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Assessing the impact of OCR quality on downstream NLP tasks

Accepted version
Peer-reviewed

Type

Conference Object

Change log

Abstract

A growing volume of heritage data is being digitized and made available as text via optical character recognition (OCR). Scholars and libraries are increasingly using OCR-generated text for retrieval and analysis. However, the process of creating text through OCR introduces varying degrees of error to the text. The impact of these errors on natural language processing (NLP) tasks has only been partially studied. We perform a series of extrinsic assessment tasks — sentence segmentation, named entity recognition, dependency parsing, information retrieval, topic modelling and neural language model fine-tuning — using popular, out-of-the-box tools in order to quantify the impact of OCR quality on these tasks. We find a consistent impact resulting from OCR errors on our downstream tasks with some tasks more irredeemably harmed by OCR errors. Based on these results, we offer some preliminary guidelines for working with text produced through OCR.

Description

Keywords

Optical Character Recognition, OCR, Digital Humanities, Natural Language Processing, NLP, Information Retrieval

Journal Title

ICAART 2020 - Proceedings of the 12th International Conference on Agents and Artificial Intelligence

Conference Name

Special Session on Artificial Intelligence and Digital Heritage: Challenges and Opportunities

Journal ISSN

Volume Title

1

Publisher

SCITEPRESS - Science and Technology Publications

Rights

All rights reserved
Sponsorship
Alan Turing Institute (EP/N510129/1)
AHRC (via Alan Turing Institute) (Unknown)