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Mining User-Generated Financial Content to Predict Stock Price Movements

    Research output: Working paperWorking papers

    Abstract

    Sentiment extraction from user-generated online content to predict stock price movements has become an active research field. This paper gives an overview of common approaches to this topic and analyzes the content generated by the financial social network Seekingalpha.com. The first finding is that a large proportion of users’ attention is focused on only a few stocks. Regarding these stocks it can be shown that sentiment is significantly driven by past abnormal performance. Only the sentiment of premium users contains some degree of predictive
    power. Generally, the users’ sentiment is consistent with a naïve
    momentum mentality.
    Original languageEnglish
    Place of PublicationLüneburg
    PublisherUniversität Lüneburg
    Volume22
    Number of pages42
    Publication statusPublished - 12.2012

    Research areas and keywords

    • Informatics
    • Stock price prediction
    • event study
    • sentiment analysis

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