Title
SARFM: A Sentiment-Aware Review Feature Mapping Approach for Cross-Domain Recommendation.
Abstract
Cross-domain algorithms which aim to transfer knowledge available in the source domains to the target domain are gradually becoming more attractive as an effective approach to help improve quality of recommendations and to alleviate the problems of cold-start and data sparsity in recommendation systems. However, existing works on cross-domain algorithm mostly consider ratings, tags and the text information like reviews, and don’t take advantage of the sentiments implicated in the reviews efficiently, especially the negative sentiment information which is easy to be weakened during the process of transferring. In this paper, we propose a sentiment-aware review feature mapping framework for cross-domain recommendation, called SARFM. The proposed SARFM framework applies deep learning algorithm SDAE (Stacked Denoising Autoencoders) to model the Sentiment-Aware Review Feature (SARF) of users, and transfers SARF via a multi-layer perceptron to capture the nonlinear mapping function across domains. We evaluate and compare our framework on a set of Amazon datasets. Extensive experiments on each cross-domain recommendation scenarios are conducted to prove the high accuracy of our proposed SARFM framework.
Year
Venue
Field
2018
WISE
Noise reduction,Recommender system,Data mining,Feature mapping,Computer science,Artificial intelligence,Deep learning,Perceptron
DocType
Citations 
PageRank 
Conference
0
0.34
References 
Authors
20
4
Name
Order
Citations
PageRank
Yang Xu172.80
Zhaohui Peng292.50
Yupeng Hu301.35
Xiaoguang Hong452.10