LGJun 18, 2022

Piecewise Linear Neural Networks and Deep Learning

arXiv:2206.09149v142 citationsh-index: 88
Originality Synthesis-oriented
AI Analysis

This is an incremental review paper that synthesizes existing knowledge on PWLNNs for researchers in machine learning and deep learning.

The paper provides a systematic primer on Piecewise Linear Neural Networks (PWLNNs), tracing their evolution from shallow models to deep learning applications, highlighting their success in various tasks with advantageous performances.

As a powerful modelling method, PieceWise Linear Neural Networks (PWLNNs) have proven successful in various fields, most recently in deep learning. To apply PWLNN methods, both the representation and the learning have long been studied. In 1977, the canonical representation pioneered the works of shallow PWLNNs learned by incremental designs, but the applications to large-scale data were prohibited. In 2010, the Rectified Linear Unit (ReLU) advocated the prevalence of PWLNNs in deep learning. Ever since, PWLNNs have been successfully applied to extensive tasks and achieved advantageous performances. In this Primer, we systematically introduce the methodology of PWLNNs by grouping the works into shallow and deep networks. Firstly, different PWLNN representation models are constructed with elaborated examples. With PWLNNs, the evolution of learning algorithms for data is presented and fundamental theoretical analysis follows up for in-depth understandings. Then, representative applications are introduced together with discussions and outlooks.

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