Leveraging Subjective Human Annotation for Clustering Historic Newspaper Articles
Haimonti Dutta, William Chan, Deepak Shankargouda, Manoj Pooleery,, Axinia Radeva, Kyle Rego, Boyi Xie, Rebecca Passonneau, Austin Lee and, Barbara Taranto

TL;DR
This paper investigates automatic categorization of historic newspaper articles using subjective human annotations, employing unsupervised and semi-supervised learning to improve searchability in large archives.
Contribution
It introduces a novel approach that incorporates subjective human annotations into clustering algorithms for better newspaper article categorization.
Findings
Subjectivity in categorization tasks was confirmed through a pilot study.
Semi-supervised clustering algorithms effectively handled subjective labels.
The BODHI system facilitates user correction and tagging, aiding future annotation efforts.
Abstract
The New York Public Library is participating in the Chronicling America initiative to develop an online searchable database of historically significant newspaper articles. Microfilm copies of the newspapers are scanned and high resolution Optical Character Recognition (OCR) software is run on them. The text from the OCR provides a wealth of data and opinion for researchers and historians. However, categorization of articles provided by the OCR engine is rudimentary and a large number of the articles are labeled editorial without further grouping. Manually sorting articles into fine-grained categories is time consuming if not impossible given the size of the corpus. This paper studies techniques for automatic categorization of newspaper articles so as to enhance search and retrieval on the archive. We explore unsupervised (e.g. KMeans) and semi-supervised (e.g. constrained clustering)…
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Taxonomy
TopicsHandwritten Text Recognition Techniques · Web Data Mining and Analysis · Data Quality and Management
