Impact of Prior Reviews on the Subsequent Review Process in Reputation Systems

Reputation systems have been recognized as successful online review communities and word-of-mouth channels. Our study draws upon the elaboration likelihood model to analyze the extent that the characteristics of reviewers and their early reviews reduce or worsen the bias of subsequent online reviews. Investigating the sources of this bias and ways to mitigate it is of considerable importance given the previously established significant impact of online reviews on consumers' purchasing decisions and on businesses' profitability. Based on a panel data set of 744 individual consumers collected from Yelp, we used the Markov chain Monte Carlo simulation method to develop and empirically test a system of simultaneous models of consumer review behavior. Our results reveal that male reviewers or those who lack experience, geographic mobility, or social connectedness are more prone to being influenced by prior reviews. We also found that longer and more frequent reviews can reduce online reviews' biases. This paper is among the first to examine the moderating effects of reviewer and review characteristics on the relationship between prior reviews and subsequent reviews. Practically, this study offers businesses effective customer relationship management strategies to improve their reputations and expand their clientele.

[1]  Gary E. Bolton,et al.  How Effective are Online Reputation Mechanisms? An Experimental Study , 2004, Manag. Sci..

[2]  Peter E. Rossi,et al.  Bayesian Statistics and Marketing , 2005 .

[3]  Joan Meyers-Levy,et al.  Exploring Differences in Males' and Females' Processing Strategies , 1991 .

[4]  Michel Wedel,et al.  Leveraging Missing Ratings to Improve Online Recommendation Systems , 2006 .

[5]  Wendy W. Moe,et al.  Measuring the Value of Social Dynamics in Online Product Ratings Forums , 2010 .

[6]  Viswanath Venkatesh,et al.  Expectation Confirmation in Technology Use , 2012, Inf. Syst. Res..

[7]  X. Zhang,et al.  Impact of Online Consumer Reviews on Sales: The Moderating Role of Product and Consumer Characteristics , 2010 .

[8]  Chrysanthos Dellarocas,et al.  The Digitization of Word-of-Mouth: Promise and Challenges of Online Feedback Mechanisms , 2003, Manag. Sci..

[9]  J. Heckman Sample selection bias as a specification error , 1979 .

[10]  Stephanie Watts,et al.  Informational Influence in Organizations: An Integrated Approach to Knowledge Adoption , 2003, Inf. Syst. Res..

[11]  Jan Marco Leimeister,et al.  Leveraging Crowdsourcing: Activation-Supporting Components for IT-Based Ideas Competition , 2009, J. Manag. Inf. Syst..

[12]  R. Schindler,et al.  Perceived helpfulness of online consumer reviews: The role of message content and style: Perceived helpfulness of online consumer reviews , 2012 .

[13]  I. M. Wetzer,et al.  "Never eat in that restaurant, I did!" Exploring why people engage in negative word-of-mouth communication , 2007 .

[14]  Izak Benbasat,et al.  Trust-Related Arguments in Internet Stores: A Framework for Evaluation , 2003, J. Electron. Commer. Res..

[15]  C. A. Matos,et al.  Word-of-mouth communications in marketing: a meta-analytic review of the antecedents and moderators , 2008 .

[16]  Amar Cheema,et al.  Relative importance of online versus offline information for Internet purchases: Product category and Internet experience effects , 2010 .

[17]  Eric T. Bradlow,et al.  An Integrated Model for Bidding Behavior in Internet Auctions: Whether, Who, When, and how Much , 2005 .

[18]  R. Chandy,et al.  What to Say When: Advertising Appeals in Evolving Markets , 2001 .

[19]  Asuman E. Ozdaglar,et al.  Opinion Dynamics and Learning in Social Networks , 2010, Dyn. Games Appl..

[20]  R. Westbrook Product/Consumption-Based Affective Responses and Postpurchase Processes , 1987 .

[21]  K. Gwinner,et al.  WHAT MAKES MAVENS TICK? EXPLORING THE MOTIVES OF MARKET MAVENS INITIATION OF INFORMATION DIFFUSION , 2004 .

[22]  Chrysanthos Dellarocas,et al.  Exploring the value of online product reviews in forecasting sales: The case of motion pictures , 2007 .

[23]  David Godes,et al.  Sequential and Temporal Dynamics of Online Opinion , 2012, Mark. Sci..

[24]  Anol Bhattacherjee,et al.  Influence Processes for Information Technology Acceptance: An Elaboration Likelihood Model , 2006, MIS Q..

[25]  Kyung Kyu Kim,et al.  Initial trust, perceived risk, and the adoption of internet banking , 2000, ICIS.

[26]  Xiao Ma,et al.  Revisiting Self-Selection Biases in E-Word-of-Mouth: An Integrated Model and Bayesian Estimation of Multivariate Review Behaviors , 2011, ICIS.

[27]  Geng Cui,et al.  Terms of Use , 2003 .

[28]  Kenneth E. Train,et al.  Discrete Choice Methods with Simulation , 2016 .

[29]  Bin Gu,et al.  Do online reviews matter? - An empirical investigation of panel data , 2008, Decis. Support Syst..

[30]  Eric K. Clemons,et al.  Do Online Reviews Reflect a Product's True Perceived Quality? - An Investigation of Online Movie Reviews Across Cultures , 2010, 2010 43rd Hawaii International Conference on System Sciences.

[31]  Alon Y. Halevy,et al.  Crowdsourcing systems on the World-Wide Web , 2011, Commun. ACM.

[32]  David A. Schweidel,et al.  Online Product Opinions: Incidence, Evaluation, and Evolution , 2012, Mark. Sci..

[33]  Sang Pil Han,et al.  An Empirical Analysis of User Content Generation and Usage Behavior on the Mobile Internet , 2011, Manag. Sci..

[34]  Samer Faraj,et al.  Why Should I Share? Examining Social Capital and Knowledge Contribution in Electronic Networks of Practice , 2005, MIS Q..

[35]  Tomás Bayón,et al.  The chain from customer satisfaction via word-of-mouth referrals to new customer acquisition , 2007 .

[36]  Izak Benbasat,et al.  Do I Trust You Online, and If So, Will I Buy? An Empirical Study of Two Trust-Building Strategies , 2006, J. Manag. Inf. Syst..

[37]  Joseph Hilbe,et al.  Data Analysis Using Regression and Multilevel/Hierarchical Models , 2009 .

[38]  R. Atkinson,et al.  Accessing Hidden and Hard-to-Reach Populations: Snowball Research Strategies , 2001 .

[39]  Michael D. Smith,et al.  All Reviews are Not Created Equal: The Disaggregate Impact of Reviews and Reviewers at Amazon.Com , 2008 .

[40]  S. Sriram,et al.  The Moderating Role of Consumer and Product Characteristics on the Value of Customized On-Line Recommendations , 2006, Int. J. Electron. Commer..

[41]  Shuk Ying Ho,et al.  Web Personalization as a Persuasion Strategy: An Elaboration Likelihood Model Perspective , 2005, Inf. Syst. Res..

[42]  Anthony S. Bryk,et al.  Hierarchical Linear Models: Applications and Data Analysis Methods , 1992 .

[43]  Lorin M. Hitt,et al.  Self Selection and Information Role of Online Product Reviews , 2007, Inf. Syst. Res..

[44]  J. Cacioppo,et al.  Central and Peripheral Routes to Advertising Effectiveness: The Moderating Role of Involvement , 1983 .

[45]  Diane M. Phillips,et al.  The Role of Consumption Emotions in the Satisfaction Response , 2002 .

[46]  Cheng Hsiao,et al.  Analysis of Panel Data , 1987 .

[47]  Priscilla S. Markwood,et al.  The Long Tail: Why the Future of Business is Selling Less of More , 2006 .

[48]  Jr. James E. Bell Mobiles–a Neglected Market Segment , 1969 .

[49]  Lisa R. Klein,et al.  Consumer search for information in the digital age: An empirical study of prepurchase search for automobiles , 2003 .

[50]  R. Schindler,et al.  Perceived Helpfulness of Online Consumer Reviews: The Role of Message Content and Style , 2010 .

[51]  Flemming Hansen Psychological Theories of Consumer Choice , 1976 .

[52]  D. Hofmann An Overview of the Logic and Rationale of Hierarchical Linear Models , 1997 .

[53]  Izak Benbasat,et al.  Research Note: The Influence of Recommendations and Consumer Reviews on Evaluations of Websites , 2006, Inf. Syst. Res..

[54]  A. Cameron,et al.  Microeconometrics: Methods and Applications , 2005 .

[55]  Eric K. Clemons,et al.  When Online Reviews Meet Hyperdifferentiation: A Study of Craft Beer Industry , 2006, Proceedings of the 39th Annual Hawaii International Conference on System Sciences (HICSS'06).

[56]  A. Banerjee,et al.  A Simple Model of Herd Behavior , 1992 .

[57]  Ram D. Gopal,et al.  Empirical Analysis of the Impact of Recommender Systems on Sales , 2010, J. Manag. Inf. Syst..

[58]  Chrysanthos Dellarocas,et al.  Are Consumers More Likely to Contribute Online Reviews for Hit or Niche Products? , 2010, J. Manag. Inf. Syst..

[59]  Jeffrey M. Woodbridge Econometric Analysis of Cross Section and Panel Data , 2002 .

[60]  Ritu Agarwal,et al.  Adoption of Electronic Health Records in the Presence of Privacy Concerns: The Elaboration Likelihood Model and Individual Persuasion , 2009, MIS Q..

[61]  Anindya Ghose,et al.  Examining the Relationship Between Reviews and Sales: The Role of Reviewer Identity Disclosure in Electronic Markets , 2008, Inf. Syst. Res..

[62]  David Schuff,et al.  What Makes a Helpful Review? A Study of Customer Reviews on Amazon.com , 2010 .

[63]  Bin Gu,et al.  Research Note - The Impact of External Word-of-Mouth Sources on Retailer Sales of High-Involvement Products , 2012, Inf. Syst. Res..

[64]  Paul A. Pavlou,et al.  Overcoming the J-shaped distribution of product reviews , 2009, CACM.