Recent years have witnessed an increased
interest in recommender systems. Despite significant progress in this field,
there still remain numerous avenues to explore. Indeed, this paper provides a
study of exploiting online travel information for personalized travel package
recommendation. A critical challenge along this line is to address the unique
characteristics of travel data, which distinguish travel packages from
traditional items for recommendation. To that end, in this paper, we first
analyze the characteristics of the existing travel packages and develop a
tourist-area-season topic (TAST) model. This TAST model can represent travel
packages and tourists by different topic distributions, where the topic
extraction is conditioned on both the tourists and the intrinsic features
(i.e., locations, travel seasons) of the landscapes. Then, based on this topic
model representation, we propose a cocktail approach to generate the lists for
personalized travel package recommendation. Furthermore, we extend the TAST
model to the tourist-relation-area-season topic (TRAST) model for capturing the
latent relationships among the tourists in each travel group. Finally, we
evaluate the TAST model, the TRAST model, and the cocktail recommendation
approach on the real-world travel package data. Experimental results show that
the TAST model can effectively capture the unique characteristics of the travel
data and the cocktail approach is, thus, much more effective than traditional
recommendation techniques for travel package recommendation. Also, by
considering tourist relationships, the TRAST model can be used as an effective
assessment for travel group formation
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