Author List: Xiao, Bo; Benbasat, Izak;
MIS Quarterly, 2007, Volume 31, Issue 1, Page 137-209.
Recommendation agents (RAs) are software agents that elicit the interests or preferences of individual consumers for products, either explicitly or implicitly, and make recommendations accordingly. RAs have the potential to support and improve the quality of the decisions consumers make when searching for and selecting products online. They can reduce the information overload facing consumers, as well as the complexity of online searches. Prior research on RAs has focused mostly on developing and evaluating different underlying algorithms that generate recommendations. This paper instead identifies other important aspects of RAs, namely RA use, RA characteristics, provider credibility, and factors related to product, user, and user--RA interaction, which influence users' decision-making processes and outcomes, as well as their evaluation of RAs. It goes beyond generalized models, such as TAM, and identifies the RA-specific features, such as RA input, process, and output design characteristics, that affect users' evaluations, including their assessments of the usefulness and ease-of-use of RA applications. Based on a review of existing literature on e-commerce RAs, this paper develops a conceptual model with 28 propositions derived from five theoretical perspectives. The propositions help answer the two research questions: (1) How do RA use, RA characteristics, and other factors influence consumer decision making processes and outcomes? (2) How do RA use, RA characteristics, and other factors influence users' evaluations of RAs? By identifying the critical gaps between what we know and what we need to know, this paper identifies potential areas of future research for scholars. It also provides advice to information systems practitioners concerning the effective design and development of RAs.
Keywords: Product recommendation agent; electronic commerce; adoption; trust; consumer decision making
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#94 0.222 effort users advice ras trade-off recommendation agents difficulty decision make acceptance product loss trade-offs context perceived influence laboratory reasons consumers
#292 0.150 information research literature systems framework review paper theoretical based potential future implications practice discussed current concept propositions findings provided extant
#118 0.093 online consumers consumer product purchase shopping e-commerce products commerce website electronic results study behavior experience b2c impact internet purchases websites
#283 0.080 interface user users interaction design visual interfaces human-computer navigation human need cues studies guidelines laboratory functional developed restricted know guided
#194 0.074 use habit input automatic features modification different cognition rules account continuing underlying genre emotion way light triggers conscious triggered habitual
#4 0.069 characteristics experience systems study prior effective complexity deal reveals influenced companies type analyze having basis conducted determine complex comparative drive
#157 0.064 evaluation effectiveness assessment evaluating paper objectives terms process assessing criteria evaluations methodology provides impact literature potential important evaluated identifying multiple
#152 0.054 software development process performance agile processes developers response tailoring activities specific requirements teams quality improvement outcomes productivity improve fit maturity