Title :
A Top-N Recommender Model with Partially Predefined Structure
Author :
Rochd, El Mehdi ; Quafafou, Mohamed
Author_Institution :
LSIS, Aix-Marseille Univ., Marseille, France
Abstract :
Recommender systems can retrieve appropriate results based on users behavioral patterns and preferences. They may be built based on multi-label learning approaches, as each customer transaction may be labeled with several results that interest him/her. It is therefore useful to model the correlations between labels while controlling complexity of the learning algorithm. This paper presents a generative probabilistic model for online resources (products/URLs) recommendation, by capturing the complex local correspondence between the user´s queries and the resources he/she has actually viewed. The structure of our model is partially defined and it is completed according to the observed data. Consequently, several links between observed and/or latent random variables are induced from the training dataset before starting the estimation of parameters. Experiments conducted on real data show the effectiveness of our approach.
Keywords :
learning (artificial intelligence); parameter estimation; probability; query processing; random processes; recommender systems; Top-N recommender model; complex local correspondence; customer transaction; generative probabilistic model; latent random variables; learning algorithm; multilabel learning approaches; online resource recommendation; parameter estimation; partially predefined structure; recommender systems; user behavioral patterns; user behavioral preferences; user queries; Context; Correlation; Data models; Mathematical model; Probabilistic logic; Testing; Training; E-commerce; Information Retrieval; Local Influence; Recommendation; Topic Models; User Behavior;
Conference_Titel :
e-Business Engineering (ICEBE), 2014 IEEE 11th International Conference on
Conference_Location :
Guangzhou
Print_ISBN :
978-1-4799-6562-5
DOI :
10.1109/ICEBE.2014.29