Paper Type
Complete Research Paper
Description
With advances in personalization technologies, websites are increasingly able to personalize web content and provide users with a uniqu experience. This research examines the effects of personalization on the amount of sampling of (1) personalized and (2) stock items. Two theories, Elaboration Likelihood Model (ELM) and Consumer Search Theory (CST), provide the basis for four hypotheses about these extended indicators. The two theories differ in theoretical level of abstraction. ELM models a user´s response to an appealing item, whereas CST models a user´s overall search strategy. They complement each other, but sometimes lead to competing hypotheses. This research conducts an online field experiment to examine these predictions and provide empirical evidence to validate the proposed hypotheses. Theoretically, our research extends personalization literature by providing a more complete picture of the effects of personalization on users´ sampling behavior. Practically, our research reveals how effective personalization influnces various users´ sampling in return visits. This provides insights for online merchants who plan to invest in personalization technologies.
THE EFFECTS OF TIME AND NUMBER OF PERSONALIZED ITEMS ON USERS´ AMOUNT OF SAMPLING
With advances in personalization technologies, websites are increasingly able to personalize web content and provide users with a uniqu experience. This research examines the effects of personalization on the amount of sampling of (1) personalized and (2) stock items. Two theories, Elaboration Likelihood Model (ELM) and Consumer Search Theory (CST), provide the basis for four hypotheses about these extended indicators. The two theories differ in theoretical level of abstraction. ELM models a user´s response to an appealing item, whereas CST models a user´s overall search strategy. They complement each other, but sometimes lead to competing hypotheses. This research conducts an online field experiment to examine these predictions and provide empirical evidence to validate the proposed hypotheses. Theoretically, our research extends personalization literature by providing a more complete picture of the effects of personalization on users´ sampling behavior. Practically, our research reveals how effective personalization influnces various users´ sampling in return visits. This provides insights for online merchants who plan to invest in personalization technologies.