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- Do Google Trend Data Contain More Predictability Than Price Returns? Damien Challet, Ahmed Bel Hadj Ayed
- Distress Propagation in Complex Networks: the Case of Non-Linear Debtrank
- Measuring Switching Processes in Financial Markets with the Mean
- Fifteen Years of Econophysics Research
- Financial Market Behaviour and Wikipedia Access Logs
- 17 Dirk Helbing.Pmd
- The Detection of Emerging Trends Using Wikipedia Traffic Data and Context Networks
- Predicting Trend Reversals Using Market Instantaneous State
- An Essay on Econophysics
- Econophysics in a Nutshell
- Researchers Spot Trade Signals in Google Searches
- Switching Processes in Financial Markets
- Measuring and Predicting Human Behaviour Using Online Data
- Characterizing the Time-Perspective of Nations with Search Engine Query Data
- Distilling Data to Improve Stock Market Returns
- Can Google Predict the Stock Market?
- Prof. Dr. Suzy Moat University of Warwick, UK
- Quantifying Future Orientation Based on Google Data
- Chengwei Liu
- A Participatory Framework to Promote Sustainability
- Quantifying Decision‐Making Processes Using Search Engine Data
- Features, Architecture, Research and Applications
- Modeling Investor Sentiment to Protect Against Downside Market Risk
- Most Searched Terms on Google
- Public Concern and the Financial Markets During the COVID-19 Outbreak
- Google Trends and Stock Returns – a Study of Investor Sentiments Using Big Data
- Google Trends Foretells Stock Movements, Study Reports 25 April 2013
- Αrtemis Tobias Preis April 19, 2011 Tobias Preis April 19, 2011 „Random Walk“
- Big Data, Innovations and New Business Models Predicting Human Behaviour with Big Data
- Predicting Financial Markets with Google Trends and Not So Random
- Applying Investor Sentiment to a Prediction Model of the Stock Market
- Frontiers of Data Science for Government: Ideas, Practices, and Projections
- Lagged Correlation Networks
- How to Characterize Trend Switching Processes in Financial Markets
- Comparative Study of Stock Prediction System Using Regression Techniques