Yaoping Ruan, Nikos Anerousis, et al.
IM 2015
In commercial sales and services, recommender systems have been widely adopted to predict customers’ purchase interests using their prior purchasing behaviors. Cold-start is a known challenge to existing recommendation techniques, e.g., the popular collaborative filtering method is not applicable to predict the interests of “white-space” customers since they have no prior purchasing history in the targeted product categories. This paper presents SalesExplorer, a new recommendation algorithm to address “white-space” customer issue in the commercial sales and services segment. To predict the interests of customers who are new to a product category, we propose a statistical inference method using customers’ existing purchase records from other product categories, a Probabilistic Latent Semantic Analysis (PLSA)-based transfer learning method using customers’ business profile content, and a kernel logistic regression-based model which combines these two recommendations to produce the final results with higher accuracy. Experimental study using real-world enterprise sales data demonstrates that, comparing with a baseline and two state-of-the-art methods, the proposed combinatorial algorithm improves recommendation accuracy by 32.14%, 13.13% and 9.85%, respectively.
Yaoping Ruan, Nikos Anerousis, et al.
IM 2015
Dongsheng Li, Chao Chen, et al.
IEEE TKDE
Wanlu Shi, Tun Lu, et al.
CSCWD 2017
Chao Chen, Dongsheng Li, et al.
SIGIR 2015