Granger causality analysis between twitter sentiment and daily stock returns
Textual data potentially carries information not found in quantitative data but is equally invaluable for financial analyses. This paper utilises sentiment analysis to examine the predictive value that Twitter posts (tweets) have on US equity returns. We assess the sentiment of tweets that mention s...
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sg-ntu-dr.10356-1384902020-05-06T12:22:35Z Granger causality analysis between twitter sentiment and daily stock returns Huang, Jun Xiang Lim, Aaron Yue Feng Quek, JunFeng Wu Guiying Laura School of Social Sciences guiying.wu@ntu.edu.sg Social sciences::Economic development Textual data potentially carries information not found in quantitative data but is equally invaluable for financial analyses. This paper utilises sentiment analysis to examine the predictive value that Twitter posts (tweets) have on US equity returns. We assess the sentiment of tweets that mention specific firms by counting their use of positive and negative words as categorised in predefined word lists. Granger causality analysis was then conducted on 517 NASDAQ-100 and S&P 500 constituents by modelling a Panel Vector Autoregression process. We found that the market overreacts to both positive and negative tweets on the first trading day, but slightly corrects the shock by the second trading day. These findings are robust to different definitions of excess returns, and the use of different word lists for sentiment analysis. This suggests that Twitter sentiment does provide information useful for forecasting stock returns, albeit only for the short-term. Bachelor of Arts in Economics 2020-05-06T12:21:40Z 2020-05-06T12:21:40Z 2020 Final Year Project (FYP) https://hdl.handle.net/10356/138490 en HE_1AY1920_10 application/pdf Nanyang Technological University |
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Social sciences::Economic development Huang, Jun Xiang Lim, Aaron Yue Feng Quek, JunFeng Granger causality analysis between twitter sentiment and daily stock returns |
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Textual data potentially carries information not found in quantitative data but is equally invaluable for financial analyses. This paper utilises sentiment analysis to examine the predictive value that Twitter posts (tweets) have on US equity returns. We assess the sentiment of tweets that mention specific firms by counting their use of positive and negative words as categorised in predefined word lists. Granger causality analysis was then conducted on 517 NASDAQ-100 and S&P 500 constituents by modelling a Panel Vector Autoregression process. We found that the market overreacts to both positive and negative tweets on the first trading day, but slightly corrects the shock by the second trading day. These findings are robust to different definitions of excess returns, and the use of different word lists for sentiment analysis. This suggests that Twitter sentiment does provide information useful for forecasting stock returns, albeit only for the short-term. |
author2 |
Wu Guiying Laura |
author_facet |
Wu Guiying Laura Huang, Jun Xiang Lim, Aaron Yue Feng Quek, JunFeng |
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Final Year Project |
author |
Huang, Jun Xiang Lim, Aaron Yue Feng Quek, JunFeng |
author_sort |
Huang, Jun Xiang |
title |
Granger causality analysis between twitter sentiment and daily stock returns |
title_short |
Granger causality analysis between twitter sentiment and daily stock returns |
title_full |
Granger causality analysis between twitter sentiment and daily stock returns |
title_fullStr |
Granger causality analysis between twitter sentiment and daily stock returns |
title_full_unstemmed |
Granger causality analysis between twitter sentiment and daily stock returns |
title_sort |
granger causality analysis between twitter sentiment and daily stock returns |
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Nanyang Technological University |
publishDate |
2020 |
url |
https://hdl.handle.net/10356/138490 |
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1681058507925749760 |