2023
DOI: 10.21203/rs.3.rs-3415317/v1
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Persian Typographical Error Type Detection Using Deep Neural Networks on Algorithmically-Generated Misspellings

Mohammad Dehghani,
Heshaam Faili

Abstract: Spelling correction is a remarkable challenge in the field of natural language processing. The objective of spelling correction tasks is to recognize and rectify spelling errors automatically. The development of applications that can effectually diagnose and correct Persian spelling and grammatical errors has become more important in order to improve the quality of Persian text. The Typographical Error Type Detection in Persian is a relatively understudied area. Therefore, this paper presents a compelling appr… Show more

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