Twitter and stock returns
Master thesis
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Date
2014-02-19Metadata
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- Master of Science [1622]
Abstract
In this thesis, we investigate whether the sentiment of tweets mentioning stock
tickers can be used to predict stock performance. In particular we test for leading
and lagged relationships between the percentage of positive and/or negative
tweets and the returns of the S&P 500 index. We obtain a longitudinal data set of
all tweets mentioning stock tickers over a four-month period amounting to
2,599,277 tweets distributed over 84 trading days. We use daily measures for
positive and negative sentiment to generate our explanatory variables. Our results
indicate that an increase in the percentage of positive tweets predicts increased
stock performance the following day whereas an increase in the percentage of
emotional tweets predicts a reduction in stock returns after two and three days. An
increase in the percentage of negative tweets may predict a reduction in stock
returns.
Description
Masteroppgave(MSc) in Master of Science in Business, Finance - Handelshøyskolen BI, 2014