Author List: Sahoo, Nachiketa; Krishnan, Ramayya; Duncan, George; Callan, Jamie;
Information Systems Research, 2012, Volume 23, Issue 1, Page 231-246.
Collaborative filtering algorithms learn from the ratings of a group of users on a set of items to find personalized recommendations for each user. Traditionally they have been designed to work with one-dimensional ratings. With interest growing in recommendations based on multiple aspects of items, we present an algorithm for using multicomponent rating data. The presented mixture model-based algorithm uses the component rating dependency structure discovered by a structure learning algorithm. The structure is supported by the psychometric literature on the halo effect. This algorithm is compared with a set of model-based and instancebased algorithms for single-component ratings and their variations for multicomponent ratings. We evaluate the algorithms using data from Yahoo! Movies. Use of multiple components leads to significant improvements in recommendations. However, we find that the choice of algorithm depends on the sparsity of the training data. It also depends on whether the task of the algorithm is to accurately predict ratings or to retrieve relevant items. In our experiments a model-based multicomponent rating algorithm is able to better retrieve items when training data are sparse. However, if the training data are not sparse, or if we are trying to predict the rating values accurately, then the instance-based multicomponent rating collaborative filtering algorithms perform better. Beyond generating recommendations we show that the proposed model can fill in missing rating components. Theories in psychometric literature and the empirical evidence suggest that rating specific aspects of a subject is difficult. Hence, filling in the missing component values leads to the possibility of a rater support system to facilitate gathering of multicomponent ratings.
Keywords: Bayesian network; collaborative filtering; expectation maximization; halo effect; mixture model; multicomponent rating; recommender system
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List of Topics

#189 0.453 recommendations recommender systems preferences recommendation rating ratings preference improve users frame contextual using frames sensemaking filtering manipulation specific collaborative items
#97 0.208 set approach algorithm optimal used develop results use simulation experiments algorithms demonstrate proposed optimization present analytical distribution selection number existing
#6 0.086 data used develop multiple approaches collection based research classes aspect single literature profiles means crowd collected trend accuracy databases accurate
#265 0.077 collaborative groups feedback group work collective individuals higher effects efficacy perceived tasks members environment writing experiment did task intelligence compared
#108 0.068 model research data results study using theoretical influence findings theory support implications test collected tested based empirical empirically context paper