DocumentCode
1550799
Title
Increasing Retrieval Quality in Conversational Recommenders
Author
Llorente, Maria Salamó ; Guerrero, Sergio Escalera
Author_Institution
Universitat de Barcelona, Barcelona
Volume
24
Issue
10
fYear
2012
Firstpage
1876
Lastpage
1888
Abstract
A major task of research in conversational recommender systems is personalization. Critiquing is a common and powerful form of feedback, where a user can express her feature preferences by applying a series of directional critiques over the recommendations instead of providing specific preference values. Incremental Critiquing (IC) is a conversational recommender system that uses critiquing as a feedback to efficiently personalize products. The expectation is that in each cycle the system retrieves the products that best satisfy the user´s soft product preferences from a minimal information input. In this paper, we present a novel technique that increases retrieval quality based on a combination of compatibility and similarity scores. Under the hypothesis that a user learns during the recommendation process, we propose two novel exponential Reinforcement Learning (RL) approaches for compatibility that take into account both the instant at which the user makes a critique and the number of satisfied critiques. Moreover, we consider that the impact of features on the similarity differs according to the preferences manifested by the user. We propose a Global Weighting (GW) approach that uses a common weight for nearest cases in order to focus on groups of relevant products. We show that our methodology significantly improves recommendation efficiency in four data sets of different sizes in terms of session length in comparison with state-of-the-art approaches. Moreover, our recommender shows higher robustness against noisy user data when compared to classical approaches.
Keywords
Cognition; Current measurement; Learning systems; Monte Carlo methods; Recommender systems; Space exploration; Conversational recommender systems; case-based reasoning; critiquing elicitation; personalization.;
fLanguage
English
Journal_Title
Knowledge and Data Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1041-4347
Type
jour
DOI
10.1109/TKDE.2011.116
Filename
5871618
Link To Document