1. What are the contributions in "Leveraging review properties for effective recommendation" ?
In this paper, the authors propose to model the reviews with their associated available properties.. The authors introduce a novel review properties-based recommendation model ( RPRM ) that learns which review properties are more important than others in capturing the usefulness of reviews, thereby enhancing the recommendation results.. Furthermore, inspired by the users ’ information adoption framework, the authors integrate two loss functions and a negative sampling strategy into their proposed RPRM model, to ensure that the properties of reviews are correlated with the users ’ preferences.. The authors examine the effectiveness of RPRM using the well-known Yelp and Amazon datasets.. Moreover, the authors experimentally show the advantages of using their proposed loss functions and negative sampling strategy, which further enhance the recommendation performances of RPRM.
read more



