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“商學大講堂”系列學術講座(第221講)---學術名家講壇(44)

來源:商學院   韓曉東     發布時間: 2023-10-16    點擊量:

講座題目:When Karma Strikes Back: A Model of Seller Manipulation of Consumer Reviews in An Online Marketplace

主講嘉賓:吳如海

間:20231018日(星期三)下午14301630

點:商學院119會議室


歡迎感興趣的師生參加聆聽!


江南大學商學院

20231016

主講嘉賓簡介

Dr. Ruhai Wu is a tenured marketing professor at the DeGroote School of Business, McMaster University. He earned his Bachelor's and Master's degrees in Finance from Tsinghua University and a Master's and a Ph.D. in Economics from the University of Texas at Austin. Dr. Wu is an established authority in the spheres of Industrial and Retail Marketing strategies. His multifaceted research encompasses a broad spectrum of disciplines, including Pricing Theory, Supply Chain/Channel Relationship Management, Advertising and Communication Strategy, and emerging E-Commerce business models. In his research, Dr. Wu employs game-theoretical and advanced empirical models to examine firms' and consumers' strategic behaviours. His research has been frequently published in top-tier journals in Marketing, Information Systems, and Operation Management, and he has received over ten competitive research grants from prestigious granting agencies, including the Social Sciences and Humanities Research Council of Canada and the Natural Sciences and Engineering Research Council of Canada. His recent research projects include pricing and management strategies of E-commerce platforms, information asymmetry in supply chains, dynamic pricing in competitive markets, communication in joint consumption, and live streaming E-commerce.

講座主要内容

Online word of mouth (WOM) helps consumers learn about sellers' products/services quality and influences market competition. Some sellers, taking advantage of the anonymity of contributing consumers, fake consumer WOM to boost their products/services ratings. This research uses a game-theoretical model to examine sellers' dynamic pricing and their review manipulation decisions in an online marketplace. We explore the critical drivers of review manipulation and how fake reviews shape the market outcome. Specifically, the model shows a self-inhibition mechanism of review manipulation, which prevents high-quality sellers and softly discourages low-quality sellers from faking reviews. Fake WOM reduces vertical seller differentiation and intensifies price competition. Moreover, negativity bias in genuine customer reviews enhances self-inhibition, especially for low-quality sellers. Consequently, sellers with extreme (very high or very low) quality do not fake reviews when consumers are more likely to write reviews for unsatisfying products/services.




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