2018
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Mattia Egloff et al., « Taking into account semantic similarities in correspondence analysis », Serveur académique Lausannois, ID : 10670/1.mn9mdr
Term-document matrices feed most distributional approaches to quantitative textual studies, without consideration for the semantic similarities between terms, whose presence arguably reduce the content variety. This contribution presents a formalism remedying this omission, and makes an explicit use of the semantic similarities as extracted from WordNet. A case study in similarity-reduced correspondence analysis illustrates the proposal.