Spillover Effect of Network Public Opinion on Market Prices of Small-Scale Agricultural Products
Abstract
:1. Introduction
2. Literature Review
3. Theoretical Analysis and Model Construction
4. Data Acquisition and Model Construction
4.1. Data Acquisition
4.1.1. Price Data of Small-Scale Agricultural Products
4.1.2. Network Public Opinion Data Acquisition and Network Opinion Value Construction
4.2. Model Construction
4.2.1. ADF Unit Root Test
4.2.2. VAR-BEKK-GARCH Model
4.2.3. Spillover Index Model
5. Empirical Results
5.1. The Spillover Effect of Network Public Opinion on the Price Fluctuation of Small-Scale Agricultural Products
5.2. The Spillover Index of Network Public Opinion on the Price Fluctuation of Small-Scale Agricultural Products
5.2.1. Analysis of Total Spillover Index
5.2.2. Analysis of Directional Spillover Index
6. Conclusions and Implications
- (1)
- There is a volatility spillover effect between network public opinion and the market prices of small-scale agricultural products. (a) Network public opinion has short-term spillover effects on the average prices of small agricultural products and long-term sustained spillover effects on the origin prices of small-scale agricultural products. (b) The origin prices of small-scale agricultural products have significant spillover effects on network public opinion, among which the average price of pepper has a significant spillover effect on network public opinion, but the average prices of garlic and scallion do not have significant spillover effects on network public opinion. (c) There is a significant two-way volatility spillover effect between the average prices and origin prices of small-scale agricultural products.
- (2)
- The network public opinion has a strong spillover index on the price fluctuation of small-scale agricultural products. (a) From the perspective of the total spillover index of network public opinion and the market prices of small-scale agricultural products, it fluctuates around 45%, showing a strong spillover effect among the national average market and the market of origin. (b) In terms of the strength of the spillover index, the average spillover index of the effect of network public opinion on the market prices of garlic is greater than that of chili peppers, which in turn is greater than that of scallions. Additionally, the average spillover index for the effect of network public opinion on the origin price of small-scale agricultural products is greater than that on the national average price. (c) The spillover effect of network public opinion on the origin price of small-scale agricultural products occurs earlier than that on the national average price.
- (1)
- Guiding small-scale agricultural product planting and inventory strategies according to changes in network public opinion. When the emotional attitude of network public opinion changes, intermediaries and farmers should adjust their decision making on pricing behavior and planting behavior based on the specific market conditions. Specifically, when there are more positive emotions in network public opinion and the market price is low, indicating that the market sentiment is good, intermediaries can appropriately raise the price of small agricultural products, and farmers can consider increasing the planting area. When the market price has already been high, farmers should consider reducing the planting area appropriately. Similarly, when the emotional attitude of network public opinion tends to be negative, farmers should reduce the planting area appropriately.
- (2)
- Relevant government departments should pay more attention to the phenomenon of price risk transmission in small-scale agricultural products so as to establish a more complete early warning system for price risks in small-scale agricultural products. This mainly includes monitoring market data and analyzing price fluctuation patterns, network public opinion dynamics, and the trend of price fluctuations in relevant small-scale agricultural product markets. By observing timely and accurately the possible risks that may arise in the market, regulatory authorities can take corresponding measures to stabilize the prices of small-scale agricultural products and ensure the healthy development and operation of the agricultural product market.
- (3)
- Improving the comprehensive information platform for the whole industrial chain of small agricultural products. A comprehensive information platform for the entire industrial chain should be developed to integrate and manage relevant information such as industry trends, market conditions, and natural disaster forecasts in production and market circulation. The collected data should be published publicly to reduce information gaps among stakeholders in the supply chain.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Year | 2021 | 2020 | 2019 | 2018 | 2017 | 2016 | 2015 | 2014 |
---|---|---|---|---|---|---|---|---|
Positive | 287 | 707 | 598 | 304 | 655 | 661 | 413 | 749 |
Negative | 224 | 243 | 210 | 149 | 258 | 179 | 154 | 185 |
Total | 611 | 950 | 808 | 453 | 913 | 4840 | 567 | 934 |
Variables | Description of Variables | t-Statistic | Conclusion |
---|---|---|---|
N | Network public opinion | −5.9839 *** | Stationary |
ADS | National average price of garlic | −6.4759 *** | Stationary |
ODS | Origin price of garlic | −6.39.3 *** | Stationary |
ADC | National average price of scallion | −4.7362 *** | Stationary |
ODC | Origin price of scallion | −4.9242 *** | Stationary |
ALJ | National average price of pepper | −5.1348 *** | Stationary |
OLJ | Origin price of pepper | −4.9373 *** | Stationary |
Variables | Garlic Market | Scallion Market | Pepper Market | |||
---|---|---|---|---|---|---|
Coefficient | t-Statistic | Coefficient | t-Statistic | Coefficient | t-Statistic | |
0.3445 *** | 4.8569 | 0.2329 *** | 2.6625 | 0.2329 *** | −2.4004 | |
0.0044 | 0.4045 | 0.0351 ** | 2.0562 | 0.0351 ** | −0.2655 | |
0.038 *** | 5.3522 | 0.0000 | −0.0004 | 0.0000 | 2.9743 | |
0.0126 | 0.4679 | 0.0979 *** | 3.2801 | 0.0979 *** | 0.2784 | |
0.0602 *** | 2.5919 | 0.0000 | −0.0004 | 0.0000 | 1.4843 | |
0.000 | 0.0000 | 0.0000 | 0.0000 | 0.0000 | 0.0001 | |
0.8395 *** | 4.4362 | 0.5973 *** | 4.4602 | 0.5973 *** | 2.3762 | |
0.0287 ** | 2.1524 | −0.0495 ** | −2.0521 | −0.0495 ** | −1.9993 | |
0.0462 *** | 1.2059 | −0.0681 * | −1.6783 | −0.0681 * | −2.7797 | |
1.3803 | 1.5192 | −1.1474 | −1.4756 | −1.1474 | 3.0045 | |
0.0665 | 0.5166 | 0.761 *** | 3.9906 | 0.761 *** | 5.4086 | |
−1.0696 *** | −2.8137 | 1.4201 *** | 4.0408 | 1.4201 *** | 5.7430 | |
−0.6669 ** | −2.2406 | 0.8961 * | 1.7953 | 0.8961 * | −2.1559 | |
0.2109 *** | 4.6834 | −0.0195 | −0.1924 | −0.0195 * | −0.4768 | |
0.3697 *** | 4.0820 | −0.2228 | −1.2383 | −0.2228 | −3.1446 | |
0.1916 | 1.1319 | 0.4601 *** | 3.1829 | 0.4601 *** | 14.6167 | |
0.0220 | 1.1258 | 0.0460 | 1.5447 | 0.0460 | −0.6780 | |
−0.0537 ** | −0.9548 | 0.1369 ** | 2.5734 | 0.1369 ** | −0.8669 | |
−2.0640 | −0.9129 | −3.7955 * | −3.4512 | −3.7955 *** | −1.1138 | |
−0.3949 * | −1.7455 | 0.9442 *** | 4.0311 | 0.9442 *** | 1.8775 | |
−2.2365 *** | −2.8675 | 1.7807 *** | 3.6810 | 1.7807 *** | −2.4292 | |
1.6802 * | 3.2539 | 1.1494 *** | 1.7349 | 1.1494 * | 1.3200 | |
0.1026 * | 1.7442 | −0.6415 *** | −5.4016 | −0.6415 *** | 1.3976 | |
0.8808 *** | 5.7783 | −0.6718 ** | −2.5165 | −0.6718 ** | 13.4681 |
Null Hypothesis | Garlic Market | Scallion Market | Pepper Market |
---|---|---|---|
No volatility spillover effect of network public opinion on the average prices of small-scale agricultural products | 5.5600 * | 7.9651 ** | 4.6097 * |
No volatility spillover effect of network public opinion on the origin prices of small-scale agricultural products | 14.0205 *** | 9.0352 ** | 9.0700 ** |
No volatility spillover effect of small-scale agricultural product average prices on network public opinion | 2.5101 | 4.4198 | 9.2896 *** |
No volatility spillover effect of small-scale agricultural product origin prices on network public opinion | 9.9951 ** | 12.0241 *** | 8.8021 ** |
No volatility spillover effect of small-scale agricultural product average prices on the origin prices | 26.4267 *** | 24.8695 *** | 21.0635 *** |
No volatility spillover effect of small-scale agricultural product origin prices on the average prices | 25.2285 *** | 29.5233 *** | 18.2370 *** |
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Lv, X.; Lin, W.; Meng, J.; Mo, L. Spillover Effect of Network Public Opinion on Market Prices of Small-Scale Agricultural Products. Mathematics 2024, 12, 539. https://doi.org/10.3390/math12040539
Lv X, Lin W, Meng J, Mo L. Spillover Effect of Network Public Opinion on Market Prices of Small-Scale Agricultural Products. Mathematics. 2024; 12(4):539. https://doi.org/10.3390/math12040539
Chicago/Turabian StyleLv, Xingchen, Weijun Lin, Jun Meng, and Linan Mo. 2024. "Spillover Effect of Network Public Opinion on Market Prices of Small-Scale Agricultural Products" Mathematics 12, no. 4: 539. https://doi.org/10.3390/math12040539
APA StyleLv, X., Lin, W., Meng, J., & Mo, L. (2024). Spillover Effect of Network Public Opinion on Market Prices of Small-Scale Agricultural Products. Mathematics, 12(4), 539. https://doi.org/10.3390/math12040539