Online retailers use product ratings to signal quality and help consumers identify products for purchase. These ratings commonly take the form of either non-personalized, aggregate product ratings (i.e., the average rating a product received from a number of consumers such as “the average rating is 4.5/5 based on 100 reviews”), or personalized predicted preference ratings for a product (i.e., recommender-system-generated predictions for a consumer’s rating of a product such as “we think you’d rate this product 4.5/5”). Ratings in either format can provide decision aid to the consumer, but the two formats convey different types of product quality information and operate with different psychological mechanisms. Prior research has indicated th...
Targeting personalized product recommendations to individual customers has become a mainstream activ...
This research aims at experimentally examining the impact of personalized recommendations – specific...
Collaborative filtering systems heavily depend on user feedback expressed in product ratings to sele...
User-generated ratings — often elicited and presented as “star ratings” — have become a ubiquitous f...
We are quickly moving to a review economy. Consumers continuously rate products, services, employees...
Product ratings have become an integral element of online businesses especially for experience goods...
Purpose: Online customer ratings are ubiquitous in e-commerce. However, in presenting these ratin...
The current literature mostly treats the rating decisions as a function of the concurrent rating env...
Online customer ratings of products and services are commonplace in e‐commerce; however, the format ...
Recommender systems are becoming a salient part of many e-commerce websites. Much research has focus...
Online product review forums commonly provide consumers with averages of product ratings given by re...
Online shoppers are increasingly relying on electronic word-of-mouth (eWOM), which refers to Interne...
The authors of this work present a model that reduces product rating biases that are a result of var...
influential for later consumers. While the aggregated ratings transfer overall evaluation towards pr...
Paper no. 123influential for later consumers. While the aggregated ratings transfer overall evaluati...
Targeting personalized product recommendations to individual customers has become a mainstream activ...
This research aims at experimentally examining the impact of personalized recommendations – specific...
Collaborative filtering systems heavily depend on user feedback expressed in product ratings to sele...
User-generated ratings — often elicited and presented as “star ratings” — have become a ubiquitous f...
We are quickly moving to a review economy. Consumers continuously rate products, services, employees...
Product ratings have become an integral element of online businesses especially for experience goods...
Purpose: Online customer ratings are ubiquitous in e-commerce. However, in presenting these ratin...
The current literature mostly treats the rating decisions as a function of the concurrent rating env...
Online customer ratings of products and services are commonplace in e‐commerce; however, the format ...
Recommender systems are becoming a salient part of many e-commerce websites. Much research has focus...
Online product review forums commonly provide consumers with averages of product ratings given by re...
Online shoppers are increasingly relying on electronic word-of-mouth (eWOM), which refers to Interne...
The authors of this work present a model that reduces product rating biases that are a result of var...
influential for later consumers. While the aggregated ratings transfer overall evaluation towards pr...
Paper no. 123influential for later consumers. While the aggregated ratings transfer overall evaluati...
Targeting personalized product recommendations to individual customers has become a mainstream activ...
This research aims at experimentally examining the impact of personalized recommendations – specific...
Collaborative filtering systems heavily depend on user feedback expressed in product ratings to sele...