Michael Nofer examines whether and to what extent Social Media can be used to predict stock returns. Market-relevant information is available on various platforms on the Internet, which largely consist of user generated content. For instance, emotions can be extracted in order to identify the investors' risk appetite and in turn the willingness to invest in stocks. Discussion forums also provide an opportunity to identify opinions on certain companies. Taking Social Media platforms as examples, the author examines the forecasting quality of user generated content on the Internet.

Contents

  • Market Anomalies on Two-Sided Auction Platforms
  • Are Crowds on the Internet Wiser than Experts? - The Case of a Stock Prediction Community
  • Using Twitter to Predict the Stock Market: Where is the Mood Effect?
  • The Economic Impact of Privacy Violations and Security Breaches - A Laboratory Experiment

Target Groups

  • Scientists and students in the field of IT, finance and business
  • Private investors, institutional investors

About the Author

Michael Nofer wrote his dissertation at the Chair of Information Systems | Electronic Markets at TU Darmstadt, Germany.



Autorentext
Michael Nofer wrote his dissertation at the Chair of Information Systems | Electronic Markets at TU Darmstadt, Germany.

Inhalt
Introduction.- Market Anomalies on Two-Sided Auction Platforms.- Are Crowds on the Internet Wiser than Experts? The Case of a Stock Prediction Community.- Using Twitter to Predict the Stock Market: Where is the Mood Effect?.- The Economic Impact of Privacy Violations and Security Breaches A Laboratory Experiment.- Literature.
Titel
The Value of Social Media for Predicting Stock Returns
Untertitel
Preconditions, Instruments and Performance Analysis
EAN
9783658095086
ISBN
978-3-658-09508-6
Format
E-Book (pdf)
Herausgeber
Veröffentlichung
21.04.2015
Digitaler Kopierschutz
Wasserzeichen
Dateigrösse
48.89 MB
Anzahl Seiten
128
Jahr
2015
Untertitel
Englisch