2021
DOI: 10.3384/ecp184170
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A Supervised Machine Learning Approach for Post-OCR Error Detection for Historical Text

Abstract: Training machine learning models with high accuracy requires careful feature engineering, which involves finding the best feature combinations and extracting their values from the data. The task becomes extremely laborious for specific problems such as post Optical Character Recognition (OCR) error detection because of the diversity of errors in the data. In this paper we present a machine learning approach which exploits character n-gram statistics as the only feature for the OCR error detection task. Our met… Show more

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