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Aktuelle Version vom 16. Oktober 2009, 17:22 Uhr


Learning Concept Hierarchies from Text Corpora using Formal Concept Analysis




Published: 2004 November
Institution: Insitute AIFB, University of Karlsruhe
Archivierungsnummer: 783

BibTeX



Kurzfassung
We present a novel approach to the automatic acquisition of taxonomies or concept hierarchies from a text corpus. The approach is based on Formal Concept Analysis (FCA), a method mainly used for the analysis of data, i.e. for investigating and processing explicitly given information. We follow Harris' distributional hypothesis and model the context of a certain term as a vector representing syntactic dependencies which are automatically acquired from the text corpus with a linguistic parser. On the basis of this context information, FCA produces a lattice that we convert into a special kind of partial order constituting a concept hierarchy. The approach is evaluated by comparing the resulting concept hierarchies with hand-crafted taxonomies for two domains: tourism and finance. We also directly compare our approach with hierarchical agglomerative clustering as well as with Bi-Section-KMeans as an instance of a divisive clustering algorithm. Furthermore, we investigate the impact of using different measures weighting the contribution of each attribute as well as of applying a particular smoothing technique to cope with data sparseness.

Download: Media:2004_783_Cimiano_Learning_Concep_1.pdf,Media:2004_783_Cimiano_Learning_Concep_1.ps

Projekt

Dot.Kom



Forschungsgruppe

Wissensmanagement


Forschungsgebiet

Ontology Learning