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[ACM Press the fourth ACM conference - Barcelona, Spain (2010.09.26-2010.09.30)] Proceedings of the fourth ACM conference on Recommender systems - RecSys '10 - Enhanced vector space models for content-based recommender systems

โœ Scribed by Musto, Cataldo


Book ID
118015446
Publisher
ACM Press
Year
2010
Weight
418 KB
Volume
0
Category
Article
ISBN
1605589063

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โœฆ Synopsis


The use of Vector Space Models (VSM) in the area of Information Retrieval is an established practice within the scientific community. The reason is twofold: first, its very clean and solid formalism allows us to represent objects in a vector space and to perform calculations on them. On the other hand, as proved by many contributions, its simplicity does not hurt the effectiveness of the model. Although Information Retrieval and Information Filtering undoubtedly represent two related research areas, the use of VSM in Information Filtering is much less analzyed.The goal of this work is to investigate the impact of vector space models in the Information Filtering area. Specifically, I will introduce two approaches: the first one, based on a technique called Random Indexing, reduces the impact of two classical VSM problems, this is to say its high dimensionality and the inability to manage the semantics of documents. The second extends the previous one by integrating a negation operator implemented in the Semantic Vectors 1 open-source package. The results emerged from an experimental evaluation performed on a large dataset and the applicative scenarios opened by these approaches confirmed the effectiveness of the model and induced to investigate more these techniques.


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