Can Internet Search Queries Help to Predict Stock Market Volatility?

This paper studies the dynamics of stock market volatility and retail investor attention measured by internet search queries. We find a strong co-movement of stock market indices' realized volatility and the search queries for their names. Furthermore, Granger causality is bi-directional: high searches follow high volatility, and high volatility follows high searches. Using the latter feedback effect to predict volatility we find that search queries contain additional information about market volatility. They help to improve volatility forecasts in-sample and out-of-sample as well as for different forecasting horizons. Search queries are particularly useful to predict volatility in high-volatility phases.

[1]  C. Granger Investigating Causal Relations by Econometric Models and Cross-Spectral Methods , 1969 .

[2]  J. Mincer,et al.  Economic Forecasts and Expectations: Analysis of Forecasting Behavior and Performance , 1970 .

[3]  L. Summers,et al.  Noise Trader Risk in Financial Markets , 1990, Journal of Political Economy.

[4]  F. Diebold,et al.  Comparing Predictive Accuracy , 1994, Business Cycles.

[5]  Terrance Odean,et al.  Are Investors Reluctant to Realize Their Losses? , 1996 .

[6]  David I. Harvey The evaluation of economic forecasts , 1997 .

[7]  Chris Brooks Predicting stock index volatility: can market volume help? , 1998 .

[8]  Todd E. Clark,et al.  Tests of Equal Forecast Accuracy and Encompassing for Nested Models , 1999 .

[9]  M. Marchesi,et al.  Scaling and criticality in a stochastic multi-agent model of a financial market , 1999, Nature.

[10]  Chris Kirby,et al.  The Economic Value of Volatility Timing , 2000 .

[11]  Marno Verbeek,et al.  The Economic Value of Predicting Stock Index Returns and Volatility , 2001, Journal of Financial and Quantitative Analysis.

[12]  Mark Grinblatt,et al.  The investment behavior and performance of various investor types: a study of Finland's unique data set , 2000 .

[13]  Chris Kirby,et al.  The Economic Value of Volatility Timing Using 'Realized' Volatility , 2001 .

[14]  Francis X. Diebold,et al.  Modeling and Forecasting Realized Volatility , 2001 .

[15]  F. Diebold,et al.  The distribution of realized stock return volatility , 2001 .

[16]  Clive W. J. Granger,et al.  Forecasting transformed series , 1976 .

[17]  C. Granger Investigating causal relations by econometric models and cross-spectral methods , 1969 .

[18]  B. Bollen,et al.  Estimating Daily Volatility in Financial Markets Utilizing Intraday Data , 2002 .

[19]  E. Ghysels,et al.  Série Scientifique Scientific Series Predicting Volatility: Getting the Most out of Return Data Sampled at Different Frequencies , 2022 .

[20]  Chris Kirby,et al.  The economic value of volatility timing using “realized” volatility ☆ , 2003 .

[21]  Todd E. Clark,et al.  Approximately Normal Tests for Equal Predictive Accuracy in Nested Models , 2005 .

[22]  Andrew J. Patton Volatility Forecast Comparison Using Imperfect Volatility Proxies , 2006 .

[23]  Thomas Lux,et al.  A NOISE TRADER MODEL AS A GENERATOR OF APPARENT FINANCIAL POWER LAWS AND LONG MEMORY , 2007, Macroeconomic Dynamics.

[24]  Alexandra Niessen,et al.  Sex matters: Gender differences in a professional setting , 2007 .

[25]  F. Diebold,et al.  Roughing It Up: Including Jump Components in the Measurement, Modeling, and Forecasting of Return Volatility , 2005, The Review of Economics and Statistics.

[26]  Yacine Ait-Sahalia,et al.  Out of Sample Forecasts of Quadratic Variation , 2008 .

[27]  Roxana Halbleib,et al.  Modelling and Forecasting Multivariate Realized Volatility , 2008 .

[28]  Thierry Foucault,et al.  Individual Investors and Volatility , 2008 .

[29]  Fulvio Corsi,et al.  A Simple Approximate Long-Memory Model of Realized Volatility , 2008 .

[30]  Zhi Da,et al.  In Search of Attention , 2009 .

[31]  Jeremy Ginsberg,et al.  Detecting influenza epidemics using search engine query data , 2009, Nature.

[32]  H. Varian,et al.  Predicting the Present with Google Trends , 2009 .

[33]  Hyun-young Choi,et al.  Predicting Initial Claims for Unemployment Benefits , 2009 .

[34]  Helmut Lütkepohl,et al.  The role of the log transformation in forecasting economic variables , 2009, SSRN Electronic Journal.

[35]  Joseph Engelberg,et al.  The Causal Impact of Media in Financial Markets , 2009 .

[36]  Charlotte Christiansen,et al.  A Comprehensive Look at Financial Volatility Prediction by Economic Variables , 2011 .

[37]  Zhi Da,et al.  In Search of Earnings Predictability , 2010 .

[38]  Matthias Bank,et al.  Google search volume and its influence on liquidity and returns of German stocks , 2010 .

[39]  T. Bollerslev,et al.  Realized volatility forecasting and market microstructure noise , 2011 .

[40]  Martin Weber,et al.  The Trading Volume Impact of Local Bias: Evidence from a Natural Experiment , 2011 .

[41]  Eric Ghysels,et al.  News - Good or Bad - and its Impact on Volatility Predictions over Multiple Horizons , 2008 .

[42]  E. Ghysels,et al.  Volatility Forecasting and Microstructure Noise , 2006 .

[43]  Michael S. Drake,et al.  Investor Information Demand: Evidence from Google Searches Around Earnings Announcements , 2012 .

[44]  Raphael N. Markellos,et al.  Information Demand and Stock Market Volatility , 2012 .

[45]  João Caldeira,et al.  Can We Predict the Financial Markets Based on Google's Search Queries? , 2014 .

[46]  John Goddard,et al.  Investor Attention and FX Market Volatility , 2012 .

[47]  Zhi Da,et al.  The Sum of All FEARS: Investor Sentiment and Asset Prices , 2013 .

[48]  Thomas Dimpfl,et al.  Googling Gold and Mining Bad News , 2016 .

[49]  Tom Coupé Replicating “Predicting the present with Google trends” by Hyunyoung Choi and Hal Varian (The Economic Record, 2012) , 2018, Economics.