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A new topology for artificial higher order neural networks: Polynomial kernel networks

Zhao Lu, Leang-San Shieh, Guanrong Chen

Research output: Chapters, Conference Papers, Creative and Literary WorksRGC 12 - Chapter in an edited book (Author)peer-review

Abstract

Aiming to develop a systematic approach for optimizing the structure of artificial higher order neural networks (HONN) for system modeling and function approximation, a new HONN topology, namely polynomial kernel network, is proposed in this chapter. Structurally, the polynomial kernel network can be viewed as a three-layer feedforward neural network with a special polynomial activation function for the nodes in the hidden layer. The new network is equivalent to a HONN; however, due to the underlying connections with polynomial kernel support vector machines, the weights and the structure of the network can be determined simultaneously using structural risk minimization. The advantage of the topology of the polynomial kernel network and the use of a support vector kernel expansion pave the way to represent nonlinear functions or systems, and underpins some advanced analysis of the network performance. In this chapter, from the perspective of network complexity, both quadratic programming and linear programming based training of the polynomial kernel network are investigated. © 2009, IGI Global.
Original languageEnglish
Title of host publicationArtificial Higher Order Neural Networks for Economics and Business
EditorsMing Zhang
Place of PublicationHershey
PublisherIGI Global Publishing
Pages430-441
ISBN (Electronic)9781599048987, 1599048981
ISBN (Print)9781599048970, 1599048973
DOIs
Publication statusPublished - 2009

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