Improving Business Rating Predictions Using Graph Based Features

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Tiroshi, Amit; Berkovsky, Shlomo; Kaafar, Dali; Vallet, David; Chen, Terence; Kuflik, Tsvi


2014-02-24


Conference Material


International Conference on Intelligent User Interfaces (IUI)


Haifa, Israel


10


Many types of recommender systems rely on a rich ensemble of user, item, and context features when generating recommendations for users. The features can be either manually engineered or automatically extracted from the available data, such that feature engineering becomes an important step in the recommendation process. In this work, we propose to leverage graph based representation of the data in order to generate and automatically populate features. We represent the standard user-item rating matrix and some domain metadata, as graph vertices and edges. Then, we apply a suit of graph theory and network analysis metrics to the graph based data representation, to populate features that augment the original user-item ratings data. The augmented data is fed into a classifier that predicts unknown user ratings, which are used for the generation of recommendations. We evaluate the proposed methodology using the recently released Yelp business ratings dataset. Our results indicate that the automatically populated graph features allow for more accurate and robust predictions, with respect to both the variability and sparsity of ratings.


Recommender and Filtering Systems, Analysis Methods, Machine Learning and Data Mining


http://www.iuiconf.org/


nicta:7671


Tiroshi, Amit; Berkovsky, Shlomo; Kaafar, Dali; Vallet, David; Chen, Terence; Kuflik, Tsvi. Improving Business Rating Predictions Using Graph Based Features.[Conference Material]. 2014-02-24. <a href="http://hdl.handle.net/102.100.100/95421?index=1" target="_blank">http://hdl.handle.net/102.100.100/95421?index=1</a>



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