A Deep Insight into Deep Learning Architectures, Algorithms and Applications

M. Jayasree, L. Rao
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Abstract

The current scenario expresses that deep learning is the leading technology in the field of machine learning. Deep learning is a form of artificial intelligence that effectively uses neural network concepts where the computing system is essentially a multi-layered mesh architecture, which is motivated by the human brain and nervous system. The multiple hidden layers of CNN extract higher level features from large datasets and its methodology are speedily becoming a best choice for every field. Deep learning methods have improved and are highly developed in object recognition, Natural Language Processing, classification of images, medical image analysis etc. This paper provides introduction of different deep learning architectures, algorithms and the optimization methods used to improve the accuracy and performance of the deep learning model. And also, described challenges, obstacles to be faced while training a deep learning model and introduced applications of deep learning in various fields.
深入了解深度学习架构、算法和应用
目前的场景表明,深度学习是机器学习领域的领先技术。深度学习是人工智能的一种形式,它有效地使用了神经网络概念,其中计算系统本质上是一个多层网格架构,它是由人类大脑和神经系统驱动的。CNN的多个隐藏层从大型数据集中提取更高层次的特征,其方法正迅速成为各个领域的最佳选择。深度学习方法在物体识别、自然语言处理、图像分类、医学图像分析等方面得到了改进和高度发展。本文介绍了不同的深度学习架构、算法以及用于提高深度学习模型的准确性和性能的优化方法。描述了深度学习模型训练过程中面临的挑战和障碍,并介绍了深度学习在各个领域的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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