Sciweavers

FLAIRS
2006

Improving Case-Based Recommendations Using Implicit Feedback

14 years 1 months ago
Improving Case-Based Recommendations Using Implicit Feedback
A recommender system suggests items to a user for a given query by personalizing the recommendations based on the user interests. User personalization is usually done by asking users either to rate items or specify their interests. Generally users do not like to rate items; an alternative approach would be to implicitly track user's behaviour by observing their actions. In this paper, we build a recommender system by using case-based reasoning to remember past interactions with the user. We incrementally improve the system recommendations by tracking user's behaviour. User preferences captured during each interaction with the system are used to recommend items even in case of a partial query. We demonstrate the proposed recommender system in a travel domain that adapts to different kinds of users.
Deepak Khemani, Mohamed A. K. Sadiq, Rakesh Bangan
Added 31 Oct 2010
Updated 31 Oct 2010
Type Conference
Year 2006
Where FLAIRS
Authors Deepak Khemani, Mohamed A. K. Sadiq, Rakesh Bangani, Delip Rao
Comments (0)