Advancements in Language Processing Algorithms Transforming Linguistic Computing
Poonam Mishra, Tushar Pandey, Vandana Roy, Ramgopal Kashyap, Chhaya Chhaya, Ritu Ahluwalia
Abstract
New approaches that alter linguistic computing have resulted in breakthroughs in natural language processing. New technologies are to blame for these advancements. In this paper, we look at five cutting-edge methods: attention mechanisms, transformer models (like BERT and GPT), transfer learning (like ULMFiT), neural machine translation (NMT), and BERT-based embedded systems for tasks further down the line. All of these methodologies are considered to be at the forefront of their respective fields. When it comes to creating language, understanding language, and comprehending language in context, the integrated methodology is a way that is successful. To study the minute benefits that each technique provides in terms of sentiment analysis, language growth, and interaction between languages, the objective of this in-depth research is to investigate the implications of these advantages. A solution that is superior to others that came before it is produced because of the integration of cutting-edge models. As the field of linguistic computing continues to expand, this guide provides professionals and academics with assistance in making the most of new advancements to improve language processing platforms.