Learning at Multiple Resolutions: Wavelets as Basis Functions in Artificial Neural Networks, and Inductive Decision Trees

Bakshi, Bhavik/ Koulouris, Alexandros/ Stephanopoulos, George/ Κουλούρης, Αλέξανδρος/ Στεφανόπουλος, Γεώργιος


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dc.contributor.authorBakshi, Bhavikel
dc.contributor.authorKoulouris, Alexandrosel
dc.contributor.authorStephanopoulos, Georgeel
dc.contributor.otherΚουλούρης, Αλέξανδροςel
dc.contributor.otherΣτεφανόπουλος, Γεώργιοςel
dc.date.accessioned2015-07-11T19:15:49Zel
dc.date.accessioned2018-02-28T16:07:57Z-
dc.date.available2015-07-11T19:15:49Zel
dc.date.available2018-02-28T16:07:57Z-
dc.date.issued1994el
dc.identifierhttp://link.springer.com/chapter/10.1007/978-1-4615-2708-4_5el
dc.identifier.citationWavelet Applications in Chemical Engineering, New York, 1994el
dc.identifier.citationBakshi, B., Koulouris, A. & Stephanopoulos, G. (1994). Learning at Multiple Resolutions: Wavelets as Basis Functions in Artificial Neural Networks, and Inductive Decision Trees. Wavelet Applications in Chemical Engineering. 272:139-174.el
dc.identifier.isbn978-1-4615-2708-4el
dc.identifier.isbn978-0-7923-9461-7el
dc.identifier.issn0893-3405el
dc.identifier.urihttp://195.251.240.227/jspui/handle/123456789/9985-
dc.descriptionΔημοσιεύσεις μελών--ΣΤΕΤ-Δ--Τμήμα Τεχνολογίας Τροφίμων--1994el
dc.description.abstractLearning at multiple resolutions provides a fast, hierarchical and efficient technique for extracting models from empirical data. In this chapter we describe the application of wavelets for multi-resolution learning in artificial neural networks and inductive decision trees, and show how wavelets may provide a unifying framework for various supervised learning techniques. A Wave-Net is an artificial neural network with activation functions derived from the class of wavelets. Wave- Nets combine the mathematically rigorous, multi-resolution character of wavelets with the adaptive learning of artificial neural networks. Learning with Wave-Nets is efficient, and is explicitly based on the local or global error of approximation. The advantages of Wave-Net learning over other artificial neural learning techniques are highlighted, and learning methods for minimizing the L2 or L∞ norms are described. The reduced black box character of Wave-Nets is demonstrated by the explicit relationship between Wave-Net parameters and the quality of learning, and by the ability to extract if-then rules from a Haar Wave-Net. The relationship between Haar Wave-Nets and other rule-extraction techniques such as decision trees is described.el
dc.language.isoenel
dc.publisherSpringer USel
dc.rightsThis item is probably protected by Copyright Legislationel
dc.rightsΤο τεκμήριο πιθανώς υπόκειται σε σχετική με τα Πνευματικά Δικαιώματα νομοθεσίαel
dc.source.urihttp://link.springer.com/book/10.1007/978-1-4615-2708-4el
dc.titleLearning at Multiple Resolutions: Wavelets as Basis Functions in Artificial Neural Networks, and Inductive Decision Treesel
dc.typeBookel
dc.typeArticleel
heal.typeotherel
heal.type.enOtheren
heal.dateAvailable2018-02-28T16:08:57Z-
heal.languageelel
heal.accessfreeel
heal.recordProviderΤΕΙ Θεσσαλονίκηςel
heal.fullTextAvailabilityfalseel
heal.type.elΆλλοel
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