2013
DOI: 10.1038/srep01684
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Quantifying Trading Behavior in Financial Markets Using Google Trends

Abstract: Crises in financial markets affect humans worldwide. Detailed market data on trading decisions reflect some of the complex human behavior that has led to these crises. We suggest that massive new data sources resulting from human interaction with the Internet may offer a new perspective on the behavior of market participants in periods of large market movements. By analyzing changes in Google query volumes for search terms related to finance, we find patterns that may be interpreted as “early warning signs” of… Show more

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Cited by 774 publications
(556 citation statements)
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References 38 publications
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“…In this article, we fixed the search query terms after 2010 so as to directly compare our results with GFT, which has kept the same query terms since 2010; future application of ARGO may update search terms more frequently. ARGO can be easily generalized to any temporal and spatial scales for a variety of diseases or social events amenable to be tracked by Internet searches or services (3,4,8,9,29,30,38,39). Further improvements in influenza prediction may come from combining multiple predictors constructed from disparate data sources (40).…”
Section: Strength Of Argomentioning
confidence: 99%
“…In this article, we fixed the search query terms after 2010 so as to directly compare our results with GFT, which has kept the same query terms since 2010; future application of ARGO may update search terms more frequently. ARGO can be easily generalized to any temporal and spatial scales for a variety of diseases or social events amenable to be tracked by Internet searches or services (3,4,8,9,29,30,38,39). Further improvements in influenza prediction may come from combining multiple predictors constructed from disparate data sources (40).…”
Section: Strength Of Argomentioning
confidence: 99%
“…Due to the decentralized structure of P2P ecosystems, it is very difficult to gather large-scale data about interactions and behavioral patterns of the users without their explicit consent; this is in contrast to other forms of online exchange where all of the information is stored in a central system, be it publicly accessible as in Wikipedia (7), partially accessible through a public interface as in Twitter (8,9) or Google [through its search logs (10) or its public services (11,12)], or restricted as in Facebook (13,14) or in email communications within organizations (15)(16)(17)(18).…”
mentioning
confidence: 99%
“…The search behavior shows a clear pattern. Similar Google Trends patterns have proven to have significant correlations with a large variety of aspects in commerce, including stock market movements [67], trading behavior [68], automobile sales [69], company evaluations [70], and private consumption [71].…”
Section: Big Data: Informing Business Growth Strategiesmentioning
confidence: 89%