Author List: Pathak, Bhavik; Garfinkel, Robert; Gopal, Ram D.; Venkatesan, Rajkumar; Yin, Fang;
Journal of Management Information Systems, 2010, Volume 27, Issue 2, Page 159-188.
Online retailers are increasingly using information technologies to provide value-added services to customers. Prominent examples of these services are online recommender systems and consumer feedback mechanisms, both of which serve to reduce consumer search costs and uncertainty associated with the purchase of unfamiliar products. The central question we address is how recommender systems affect sales. We take into consideration the interaction among recommendations, sales, and price. We then develop a robust empirical model that incorporates the indirect effect of recommendations on sales through retailer pricing, potential simultaneity between sales and recommendations, and a comprehensive measure of the strength of recommendations. Applying the model to a panel data set collected from two online retailers, we found that the strength of recommendations has a positive effect on sales. Moreover, this effect is moderated by the recency effect, where more recently released recommended items positively affect the cross-selling efforts of sellers. We also show that recommender systems help to reinforce the long-tail phenomenon of electronic commerce, and obscure recommendations positively affect cross-selling. We also found a positive effect of recommendations on prices. These results suggest that recommendations not only improve sales but they also provide added flexibility to retailers to adjust their prices. A comparative analysis reveals that recommendations have a higher effect on sales than does consumer feedback. Our empirical results show that providing value-added services, such as digital word of mouth and recommendations, allows retailers to charge higher prices while at the same time increasing demand by providing more information regarding the quality and match of products.
Keywords: collaborative filtering; e-tail; electronic commerce; experience goods; recommender systems
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#199 0.203 reviews product online review products wom consumers consumer ratings sales word-of-mouth impact reviewers word using effect marketing helpfulness electronic commerce
#189 0.192 recommendations recommender systems preferences recommendation rating ratings preference improve users frame contextual using frames sensemaking filtering manipulation specific collaborative items
#173 0.123 effect impact affect results positive effects direct findings influence important positively model data suggest test factors negative affects significant relationship
#112 0.121 services service network effects optimal online pricing strategies model provider provide externalities providing base providers fee complementary demand offer derive
#41 0.107 price prices dispersion spot buying good transaction forward retailers commodity pricing collected premium customers using posted relatively obtain listing uncertainty
#262 0.084 impact data effect set propensity potential unique increase matching use selection score results self-selection heterogeneity evidence measure associated estimate leads