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Classifying encyclopedia articles: Comparing machine and deep learning methods and exploring their predictions

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Article number102098
<mark>Journal publication date</mark>30/11/2022
<mark>Journal</mark>Data and Knowledge Engineering
Volume142
Publication StatusPublished
Early online date14/11/22
<mark>Original language</mark>English

Abstract

This article presents a comparative study of supervised classification approaches applied to the automatic classification of encyclopedia articles written in French. Our dataset is composed of 17 volumes of text from the Encyclopédie by Diderot and d'Alembert (1751-72) including about 70,000 articles. We combine text vectorization (bag-of-words and word embeddings) with machine learning methods, deep learning, and transformer architectures. In addition evaluating these approaches, we review the classification predictions using a variety of quantitative and qualitative methods. The best model obtains 86% as an average f-score for 38 classes. Using network analysis we highlight the difficulty of classifying semantically close classes. We also introduce examples of opportunities for qualitative evaluation of "misclassifications" in order to understand the relationship between content and different ways of ordering knowledge. We openly release all code and results obtained during this research.