Calibration of Voting-Based Helpfulness Measurement for Online Reviews: An Iterative Bayesian Probability Approach

Author:

Guo Xunhua1ORCID,Chen Guoqing1,Wang Cong23,Wei Qiang1ORCID,Zhang Zunqiang1

Affiliation:

1. Research Center for Contemporary Management, School of Economics and Management, Tsinghua University, Beijing 100084, China;

2. Guanghua School of Management, Peking University, Beijing 100871, China;

3. School of Economics and Management, Tsinghua University, Beijing 100084, China

Abstract

Voting mechanisms are widely adopted for evaluating the quality and credibility of user-generated content, such as online product reviews. For the reviews that do not receive sufficient votes, techniques and models are developed to automatically assess their helpfulness levels. Existing methods serving this purpose are mostly centered on feature analysis, ignoring the information conveyed in the frequencies and patterns of user votes. Consequently, the accuracy of helpfulness measurement is limited. Inspired by related findings from prediction theories and consumer behavior research, we propose a novel approach characterized by the technique of iterative Bayesian distribution estimation, aiming to more accurately measure the helpfulness levels of reviews used for training prediction models. Using synthetic data and a real-world data set involving 1.67 million reviews and 5.18 million votes from Amazon, a simulation experiment and a two-stage data experiment show that the proposed approach outperforms existing methods on accuracy measures. Moreover, an out-of-sample user study is conducted on Amazon Mechanical Turk. The results further illustrate the predictive power of the new approach. Practically, the research contributes to e-commerce by providing an enhanced method for exploiting the value of user-generated content. Academically, we contribute to the design science literature with a novel approach that may be adapted to a wide range of research topics, such as recommender systems and social media analytics.

Publisher

Institute for Operations Research and the Management Sciences (INFORMS)

Subject

General Engineering

Reference14 articles.

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4. Hu M, Liu B (2004) Mining and summarizing customer reviews. Proc. 10th ACM SIGKDD Internat. Conf. Knowledge Discovery Data Mining (Association for Computing Machinery, New York), 168–177.

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