作者
Pooja Chopra, Vijay Suresh Gollamandala, Ahmed Najat Ahmed, SBG Tilak Babu, Chamandeep Kaur, N Achyutha Prasad, Stephen Jeswinde Nuagah
发表日期
2022/5
期刊
Mobile Information Systems
卷号
2022
页码范围
1 - 10
出版商
Hindawi
简介
Traditionally, nonlinear data processing has been approached via the use of polynomial filters, which are straightforward expansions of many linear methods, or through the use of neural network techniques. In contrast to linear approaches, which often provide algorithms that are simple to apply, nonlinear learning machines such as neural networks demand more computing and are more likely to have nonlinear optimization difficulties, which are more difficult to solve. Kernel methods, a recently developed technology, are strong machine learning approaches that have a less complicated architecture and give a straightforward way to transforming nonlinear optimization issues into convex optimization problems. Typical analytical tasks in kernel‐based learning include classification, regression, and clustering, all of which are compromised. For image processing applications, a semisupervised deep learning …
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