Text Mining with Probabilistic Topic Models: Applications in Information Retrieval and Concept Modeling - Chaitanya Chemudugunta - Libros - LAP LAMBERT Academic Publishing - 9783838364100 - 14 de septiembre de 2010
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Text Mining with Probabilistic Topic Models: Applications in Information Retrieval and Concept Modeling

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Statistical topic models are a class of probabilistic latent variable models for textual data that represent text documents as distributions over topics. These models have been shown to produce interpretable summarization of documents in the form of topics. In this book, we describe how the statistical topic modeling framework can be used for information retrieval tasks and for the integration of background knowledge in the form of semantic concepts. We first describe the special-words topic models in which a document is represented as a distribution of (i) a mixture of shared topics, (ii) a special-words distribution specific to the document, and (iii) a corpus-level background distribution. We describe the utility of the special-words topic models for information retrieval tasks. We next describe the problem of integrating background knowledge in the form of semantic concepts into the topic modeling framework. To combine data-driven topics and semantic concepts, we describe the concept-topic model and the hierarchical concept-topic model which represent a document as a distribution over data-driven topics and semantic concepts.

Medios de comunicación Libros     Paperback Book   (Libro con tapa blanda y lomo encolado)
Publicado 14 de septiembre de 2010
ISBN13 9783838364100
Editores LAP LAMBERT Academic Publishing
Páginas 140
Dimensiones 226 × 8 × 150 mm   ·   213 g
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