Please use this identifier to cite or link to this item: https://hdl.handle.net/20.500.14279/1744
Title: A Sparse Nonparametric Hierarchical Bayesian Approach Towards Inductive Transfer for Preference Modeling
Authors: Chatzis, Sotirios P. 
Demiris, Yiannis 
Major Field of Science: Engineering and Technology
Field Category: Electrical Engineering - Electronic Engineering - Information Engineering
Keywords: Computer science;Artificial intelligence;Expert systems (Computer science);Knowledge management;Computer multitasking;Preference learning;Nonparametric models;Multitask learning;Dirichlet process;Automatic relevance determination
Issue Date: 15-Jun-2012
Source: Expert systems with applications, 2012, vol. 39, no. 8, pp. 7235-7246
Volume: 39
Issue: 8
Start page: 7235
End page: 7246
Journal: Expert systems with applications 
Abstract: In this paper, we present a novel methodology for preference learning based on the concept of inductive transfer. Specifically, we introduce a nonparametric hierarchical Bayesian multitask learning approach, based on the notion that human subjects may cluster together forming groups of individuals with similar preference rationale (but not identical preferences). Our approach is facilitated by the utilization of a Dirichlet process prior, which allows for the automatic inference of the most appropriate number of subject groups (clusters), as well as the employment of the automatic relevance determination (ARD) mechanism, giving rise to a sparse nature for our model, which significantly enhances its computational efficiency. We explore the efficacy of our novel approach by applying it to both a synthetic experiment and a real-world music recommendation application. As we show, our approach offers a significant enhancement in the effectiveness of knowledge transfer in statistical preference learning applications, being capable of correctly inferring the actual number of human subject groups in a modeled dataset, and limiting knowledge transfer only to subjects belonging to the same group (wherein knowledge transferability is more likely)
URI: https://hdl.handle.net/20.500.14279/1744
ISSN: 09574174
DOI: 10.1016/j.eswa.2012.01.053
Rights: © 2012 Elsevier.
Type: Article
Affiliation : Imperial College London 
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