Identifying influential reviewers for word-of-mouth marketing

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摘要

The key to word-of-mouth marketing is to discover the potential influential nodes for efficiently spreading product impressions. In this paper, a framework combined with mining techniques, a modified PMI measure, and an adaptive RFM model is proposed to evaluate the influential power of online reviewers. An artificial neural network is adopted to identify the target reviewers and a well-developed trust mechanism is utilized for effectiveness evaluation. This proposed framework is verified by the data collected from Epinions.com, one of the most popular online product review websites. The experimental results show that the proposed model could accurately identify which reviewers to select to become the influential nodes. This proposed approach can be exploited in effectively carrying out online word-of-mouth marketing, which can save a lot of resources in finding customers.

论文关键词:Word-of-mouth marketing,Social network,Opinion mining,Trust,RFM,PMI

论文评审过程:Received 7 December 2008, Revised 15 February 2010, Accepted 16 February 2010, Available online 21 February 2010.

论文官网地址:https://doi.org/10.1016/j.elerap.2010.02.004