Fr. 57.50

Semantic and Syntactic Errors Detection Using NLP

English · Paperback / Softback

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Description

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Syntactic analysis is the third phase of NLP. By its name, it can be easily understood that it is used to analyze syntax, sometimes known as syntax or parsing analysis. This step aims to extract precise, or dictionary-like, semantics from the text. Syntax analysis compares the text to formal grammar rules to determine its meaning. Standard LR parsers typically resolve syntax errors and their precise location poorly. A methodology is proposed which helps to locate where syntax errors occur, but also suggests possible changes to the token stream that can fix the error identified. This methodology finds syntax errors by checking if two language models "agree" on each token. If the models disagree, it indicates a possible syntax error; the methodology tries to suggest a fix by finding an alternative token sequence obtained from the models.

About the author










D. Naga Swetha, travaille comme professeur adjoint à l'Institut de technologie et de sciences G. Narayanamma (pour les femmes). A travaillé en tant qu'analyste commercial, consultant technique et consultant adjoint chez Tech Mahindra de juin 2009 à 2013. A obtenu un B.Tech et un M. Tech dans la spécialisation CSE. Poursuit son doctorat à l'université K L Deemed to be sur l'informatique dématérialisée (Cloud Computing).

Product details

Authors D. Naga Swetha
Publisher LAP Lambert Academic Publishing
 
Languages English
Product format Paperback / Softback
Released 07.07.2023
 
EAN 9786206737407
ISBN 9786206737407
No. of pages 60
Subject Natural sciences, medicine, IT, technology > Technology > Miscellaneous

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