Nowcasting Food Stock Movement using Food Safety Related Web Search Queries

Predicting financial market movements in today’s fast-paced and complex environment is challenging more than ever. For many investors, online resources are a major source of information. Researchers can use Google Trends to access the number of search queries of a particular topic by internet users. The search volume index provided by Google then can be used as a proxy for importance of that topic. To predict the collective response to a particular news, we can use the search index for relevant search terms in our forecasting model. The focus of our study is forecasting food stock movement. A unique feature of the food industry is that besides common fundamental information, stakeholders are responsive to food safety news. In this study, we test whether including relevant search terms would reduce the forecasting error and improve the predictive power of traditional models. We use the market data and Google Trends index for 46 listed food companies. The empirical results show that on average the use of search terms reduces forecasting error by 2 to 31 percent for predicting trading volume, and reduces forecasting error by 3.5 to 77 percent for predicting the closing price, depending on the company. We also applied a model confidence set (MCS) to create a set of specifications that have statistically least forecasting error. The average forecasting error of the models in the set is lower than all models with search terms which implies that the MCS approach is efficient in identifying models with best predictive power.

[1]  H Eugene Stanley,et al.  Complex dynamics of our economic life on different scales: insights from search engine query data , 2010, Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences.

[2]  Peter Reinhard Hansen,et al.  The Model Confidence Set , 2010 .

[3]  Klaus F. Zimmermann,et al.  The Internet as a Data Source for Advancement in Social Sciences , 2015, SSRN Electronic Journal.

[4]  Guido Caldarelli,et al.  Web Search Queries Can Predict Stock Market Volumes , 2011, PloS one.

[5]  David M. Pennock,et al.  Predicting consumer behavior with Web search , 2010, Proceedings of the National Academy of Sciences.

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

[7]  A. Hyland,et al.  Association between use of flavoured tobacco products and quit behaviours: findings from a cross-sectional survey of US adult tobacco users , 2016, Tobacco Control.

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

[9]  D. Lazer,et al.  The Parable of Google Flu: Traps in Big Data Analysis , 2014, Science.

[10]  J. Brownstein,et al.  Social and news media enable estimation of epidemiological patterns early in the 2010 Haitian cholera outbreak. , 2012, The American journal of tropical medicine and hygiene.

[11]  J. Brownstein,et al.  Early detection of disease outbreaks using the Internet , 2009, Canadian Medical Association Journal.

[12]  Juri Marcucci,et al.  The Predictive Power of Google Searches in Forecasting Unemployment , 2012 .

[13]  Daniel Andrei,et al.  Investor Attention and Stock Market Volatility , 2015 .

[14]  C. Artola,et al.  Tracking the Future on the Web: Construction of Leading Indicators Using Internet Searches , 2012 .

[15]  H. Stanley,et al.  Quantifying Trading Behavior in Financial Markets Using Google Trends , 2013, Scientific Reports.

[16]  Roberto Rivera,et al.  A dynamic linear model to forecast hotel registrations in Puerto Rico using Google Trends data , 2015, 1512.08097.

[17]  Torsten Schmidt,et al.  A monthly consumption indicator for Germany based on Internet search query data , 2010 .

[18]  Torsten Schmidt,et al.  Forecasting Private Consumption: Survey-Based Indicators vs. Google Trends , 2009 .

[19]  Craig W. Hedberg,et al.  Foodborne Illness Acquired in the United States , 2011, Emerging infectious diseases.

[20]  Rachana Shanbhogue,et al.  Using Internet Search Data as Economic Indicators , 2011 .

[21]  Hamed Ghoddusi,et al.  Google search keywords that best predict energy price volatility , 2017 .

[22]  N. Askitas,et al.  Google Econometrics and Unemployment Forecasting , 2009, SSRN Electronic Journal.

[23]  Benjamin L. Edelman,et al.  Using Internet Data for Economic Research , 2012 .

[24]  Yan Carrière-Swallow,et al.  Nowcasting With Google Trends in an Emerging Market , 2013 .

[25]  J. Brownstein,et al.  Digital disease detection--harnessing the Web for public health surveillance. , 2009, The New England journal of medicine.

[26]  Crystale Purvis Cooper,et al.  Cancer Internet Search Activity on a Major Search Engine, United States 2001-2003 , 2005, Journal of medical Internet research.

[27]  M. B. Wintoki,et al.  Forecasting Abnormal Stock Returns and Trading Volume Using Investor Sentiment: Evidence from Online Search ? , 2011 .

[28]  Michael J. Cafarella,et al.  Using Social Media to Measure Labor Market Flows , 2014 .

[29]  Ting Yao,et al.  Forecasting Crude Oil Prices with the Google Index , 2017 .