A Review of Natural Language Processing Techniques in Word Processing Applications
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A Review of Natural Language Processing Techniques in Word Processing Applications
Authors:
Devansh Saini
Information technology Meerut Institute of
Engineering and Technology Meerut, India devansh.saini.itl.2021@miet.ac.in
Dev Saini
Information technology Meerut Institute of
Engineering and Technology Meerut, India dev.saini.it.2021@miet.ac.in
Nadeem Anwar
Information technology Meerut Institute of
Engineering and Technology Meerut, India nadeem.anwar@miet.ac.in
Abstract—The paper underscores the use of Natural Language Processing (NLP) in modern word processors and its application for improving engagement among users through context-based suggestions, grammar correction, and sentiment analysis. This study brings to the fore the part that NLP algorithms play in mechanizing writing by providing feedback in real-time and intel- ligent text suggestions that increase writing speed and efficiency. The paper will further show that NLP can create an intuitive writing experience by enabling users to unleash their creativity in expressing effective thoughts. A comparative analysis of existing NLP-integrated word processors points out the main strengths and improvements suggested. It cumulatively reaffirms that NLP is changing the superstructure of word processors, whereby the digital space for writing is oiled to meet mixed requirements of assorted forms of users. Natural Language Processing (NLP) has gained significant prominence in recent years, contributing to a wide range of applications including machine translation, email spam detection, information extraction, summarization, and more. This paper outlines the four phases of NLP, discussing its various levels and components, particularly Natural Language Generation (NLG). It also traces the history and evolution of NLP and presents current trends, challenges, and applications. In addition, the paper provides an overview of datasets, models, and evaluation metrics used in NLP research and development.
Keywords: Natural Language Processing, Natural Language Generation, NLP Evaluation Metrics, Word Processing
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