Scope and Challenges in Conversational AI using Transformer Models

Autor: null Arighna Chakraborty, null Asoke Nath
Rok vydání: 2021
Zdroj: International Journal of Scientific Research in Computer Science, Engineering and Information Technology. :372-384
ISSN: 2456-3307
DOI: 10.32628/cseit217696
Popis: Conversational AI is an interesting problem in the field of Natural Language Processing and combines natural language processing with machine learning. There has been quite a lot of advancements in this field with each new model architecture capable of processing more data, better optimisation and execution, handling more parameters and having higher accuracy and efficiency. This paper discusses various trends and advancements in the field of natural language processing and conversational AI like RNNs and RNN based architectures such as LSTMs, Sequence to Sequence models, and finally, the Transformer networks, the latest in NLP and conversational AI. The authors have given a comparison between the various models discussed in terms of efficiency/accuracy and also discussed the scope and challenges in Transformer models.
Databáze: OpenAIRE