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dc.contributor.advisorYorkston, Eric
dc.contributor.authorHirvela, Carly
dc.date2016-04-19
dc.date.accessioned2016-09-14T15:32:32Z
dc.date.available2016-09-14T15:32:32Z
dc.date.issued2016
dc.identifier.urihttps://repository.tcu.edu/handle/116099117/11382
dc.description.abstractRecommendation Agents are an information filtering system that helps identify consumers preferences based on previous purchasing behaviors, or ratings, of a product. Many researchers have looked at different components of the RA systems, but this paper will provide a complete framework of how RA systems work and where they are going in the future. RAs help drive consumer sales through various different algorithms and techniques such as content-based filtering, collaborative-based filtering and co-clustering. RA could take many paths in the future such as looking at each individual click on a computer, personality types, or even moving forward to see how RAs could be used on tablets in stores while consumers are shopping.
dc.titleRecommendation Agents: How to Build an Effective System
etd.degree.departmentMarketing
local.collegeNeeley School of Business
local.collegeJohn V. Roach Honors College
local.departmentMarketing


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