.; Liu, J. Evaluation of Self-Development Ability and Study of Its Obstacle Factors for State-Owned Forest Farms: Applying the SEM–PPM. Sustainability 2021, 13, 3119. https://doi.org/10.3390/su13063119
Bai J, Tan P, Chen W, Liu J. Evaluation of Self-Development Ability and Study of Its Obstacle Factors for State-Owned Forest Farms: Applying the SEM–PPM. Sustainability. 2021; 13(6):3119. https://doi.org/10.3390/su13063119
Chicago/Turabian StyleBai, Jiangdi, Pan Tan, Wenhui Chen, and Junchang Liu. 2021. "Evaluation of Self-Development Ability and Study of Its Obstacle Factors for State-Owned Forest Farms: Applying the SEM–PPM" Sustainability 13, no. 6: 3119. https://doi.org/10.3390/su13063119
APA StyleBai, J., Tan, P., Chen, W., & Liu, J. (2021). Evaluation of Self-Development Ability and Study of Its Obstacle Factors for State-Owned Forest Farms: Applying the SEM–PPM. Sustainability, 13(6), 3119. https://doi.org/10.3390/su13063119