Machine Learning Sentiment Analysis, Covid-19 News and Stock Market Reactions
Date
2020-09-15
Author
Costola, Michele
Nofer, Michael
Hinz, Oliver
Pelizzon, Loriana
SAFE No.
288
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Abstract
The possibility to investigate the impact of news on stock prices has observed a strong evolution thanks to the recent use of natural language processing (NLP) in finance and economics. In this paper, we investigate COVID-19 news, elaborated with the ”Natural Language Toolkit” that uses machine learning models to extract the news’ sentiment. We consider the period from January till June 2020 and analyze 203,886 online articles that deal with the pandemic and that were published on three platforms: MarketWatch.com, Reuters.com and NYtimes.com. Our findings show that there is a significant and positive relationship between sentiment score and market returns. This result indicates that an increase (decrease) in the sentiment score implies a rise in positive (negative) news and corresponds to positive (negative) market returns. We also find that the variance of the sentiments and the volume of the news sources for Reuters and MarketWatch, respectively, are negatively associated to market returns indicating that an increase of the uncertainty of the sentiment and an increase in the arrival of news have an adverse impact on the stock market.
Research Area
Financial Markets
Keywords
covid-19 news, sentiment analysis, stock markets
JEL Classification
G10, G14, G15
Research Data
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Publication Type
Working Paper
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- LIF-SAFE Working Papers [334]