Twitter mood predicts the stock market
Johan Bollen, Huina Mao, Xiao-Jun Zeng

TL;DR
This study demonstrates that analyzing collective mood states from Twitter data can significantly improve the prediction of stock market movements, achieving high accuracy and reduced error in forecasting DJIA changes.
Contribution
It introduces a novel approach using large-scale Twitter mood analysis to predict stock market fluctuations, combining multiple mood measurement tools and advanced predictive models.
Findings
Public mood dimensions improve DJIA prediction accuracy
Achieved 87.6% accuracy in daily market direction prediction
Reduced Mean Average Percentage Error by over 6%
Abstract
Behavioral economics tells us that emotions can profoundly affect individual behavior and decision-making. Does this also apply to societies at large, i.e., can societies experience mood states that affect their collective decision making? By extension is the public mood correlated or even predictive of economic indicators? Here we investigate whether measurements of collective mood states derived from large-scale Twitter feeds are correlated to the value of the Dow Jones Industrial Average (DJIA) over time. We analyze the text content of daily Twitter feeds by two mood tracking tools, namely OpinionFinder that measures positive vs. negative mood and Google-Profile of Mood States (GPOMS) that measures mood in terms of 6 dimensions (Calm, Alert, Sure, Vital, Kind, and Happy). We cross-validate the resulting mood time series by comparing their ability to detect the public's response to…
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Taxonomy
TopicsCOVID-19 Pandemic Impacts
