
Linguistic mastery: Advances in natural language processing
- 1 Department of Computer science and Engineering, Dr.M.G.R Educational and Research Institute of Technology, Madhuravoyal, chennai-95,TamilNadu, India
- 2 Department of Computer science and Engineering, Dr.M.G.R Educational and Research Institute of Technology, Madhuravoyal, chennai-95,TamilNadu, India
- 3 Department of Computer science and Engineering, Dr.M.G.R Educational and Research Institute of Technology, Madhuravoyal, chennai, India
- 4 Department of Computer science and Engineering, Dr.M.G.R Educational and Research Institute of Technology, Madhuravoyal, chennai-95,TamilNadu, India
* Author to whom correspondence should be addressed.
Abstract
NLPstands for Natural Language Processing, it is a kind of artificial intelligence. That demonstrate with scrutinize, understanding, and accuse natural human languages. In such a manner that analog procedure would get in touch and human language excluding computer-propel language like programming language such as c, c++, python, javascript. NLP field contains the intellect computer programming into an understanding language which is understandable by humans. So, powerful algorithms can even interpret one language into another language scrupulously. Natural language processing occasionally also known as “computational linguistics”, it uses semantics and syntax. It assists computers to acknowledge how humans talk or write and also it will know how to deduce meaning of words that they are saying. A language is designate as a synchronize of rules and symbols. These Symbol are amalgamated and used for disseminate the data as well as make contact to other resources. Symbols are potentiate by the rules and regulations.
Keywords
spam filtering, dialogue system, machine translation, text categorization, information extraction
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Cite this article
S.,S.;L.,S.G.;Priyatharsini,G.S.;Geetha,S. (2023). Linguistic mastery: Advances in natural language processing. Applied and Computational Engineering,20,13-18.
Data availability
The datasets used and/or analyzed during the current study will be available from the authors upon reasonable request.
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