Article ID Journal Published Year Pages File Type
381976 Expert Systems with Applications 2016 22 Pages PDF
Abstract

•A semantic framework for recommender systems is presented.•An in-depth analysis of different Natural Language Processing resources is showed.•A description of different Natural Language Processing approaches is addressed.•Related research works are described.•A case of study to evaluate our proposal with real data is presented.

In this work we present a semantic framework suitable of being used as support tool for recommender systems. Our purpose is to use the semantic information provided by a set of integrated resources to enrich texts by conducting different NLP tasks: WSD, domain classification, semantic similarities and sentiment analysis. After obtaining the textual semantic enrichment we would be able to recommend similar content or even to rate texts according to different dimensions. First of all, we describe the main characteristics of the semantic integrated resources with an exhaustive evaluation. Next, we demonstrate the usefulness of our resource in different NLP tasks and campaigns. Moreover, we present a combination of different NLP approaches that provide enough knowledge for being used as support tool for recommender systems. Finally, we illustrate a case of study with information related to movies and TV series to demonstrate that our framework works properly.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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