A Meta-Analytical Review of Deep Learning Prediction Models for Big Data

Author:

Verma Parag1ORCID,Chaudhari Vaibhav2ORCID,Dumka Ankur3,Gangwar Raksh Pal Singh4

Affiliation:

1. Chitkara University Institute of Engineering and Technology, Chitkara University, India

2. Nutanix Technologies India Pvt. Ltd., Bengaluru, India

3. Women Institute of Technology, Dehradun, India & Graphic Era University (Deemed), Dehradun, India

4. Women Institute of Technology, India

Abstract

The article presents an introductory review of various approaches of deep learning including convolutional neural networks (CNNs), deep belief networks (DBNs), and auto-encoders (AEs). Each of these deep learning models is currently being used effectively in various fields such as medical application with healthcare systems, clinical trials, pharmacy industry, finance, agribusiness, energy industries, etc., and these models and all these models are extremely essential for any data scientist's toolbox. These deep learning models must build classes that should be flexibly designed, which can be useful in building new oriented application structure designs. Subsequently, for future development in the artificial intelligence-based technological world, it is important to have a necessary understanding of these deep learning models, which have been attempted to be refined through this systematic meta-analysis.

Publisher

IGI Global

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