Machine Learning for Natural Language Processing: Techniques and Evaluation

https://doi.org/10.55529/jaimlnn.33.1.9

Authors

  • Piyush Raja Assistant Professor, Department of CSE, COER University, Roorkee, Uttarakhand, India
  • Dr. Santosh Kumar Assistant Professor, PSIT College of Higher Education, Kanpur, India
  • Digvijay Singh Yadav Assistant Professor, Department of CSE, COER University, Roorkee, Uttarakhand, India
  • Dr. Amit Kumar Assistant Professor, Department of CS, Gaya College Gaya, Bihar, India
  • Ram Krishna Kumar Research Scholar, Department of CS, Magadh University, Bodh Gaya, Bihar, India

Keywords:

NLP, CNN, RNN, Clustering, Topic Modelling, Machine Learning.

Abstract

The purpose of this research study is to analyse the approaches that are used in machine learning for the solution of natural language processing (NLP) issues. Also, the assessment criteria that are used in the performance analysis of these models are looked at as part of this investigation. We investigate the challenges that come with using machine learning for natural language processing (NLP), including the issue of data bias and the need that these models have the capacity to be explained. Research is conducted into a variety of supervised and unsupervised learning approaches, including as neural networks, topic modelling, and clustering. Also, a number of evaluation metrics, such as accuracy, precision, recall, and F1 score, are discussed. As the research comes to a conclusion, it is highlighted how important it is to find solutions to problems like data bias and the inability to explain results. This is done in order to ensure that the results generated by machine learning models for natural language processing are accurate and unbiased.

Published

2023-04-03

How to Cite

Piyush Raja, Dr. Santosh Kumar, Digvijay Singh Yadav, Dr. Amit Kumar, & Ram Krishna Kumar. (2023). Machine Learning for Natural Language Processing: Techniques and Evaluation. Journal of Artificial Intelligence,Machine Learning and Neural Network (JAIMLNN) ISSN: 2799-1172, 3(03), 1–9. https://doi.org/10.55529/jaimlnn.33.1.9