THESIS
2013
ix, 46 p. : ill. ; 30 cm
Abstract
Collaborative Filtering (CF) aims to predict users’ ratings on items according to historical user-item
preference data. In many real-world applications, preference data are usually sparse, which
would make models overfit and fail to give accurate predictions. Recently, several research
works show that by transferring knowledge from some manually selected source domains, the
data sparseness problem could be mitigated. However for most cases, parts of the source domain
data are not consistent with the observations in the target domain, which may misguide
the target domain model building. In this paper, we propose a novel criterion based on empirical
prediction error and its variance to capture the consistency across domains in CF settings. Consequently,
we embed this criterion int...[
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Collaborative Filtering (CF) aims to predict users’ ratings on items according to historical user-item
preference data. In many real-world applications, preference data are usually sparse, which
would make models overfit and fail to give accurate predictions. Recently, several research
works show that by transferring knowledge from some manually selected source domains, the
data sparseness problem could be mitigated. However for most cases, parts of the source domain
data are not consistent with the observations in the target domain, which may misguide
the target domain model building. In this paper, we propose a novel criterion based on empirical
prediction error and its variance to capture the consistency across domains in CF settings. Consequently,
we embed this criterion into a boosting framework to perform selective knowledge
transfer. Comparing with several state-of-the-art methods, we show that our proposed selective
transfer learning framework can significantly improve the accuracy of rating prediction on
several real-world recommendation tasks.
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