NLP with Deep Learning Approaches in Text Generation

M.Sharmila DeviAssistant Professor, Department of Computer Science & Engineering, Santhiram Engineering College, Nandyal, A.P, IndiaV.SamathaStudent, Department of Computer Science & Engineering, Santhiram Engineering College, Nandyal, A.P, IndiaV.Naga LavanyaStudent, Department of Computer Science & Engineering, Santhiram Engineering College, Nandyal, A.P, IndiaV.SrividyaStudent, Department of Computer Science & Engineering, Santhiram Engineering College, Nandyal, A.P, IndiaM.RehanaStudent, Department of Computer Science & Engineering, Santhiram Engineering College, Nandyal, A.P, IndiaK.AnushaStudent, Department of Computer Science & Engineering, Santhiram Engineering College, Nandyal, A.P, India

Vol 9 No 25 (2025): Volume 9, Special Issue of INSPIRE’25 April 2025 | Pages: 159-163

International Research Journal of Innovations in Engineering and Technology

OPEN ACCESS | Research Article | Published Date: 24-04-2025

doi Logo doi.org/10.47001/IRJIET/2025.INSPIRE26

Abstract

Text generation is the process of automatically producing coherent and meaningful text, which can be in the form of sentences, paragraphs or even entire documents. It involves various techniques, which can be found under the field such as Natural Language Processing (NLP) and deep learning algorithms, to analyze input data and generate human-like text. The goal is to create text that is not only grammatically correct but also contextually appropriate and engaging for the intended audience. In advance we want to focus on text summarization because for generating text includes correct formation of sentence and reduce the user difficulty. Here we use deep learning techniques like Recurrent neural network (RNN), Generative pre-trained transformer (GPT), Bi-directional encoder representations from transformers (BERT). Text summarization models often face challenges such as lack of precision, vocabulary limitations, incorrect sentences, and false information.

Keywords

RNN, CNN, Text Generation, NLP, BERT


Citation of this Article

M.Sharmila Devi, V.Samatha, V.Naga Lavanya, V.Srividya, M.Rehana, & K.Anusha. (2025). NLP with Deep Learning Approaches in Text Generation. In proceeding of International Conference on Sustainable Practices and Innovations in Research and Engineering (INSPIRE'25), published by IRJIET, Volume 9, Special Issue of INSPIRE’25, pp 159-163. Article DOI https://doi.org/10.47001/IRJIET/2025.INSPIRE26

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