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Automatic thematic classification of election manifestos
Authors:Suzan Verberne  Eva D’hondt  Antal van den Bosch  Maarten Marx
Institution:1. Centre for Language Studies and Institute for Computing and Information Sciences, Radboud University, Nijmegen, Netherlands;2. Centre for Language Studies, Radboud University, Nijmegen, Netherlands;3. Informatics Institute, University of Amsterdam, Netherlands
Abstract:We digitized three years of Dutch election manifestos annotated by the Dutch political scientist Isaac Lipschits. We used these data to train a classifier that can automatically label new, unseen election manifestos with themes. Having the manifestos in a uniform XML format with all paragraphs annotated with their themes has advantages for both electronic publishing of the data and diachronic comparative data analysis. The data that we created will be disclosed to the public through a search interface. This means that it will be possible to query the data and filter them on themes and parties. We optimized the Lipschits classifier on the task of classifying election manifestos using models trained on earlier years. We built a classifier that is suited for classifying election manifestos from 2002 onwards using the data from the 1980s and 1990s. We evaluated the results by having a domain expert manually assess a sample of the classified data. We found that our automatic classifier obtains the same precision as a human classifier on unseen data. Its recall could be improved by extending the set of themes with newly emerged themes. Thus when using old political texts to classify new texts, work is needed to link and expand the set of themes to newer topics.
Keywords:Text classification  Political data  Expert evaluation
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