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Using Covariance as a Similarity Measure for Document Language Identification in Hard Contexts

Abstract

2000 Mathematics Subject Classification: C2P99.Existing Language Identification (LID) approaches achieve 100% precision in most common situations, dealing with sufficiently large documents, written in just one language. However, there are many situations where text language is hard to identify and where current LID approaches do not provide a reliable solution. One such situation occurs when it is necessary to discriminate the correct variant of the language used in a text. In this paper, we present a fully statistics-based LID approach which is shown to be correct for common texts and maintains its robustness when classifying hard LID documents. For that, character sequences were used as base features. The Discriminant Ability of each sequence, in each training situation, is measured and used to filter out less important character sequences. Document similarity measure, based on the covariance concept, was defined. In the training phase, document clusters are built in a reduced k uncorrelated dimensions space. In the classification phase the Quadratic Discriminant Score decides which cluster (language) must be assigned to the documents one needs to classify

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