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Clustering-Based Article Identification in Historical Newspapers

2019-06-01WS 2019Code Available0· sign in to hype

Martin Riedl, Daniela Betz, Sebastian Pad{\'o}

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Abstract

This article focuses on the problem of identifying articles and recovering their text from within and across newspaper pages when OCR just delivers one text file per page. We frame the task as a segmentation plus clustering step. Our results on a sample of 1912 New York Tribune magazine shows that performing the clustering based on similarities computed with word embeddings outperforms a similarity measure based on character n-grams and words. Furthermore, the automatic segmentation based on the text results in low scores, due to the low quality of some OCRed documents.

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