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Showing papers by "Ted Underwood published in 2017"


DOI
01 Mar 2017
TL;DR: The Extracted Features (EF) dataset is developed, a dataset of quantitative counts for every page of nearly 5 million scanned books that includes unigram counts, part of speech tagging, header and footer extraction, counts of characters at both sides of the page, and more.
Abstract: Consortial collections have led to unprecedented scales of digitized corpora, but the insights that they enable are hampered by the complexities of access, particularly to in-copyright or orphan works. Pursuing a principle of non-consumptive access, we developed the Extracted Features (EF) dataset, a dataset of quantitative counts for every page of nearly 5 million scanned books. The EF includes unigram counts, part of speech tagging, header and footer extraction, counts of characters at both sides of the page, and more. Distributing book data with features already extracted saves resource costs associated with large-scale text use, improves the reproducibility of research done on the dataset, and opens the door to datasets on copyrighted books. We describe the coverage of the dataset and demonstrate its useful application through duplicate book alignment and identification of their cleanest scans, topic modeling, word list expansion, and multifaceted visualization.

10 citations