A Study on Spatiotemporal Evolution and Influencing Factors of Chinese National Park Network Attention
Abstract
:1. Introduction
2. Data Sources and Research Methods
2.1. Study Area and Data Sources
2.2. Research Methods
2.2.1. Methods of Spatial Evolution Analysis
- (1)
- Prophet time series analysis, a decomposable, open-source model developed by Facebook, breaks down time series into components such as trends, seasonality, and holidays, featuring interpretable parameters. Subsequently, each component is individually fitted to the time series, and their collective contribution is calculated through an additive model. The basic model can be represented as follows:
- (2)
- The Seasonal Concentration Index (SCI) is utilized to depict the temporal concentration of network attention across seasons. A higher SCI value signifies a greater concentration of network attention within a particular season, whereas a lower SCI value signifies a more evenly distributed network attention across seasons. The specific formula is as follows:
- (3)
- The Herfindahl Index (HI) is utilized to measure the degree of temporal and spatial concentration within the regional economic scale. The HI value ranges from 0 to 1, where a value closer to 1 indicates a more concentrated temporal and spatial distribution, while a value closer to 0 indicates a more dispersed distribution. The equation is as follows:
2.2.2. Methods of Spatial and Temporal Evolution Analysis
- (1)
- The Geographic Concentration Index (GCI) is employed to analyze the spatial concentration of network attention. A higher GCI value closer to 100 indicates a more concentrated distribution of network attention among different regions, whereas a lower value indicates a more dispersed distribution. The GCI is calculated as follows:
- (2)
- The Gini coefficient (GC) measures the degree of imbalance in network attention across regions, with a higher GC indicating a larger disparity in network attention between provinces or regions. According to the United Nations, a GC value exceeding 0.4 denotes a significant imbalance. The formula is as follows:
- (3)
- The coefficient of variation (CV) is utilized to reflect the disparity and balance of the regional distribution of network attention. A higher CV value indicates a more substantial spatial difference, whereas a lower CV value indicates a more balanced spatial distribution. The specific formula is as follows:
- (4)
- The Primacy Index (PI) is employed to indicate the regional concentration of network attention. A PI value less than 2 suggests a relatively balanced distribution of network attention, whereas a higher value signifies a more concentrated distribution. The equation of PI is as follows:
- (5)
- Moran’s I is utilized to examine the evolutionary characteristics and correlation of network attention across different spatial units, often divided into global and local spatial autocorrelation Moran’s I indices. The former indicates the overall concentration of network attention across the entire study area, whereas the latter reflects the heterogeneity of network attention distribution in local study areas. The specific calculation formula is as follows:
- (6)
- Spatial Visualization: ArcGIS 10.5 software facilitated the creation of a map highlighting the spatial evolution characteristics of NPNA. Based on the findings, interest breakpoints within each province were categorized, enabling the analysis of the dynamic spatial changes in national park network interest.
2.2.3. Methods of Influencing Factors Analysis
- (1)
- Regression analysis: Network attention serves as a direct behavioral reflection of tourist demand, encompassing both factors and volumes. Economically, besides the influence of tourists themselves, the motivation from the source region’s living environment is significantly associated with tourist demand [21]. Considering the spatiotemporal distribution and evolution of NPNA, relevant indicators from the source regions are identified as influencing factors. A quantitative analysis is performed to assess the impact of each factor on NPNA. Utilizing panel data, this study constructs a multivariate regression model to measure the influence of these factors [44].
- (2)
- Geo-Detector is a statistical method used to explore the spatial differentiation of factors [45]. It is capable of detecting the consistency between the spatial distribution of network attention and influencing factors. It not only reveals the spatial relationships between variables but also identifies key influences and interactions. Tourists’ network attention with national parks is influenced not only by the push factors of their own environment but also by the pull factors of the destination’s attributes. This pull factor reflects the extent to which a destination satisfies tourists’ needs and expectations [22]. Employing the GD package in R 3.4.2 [46], the study optimally discretizes continuous variables for spatial data, utilizing combined network attention data for five specific national parks in 2021. Factor and interaction detection techniques reveal the determinants influencing the spatial distribution of NPNA, with the calculation formula shown as follows:
3. Results and Analysis
3.1. Temporal Evolution Characteristics of NPNA
3.1.1. Time Pattern Characteristics
3.1.2. Time-Periodicity Characteristics
3.2. Spatial Evolution Characteristics of NPNA
3.2.1. Spatial Pattern Characteristics
3.2.2. Spatial Differences Characteristics
3.2.3. Spatial Correlation Characteristics
- (1)
- Global Spatial Autocorrelation Analysis
- (2)
- Local Spatial Autocorrelation Analysis
3.3. Influencing Factors Analysis
3.3.1. Influencing Factors of Tourist Source
3.3.2. Influencing Factors of Destination
4. Discussion
4.1. Temporal Characteristics and Spatial Pattern of NPNA
4.2. Implications for Ecotourism and Management of National Parks
4.3. Research Constraints and Prospective Studies
5. Conclusions
- (1)
- NPNA displays a generally increasing annual trend, with notable cyclical fluctuations peaking around holidays and during spring and autumn, reflecting clear seasonality and precursor effects. It also exhibits volatility due to external events.
- (2)
- The spatial distribution of NPNA is characterized by an unbalanced “high in the east and low in the west” and “high in the south and low in the north” pattern. However, these regional disparities are diminishing, with attention hotspots increasingly spreading to the central and western regions.
- (3)
- The size of the population in the source area is a predominant factor, while the concept of national parks remains underrecognized. Key influencing factors include the destination’s tourism resource endowment, media promotion level, traffic conditions, and information technology level. A synergistic integration of abundant tourism resources and effective media promotion is crucial for enhancing NPNA.
- (4)
- In the mobile internet era, NPNA has emerged as a new indicator of tourism appeal. Accurately understanding the dynamics of attention, optimizing the spatial layout of national parks, enhancing the tourism service system, and intensifying brand promotion and marketing are essential for improving national park governance and advancing ecological civilization.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Year | 2013 | 2014 | 2015 | 2016 | 2017 | 2018 | 2019 | 2020 | 2021 | 2022 |
---|---|---|---|---|---|---|---|---|---|---|
SCI | 0.8656 | 0.9109 | 0.7468 | 0.6776 | 1.7615 | 0.7123 | 1.0612 | 1.8250 | 5.7001 | 1.9043 |
HI | 0.0842 | 0.08433 | 0.0840 | 0.0839 | 0.0871 | 0.0839 | 0.0847 | 0.0873 | 0.1223 | 0.0877 |
Year | Indices | |||
---|---|---|---|---|
GCI | GC | PI | CV | |
2013 | 18.2546 | 0.4207 | 1.3172 | 0.7894 |
2014 | 18.5668 | 0.3995 | 1.1459 | 0.7319 |
2015 | 18.9870 | 0.4331 | 1.1080 | 0.7948 |
2016 | 18.8816 | 0.4259 | 1.1437 | 0.7738 |
2017 | 17.5763 | 0.3227 | 1.1319 | 0.5710 |
2018 | 17.8292 | 0.3220 | 1.1517 | 0.5668 |
2019 | 17.2611 | 0.2757 | 1.0943 | 0.4840 |
2020 | 17.1044 | 0.2612 | 1.0343 | 0.4589 |
2021 | 16.4364 | 0.2387 | 1.1480 | 0.4229 |
2022 | 16.0481 | 0.1860 | 1.0957 | 0.3370 |
Year | 2013 | 2014 | 2015 | 2016 | 2017 | 2018 | 2019 | 2020 | 2021 | 2022 |
---|---|---|---|---|---|---|---|---|---|---|
Global Moran’s I index | −0.065 | −0.069 | −0.070 | −0.067 | −0.088 | −0.096 | −0.097 | −0.096 | −0.097 | −0.111 |
z-score | −1.928 | −2.151 | −2.198 | −2.003 | −3.257 | −3.704 | −3.754 | −3.747 | −3.787 | −4.648 |
p-value | 0.0270 | 0.0160 | 0.0140 | 0.0230 | 0.0010 | 0.0000 | 0.0000 | 0.0000 | 0.0000 | 0.0000 |
Sources of Influencing Factors | Dimension | Specific Indicator | ID | Indicator Explanation | Unit |
---|---|---|---|---|---|
Source region | Economic Conditions | EC | Per Capita GDP | CNY | |
Population Size | PS | Resident Population | 10,000 people | ||
Internet Development Level | IN | Internet Coverage | % | ||
Education Degree | ED | Proportion of People with Tertiary Education | % | ||
Tourism Expenditure | TE | Resident Consumption Expenditure on Communication, Culture, Education, Entertainment, and Medical Care | CNY | ||
Destination | Tourism Resources | Tourism Resources Abundance | X1 | Calculated by assigning value to Region 3A-level Scenic Area | – |
Tourism Service Level | Star-rated Hotels Number | X2 | Total number of hotels above three-star level | units | |
Homestays Number | X3 | Data obtained from where the homestay is | units | ||
Travel Agencies Number | X4 | Total number of travel agencies | units | ||
Transportation Convenience | Cross-city Transportation Carrying Capacity | X5 | Passenger transport volume | 10,000 people | |
Urban Public Transportation Convenience | X6 | Number of public buses per 10,000 people | bus unit | ||
Tourism Development Level | Tourism Economy Contribution | X7 | Total tourism revenue/Regional GDP | % | |
Tourist Reception Scale | X8 | Number of domestic tourist receptions | 10,000 person-times | ||
Environmental Suitability | Green Construction Level | X9 | Green coverage rate of built-up areas | % | |
Environmental Sanitation Level | X10 | Road cleaning and maintenance area | 10,000 square meters | ||
Socio-Economic Development Level | Overall Regional Economic Level | X11 | Per capita GDP | CNY | |
Resident Economic Conditions | X12 | Per capita disposable income of urban residents | CNY | ||
Urban Development Level | X13 | Urbanization rate | % | ||
Tourism Informatization Level | Media Promotion Level | X14 | Baidu News Index | – | |
Regional Informatization Construction Level | X15 | Broadband access users and mobile internet users | 10,000 households |
Factors | EC | PS | IN | ED | TE |
---|---|---|---|---|---|
NPNA | 0.613 ** | 0.673 ** | 0.478 ** | 0.398 * | 0.540 ** |
Variable | Test Statistic | p-Value | Conclusions |
---|---|---|---|
lnNPNA | −4.206 | 0.001 | Stationary |
lnEC | −5.693 | 0.000 | Stationary |
lnPS | −4.793 | 0.000 | Stationary |
lnIN | −5.316 | 0.000 | Stationary |
lnED | −3.589 | 0.006 | Stationary |
lnTE | −3.835 | 0.003 | Stationary |
Indicator | Unstandardized Coefficients | Standardized Coefficients | t-Value | p-Value | Collinearity Statistics | |
---|---|---|---|---|---|---|
B | Standard Error | Beta | VIF | |||
Constant | 0.001 | 4.371 | – | 0.000 | 1.000 | – |
lnEC | 0.150 | 0.271 | 0.099 | 0.553 | 0.585 | 3.625 |
lnPS | 0.468 | 0.078 | 0.707 | 6.028 | 0.000 ** | 1.543 |
lnIN | 0.596 | 0.573 | 0.112 | 1.041 | 0.308 | 1.310 |
lnED | 0.363 | 0.389 | 0.190 | 0.933 | 0.360 | 4.639 |
lnTS | 0.312 | 0.432 | 0.143 | 0.721 | 0.478 | 4.424 |
R2 | 0.777 | |||||
Adj.R2 | 0.733 | |||||
F-value | F = 17.441, p = 0.000 | |||||
D-W value | 2.014 |
Dimension | ID | q-Value | Dimension | ID | q-Value |
---|---|---|---|---|---|
Tourism Resources | X1 | 0.569 * | Environmental Suitability | X9 | 0.538 |
Tourism Service Level | X2 | 0.647 *** | X10 | 0.624 *** | |
X3 | 0.565 * | Socio-Economic Development Level | X11 | 0.567 | |
X4 | 0.789 *** | X12 | 0.527 | ||
Transportation Convenience | X5 | 0.686 ** | X13 | 0.494 | |
X6 | 0.649 *** | Tourism Informatization Level | X14 | 0.926 *** | |
Tourism Development Level | X7 | 0.435 | X15 | 0.771 *** | |
X8 | 0.530 ** |
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Chen, M.; Dong, D.; Ji, F.; Tai, Y.; Li, N.; Huang, R.; Xiao, T. A Study on Spatiotemporal Evolution and Influencing Factors of Chinese National Park Network Attention. Land 2024, 13, 826. https://doi.org/10.3390/land13060826
Chen M, Dong D, Ji F, Tai Y, Li N, Huang R, Xiao T. A Study on Spatiotemporal Evolution and Influencing Factors of Chinese National Park Network Attention. Land. 2024; 13(6):826. https://doi.org/10.3390/land13060826
Chicago/Turabian StyleChen, Mingxin, Dong Dong, Fengquan Ji, Yu Tai, Nan Li, Runyu Huang, and Tieqiao Xiao. 2024. "A Study on Spatiotemporal Evolution and Influencing Factors of Chinese National Park Network Attention" Land 13, no. 6: 826. https://doi.org/10.3390/land13060826
APA StyleChen, M., Dong, D., Ji, F., Tai, Y., Li, N., Huang, R., & Xiao, T. (2024). A Study on Spatiotemporal Evolution and Influencing Factors of Chinese National Park Network Attention. Land, 13(6), 826. https://doi.org/10.3390/land13060826