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Google Search Trends and Exchange Rate Volatility – Evidence from India's Currency Market

aNational Kaohsiung University of Science and Technology, Taiwan. Corresponding: Dr. Chia-Chien Chang, email: .
bTaiwan Cooperative Bank, Taiwan

Advances in Pacific Basin Business, Economics and Finance

ISBN: 978-1-80043-871-2, eISBN: 978-1-80043-870-5

Publication date: 22 July 2021

Abstract

We empirically investigate the forecasting ability of USD-INR exchange rate volatility models by considering Google Trends data. Within a multiple regression framework, we use historical volatility and liquidity measures to build our benchmark volatility model (Chandra & Thenmozhi, 2014). Moreover, we extend Bulut (2018) to incorporate indexes for 15 keywords (price-related, income-related, and liquidity-related) from Google Trends data into our benchmark volatility model to evaluate the forecasting ability of the models. Our results indicate that Google Trends data can improve volatility prediction and that among the groups of keywords that we consider, the price-related keywords have the best forecasting ability. Incorporating data on searches for “prices” into the model produces the highest reduction in the forecasting error: a 22.75% decrease compared to the level in the benchmark model. Hence, these empirical findings indicate that Google Trends data contain information that influences exchange rate movements.

Keywords

Citation

Fan Chiang, H.-C., Jiang, P.-X. and Chang, C.-C. (2021), "Google Search Trends and Exchange Rate Volatility – Evidence from India's Currency Market", Lee, C.-F. and Yu, M.-T. (Ed.) Advances in Pacific Basin Business, Economics and Finance (Advances in Pacific Basin Business, Economics and Finance, Vol. 9), Emerald Publishing Limited, Leeds, pp. 195-210. https://doi.org/10.1108/S2514-465020210000009010

Publisher

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Emerald Publishing Limited

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