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Measuring Investor Attention Using Google Search

Ed deHaan (), Alastair Lawrence () and Robin Litjens ()
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Ed deHaan: Stanford University, Stanford, California 94305
Alastair Lawrence: London Business School, London NW1 4SA, United Kingdom
Robin Litjens: Tilburg University, 5037 AB Tilburg, Netherlands

Management Science, 2025, vol. 71, issue 7, 6275-6297

Abstract: Although investor attention is fundamental to the efficient functioning of capital markets, it is also an elusive construct that researchers struggle to measure. In recent years, the search volume index (SVI) of ticker searches on Google has become a ubiquitous measure of investor attention, but the amount and effects of measurement error in ticker SVI are unknown. We investigate measurement error in ticker SVI using a data set of 2.7 billion website visits following Standard and Poor’s 500 firms’ ticker searches. We find that 69% of searches are unrelated to investing, that this measurement error is highly correlated with firm characteristics, and that this measurement error can easily generate false-positive or false-negative results in common settings. We go on to show that a modified version of SVI using both a firm’s ticker and the word “stock” (e.g., searches for “CAT stock,” which we label “ticker-stock SVI”) not only better captures the search terms that investors typically use, but also has considerably less measurement error that is largely uncorrelated with observable firm characteristics. Ticker-stock SVI produces better specified tests, and although researchers must still carefully consider the effects of measurement error, we recommend that ticker-stock SVI is used in place of ticker SVI in most settings. We provide a data set of ticker-stock SVI to facilitate future work.

Keywords: Google ticker search; SVI; investor attention; measurement error (search for similar items in EconPapers)
Date: 2025
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http://dx.doi.org/10.1287/mnsc.2022.02174 (application/pdf)

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