This work presents a recommender system of economic news articles. Its objectives are threefold: (i) managing the vocabulary of the economic news domain to improve the system based on the seamlessly intervention of the documentalist (ii) automatically multi-classify the economic new articles and users profiles based on the domain vocabulary, and (iii) recommend the articles by comparing the multiclassification of the articles and profiles of the users. While several solutions exist to recommend news, multi-classify document and compare representations of items and profiles. They are not automatically adaptable to provide a mutual answer to previous points. Even more, existing approaches lacks substantial correlation with the human and in particular with the documentalist perspective.
CITATION STYLE
Werner, D., Hassan, T., Bertaux, A., Cruz, C., & Silva, N. (2015). Semantic-based recommender system with human feeling relevance measure. Studies in Computational Intelligence, 591, 177–191. https://doi.org/10.1007/978-3-319-14654-6_11
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