Inductive probabilistic taxonomy learning using singular value decomposition

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Detalles Bibliográficos
Publicado en:Natural Language Engineering vol. 17, no. 1 (Jan 2011), p. 71-94
Autor principal: FALLUCCHI, FRANCESCA
Otros Autores: ZANZOTTO, FABIO MASSIMO
Publicado:
Cambridge University Press
Materias:
Acceso en línea:Citation/Abstract
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Resumen:Abstract Capturing word meaning is one of the challenges of natural language processing (NLP). Formal models of meaning, such as networks of words or concepts, are knowledge repositories used in a variety of applications. To be effectively used, these networks have to be large or, at least, adapted to specific domains. Learning word meaning from texts is then an active area of research. Lexico-syntactic pattern methods are one of the possible solutions. Yet, these models do not use structural properties of target semantic relations, e.g. transitivity, during learning. In this paper, we propose a novel lexico-syntactic pattern probabilistic method for learning taxonomies that explicitly models transitivity and naturally exploits vector space model techniques for reducing space dimensions. We define two probabilistic models: the direct probabilistic model and the induced probabilistic model. The first is directly estimated on observations over text collections. The second uses transitivity on the direct probabilistic model to induce probabilities of derived events. Within our probabilistic model, we also propose a novel way of using singular value decomposition as unsupervised method for feature selection in estimating direct probabilities. We empirically show that the induced probabilistic taxonomy learning model outperforms state-of-the-art probabilistic models and our unsupervised feature selection method improves performance. [PUBLICATION ABSTRACT]
ISSN:1351-3249
1469-8110
2977-0424
DOI:10.1017/S1351324910000197
Fuente:Psychology Collection