2 research outputs found

    The use of machine learning algorithms in recommender systems: A systematic review

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    The final publication is available at Elsevier via https://doi.org/10.1016/j.eswa.2017.12.020 © 2018. This manuscript version is made available under the CC-BY-NC-ND 4.0 license http://creativecommons.org/licenses/by-nc-nd/4.0/Recommender systems use algorithms to provide users with product or service recommendations. Recently, these systems have been using machine learning algorithms from the field of artificial intelligence. However, choosing a suitable machine learning algorithm for a recommender system is difficult because of the number of algorithms described in the literature. Researchers and practitioners developing recommender systems are left with little information about the current approaches in algorithm usage. Moreover, the development of recommender systems using machine learning algorithms often faces problems and raises questions that must be resolved. This paper presents a systematic review of the literature that analyzes the use of machine learning algorithms in recommender systems and identifies new research opportunities. The goals of this study are to (i) identify trends in the use or research of machine learning algorithms in recommender systems; (ii) identify open questions in the use or research of machine learning algorithms; and (iii) assist new researchers to position new research activity in this domain appropriately. The results of this study identify existing classes of recommender systems, characterize adopted machine learning approaches, discuss the use of big data technologies, identify types of machine learning algorithms and their application domains, and analyzes both main and alternative performance metrics.Natural Sciences and Engineering Research Council of Canada (NSERC) Ontario Research Fund of the Ontario Ministry of Research, Innovation, and Scienc

    Y.: A Web Recommendation System Based on Maximum Entropy

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    We propose a Web recommendation system based on a maximum entropy model. Under the maximum entropy principle, we can combine multiple levels of knowledge about users ’ navigational behavior in order to automatically generate the most effective recommendations for new users with similar profiles. The knowledge include the page-level statistics about users’ historically visited pages, and the aggregate usage patterns discovered through Web usage mining. In particular, we use a Web mining framework based on Probabilistic Latent Semantic Analysis to discover the underlying interests of Web users as well as temporal changes in these interests. Our experiments show that our recommendation system can achieve better accuracy when compared to standard approaches, while providing a better interpretation of Web users ’ diverse navigational behavior.
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