Explaining and predicting online review helpfulness: The role of content and reviewer-related signals

作者:

Highlights:

• We build upon signaling theory to provide a comprehensive model for predicting helpfulness of online product reviews

• We present meaningful categories of signals, i.e., review content-related signals and reviewer-related signals

• We provide new insights regarding the impact of the signaling environment and signaler incentives on signal processing

• We provide a problem-specific evaluation scenario for assessing the performance of the proposed model

• We show that the proposed model clearly outperforms existing models in predicting review helpfulness

摘要

Online reviews provide information about products and services valuable for consumers in the context of purchase decision making. Online reviews also provide additional value to online retailers, as they attract consumers. Therefore, identifying the most-helpful reviews is an important task for online retailers. This research addresses the problem of predicting the helpfulness of online product reviews by developing a comprehensive research model guided by the theoretical foundations of signaling theory. Thereby, our research model posits that the reviewer of a product sends signals to potential buyers. Using a sample of Amazon.com product reviews, we test our model and observe that review content-related signals (i.e., specific review content and writing styles) and reviewer-related signals (i.e., reviewer expertise and non-anonymity) both influence review helpfulness. Furthermore, we find that the signaling environment affects the signal impact and that incentives provided to reviewers influence the signals sent. To demonstrate the practical relevance of our results, we illustrate by means of a problem-specific evaluation scenario that our model provides superior predictions of review helpfulness compared to earlier approaches. Furthermore, we provide evidence that the proposed evaluation scenario provides deeper insights than classical performance metrics. Our findings are highly relevant for online retailers seeking to reduce information overload and consumers' search costs as well as for reviewers contributing online product reviews.

论文关键词:Online review,Consumer decision making,Helpfulness,Content analysis,Signaling theory

论文评审过程:Received 13 April 2017, Revised 18 January 2018, Accepted 21 January 2018, Available online 19 February 2018, Version of Record 16 April 2018.

论文官网地址:https://doi.org/10.1016/j.dss.2018.01.004