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Influence Of Online Forums On Customers’ Buying Decisions: A Machine Learning Approach

Author

Listed:
  • AGARWAL Reeti

    (Jaipuria Institute of Management, Lucknow, India)

  • MEHROTRA Ankit

    (Jaipuria Institute of Management, Lucknow, India)

Abstract

Online forums are becoming increasingly important in influencing customers’ buying decision process, hence understanding customers’ likelihood to rely on online forums while making buying decisions is of major concern for marketers. The companies should also be aware of how reliance-likelihood differs with the introversion/extraversion nature of customers. Using factor analysis as data reduction technique and classification and regression tree as machine learning technique, the current study categorizes customers and builds decision rules based on their self-perception related to their inter-intra communication comfort level (introversion/extraversion level). Based on customers’ self-perception of their inter-intra communication comfort level, four groups were identified as: Extroverts, Introverts, Socially Active and Vacillators. Analysis of the data collected from 209 respondents revealed that being socially active is a common trait for both introverts and extroverts in being influenced by online forums while making buying decisions. The current study will be useful for companies in understanding the effect of the level of introversion-extraversion in making customers more likely to be influenced by online forums for making buying decisions and hence will help firms in formulating more effective strategies and better predictive models related to online forums.

Suggested Citation

  • AGARWAL Reeti & MEHROTRA Ankit, 2023. "Influence Of Online Forums On Customers’ Buying Decisions: A Machine Learning Approach," Studies in Business and Economics, Lucian Blaga University of Sibiu, Faculty of Economic Sciences, vol. 18(3), pages 5-23, December.
  • Handle: RePEc:blg:journl:v:18:y:2023:i:3:p:5-23
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    References listed on IDEAS

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