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Can customer sentiment impact firm value?: An integrated text mining approach
Journal article   Peer reviewed

Can customer sentiment impact firm value?: An integrated text mining approach

Prajwal Eachempati, Praveen Ranjan Srivastava, Ajay Kumar, Javier Muñoz de Prat and Dursun Delen
Technological Forecasting and Social Change
01/01/2022

Abstract

Customer sentiment research methods Firm value Text mining social media
Developing measures to capture customer sentiment and securing a positive customer experience is a strategic necessity to improve firm profitability and shareholder value. The paper considers the relationship between customer satisfaction, earnings, and firm value as these drives change in stock prices, customer, and investor sentiment. The present study investigates the impact of customer sentiment polarity on stock prices based on Indian automobile sector databased such as the Indian Nifty Auto SNE (Maruti Suzuki, Tata Motors, and Eicher). A top-down approach is adopted to construct a financial proxy-based sentiment index completed with sentiment extracted from automobile news and customer reviews. The paper uses a text mining approach to holistically measure customer sentiment's impact on investor sentiment and stock prices. The study was initially performed at the overall individual stock from the Nifty Auto NSE but focused on the top three passenger vehicle manufacturing companies i.e., Maruti Suzuki, Tata Motors, and Eicher. It was found that the sentiment index was augmented with news and customer reviews allows predicting more accurately NIFTY AUTO stock price movements. This implies that customer sentiment is a major driver of investor sentiment which in turn impacts the stock market and the firm value. Thus, the present study is an integrated approach to holistically measure customer sentiment's impact on investor sentiment and stock prices.
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https://doi.org/10.1016/j.techfore.2021.121265View
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Collaboration types
Domestic collaboration
International collaboration
Citation topics
6 Social Sciences
6.3 Management
6.3.65 Consumer Behavior
Web of Science research areas
Business
Regional & Urban Planning
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