Neural networks for machine learning applications

Sanjay Lote 1, *, Praveena K B 2 and Durugappa Patrer 2

1 Department of CSE, Government Polytechnic Athani, Karnataka, India.
2 Department of CSE, Government Polytechnic Harihar, Karnataka, India.
 
Review Article
World Journal of Advanced Research and Reviews, 2020, 06(01), 270–282
Article DOI: 10.30574/wjarr.2020.6.1.0055
 
Publication history: 
Received on 16 March 2020; revised on 24 April 2020; accepted on 27 April 2020
 
Abstract: 
Neural networks have emerged as a cornerstone in the field of machine learning, driving significant advancements across various domains such as computer vision, natural language processing, and autonomous systems. This paper explores the fundamental principles of neural networks, including their structural design, activation functions, and training algorithms. Key architectures such as feedforward neural networks, convolutional neural networks, recurrent neural networks, and generative adversarial networks are discussed in detail, highlighting their unique capabilities and applications. The training process of neural networks, involving techniques like backpropagation and gradient descent, is examined alongside methods to enhance performance and prevent overfitting, such as regularization and optimization strategies. This paper also reviews major applications of neural networks, showcasing their impact on image and speech recognition, language translation, and autonomous vehicles. Recent advancements in the field, including the rise of deep learning, improved model explainability, and the development of specialized hardware accelerators, are analyzed to provide insights into current trends and future prospects. The ongoing research in areas like unsupervised learning, few-shot learning, and the integration of neural networks with other AI paradigms is highlighted as a promising avenue for further innovation. By providing a comprehensive overview of neural networks and their applications, this paper underscores their transformative role in advancing machine learning technologies and anticipates future developments that will continue to shape the landscape of artificial intelligence.
 
Keywords: 
Machine Learning; Neural Network; Machine Learning; Deep learning
 
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