| Literature DB >> 34354650 |
Baozhen Jiang1, Haojie Zhu2, Jinhua Zhang1, Cheng Yan1, Rui Shen1.
Abstract
In this paper, we regard the Baidu index as an indicator of investors' attention to China's epidemic stocks. We believe that when seeking information to guide investment decisions, investor sentiment is usually affected by the information provided by the Baidu search engine, which may cause stock prices to fluctuate. Therefore, we constructed a GARCH extended model including the Baidu index to predict the return of epidemic stocks and compared it with the benchmark model. The empirical research in this paper finds that the forecast model including the Baidu index is significantly better than the benchmark model. This has important reference value both for investors in predicting stock trends and for the government's formulation of policies to prevent excessive stock market volatility.Entities:
Keywords: Baidu index; epidemic stocks; forecast; google trends; investor sentiment
Year: 2021 PMID: 34354650 PMCID: PMC8329237 DOI: 10.3389/fpsyg.2021.708537
Source DB: PubMed Journal: Front Psychol ISSN: 1664-1078
Statistical description of the main variables.
| Mean | 0.016 | 6.424 | 7.617 | 10.058 | 5.930 |
| Median | 0.096 | 6.417 | 7.617 | 10.041 | 5.872 |
| Maximum | 12.423 | 7.272 | 9.526 | 11.439 | 7.403 |
| Minimum | −19.996 | 5.429 | 6.758 | 9.141 | 4.997 |
| Std. Dev. | 4.129 | 0.325 | 0.475 | 0.486 | 0.438 |
| Skewness | −0.370 | −0.500 | 0.744 | 0.625 | 0.641 |
| Kurtosis | 5.895 | 3.891 | 4.352 | 3.273 | 4.271 |
| Jarque-Bera | 68.468 | 13.739 | 30.971 | 12.536 | 25.008 |
| Probability | 0 | 0.001039 | 0 | 0.001896 | 0.000004 |
| Sum | 2.910 | 1182.072 | 1401.443 | 1850.660 | 1091.151 |
| Sum Sq. Dev. | 3119.236 | 19.308 | 41.262 | 43.163 | 35.151 |
| Observations | 184 | 184 | 184 | 184 | 184 |
Data stationarity test.
| Return | −16.31137 | −16.31657 |
| N95 | −3.686776 | −3.752247 |
| Wuhan | −3.711559 | −3.418142 |
| COVID-19 | −2.856401 | −2.974697 |
| Mask | −3.359155 | −3.365990 |
represent statistical significance at 1, 5, and 10% levels, respectively.
LM test results.
| Breusch-Godfrey Serial Correlation LM Test: | |||
| Null hypothesis: No serial correlation at up to 1 lag | |||
| F-statistic | 3.486551 | Prob. F(1,245) | 0.0631 |
| Obs*R-squared | 3.535849 | Prob. Chi-Square (1) | 0.0601 |
Figure 1MSE of the benchmark and extended models.