The roots of backpropagation : from ordered derivatives to neural networks and political forecasting
Author(s)
Bibliographic Information
The roots of backpropagation : from ordered derivatives to neural networks and political forecasting
(Adaptive and learning systems for signal processing, communications, and control)(A Wiley-Interscience publication)
J. Wiley & Sons, c1994
- cloth:alk.paper
Available at / 18 libraries
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Hiroshima University Central Library, Interlibrary Loan
cloth:alk.paper007.1:W-53/HL4010004000402460
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Note
Published simultaneously in Canada
Originally presented as the author's thesis (Ph. D.--Harvard, 1974)
Includes bibliographical references and index
Description and Table of Contents
Description
Now, for the first time, publication of the landmark work inbackpropagation! Scientists, engineers, statisticians, operationsresearchers, and other investigators involved in neural networkshave long sought direct access to Paul Werbos's groundbreaking,much-cited 1974 Harvard doctoral thesis, The Roots ofBackpropagation, which laid the foundation of backpropagation. Now,with the publication of its full text, these practitioners can gostraight to the original material and gain a deeper, practicalunderstanding of this unique mathematical approach to socialstudies and related fields. In addition, Werbos has provided threemore recent research papers, which were inspired by his originalwork, and a new guide to the field. Originally written for readerswho lacked any knowledge of neural nets, The Roots ofBackpropagation firmly established both its historical andcontinuing significance as it:
* Demonstrates the ongoing value and new potential ofbackpropagation
* Creates a wealth of sound mathematical tools useful acrossdisciplines
* Sets the stage for the emerging area of fast automaticdifferentiation
* Describes new designs for forecasting and control which exploitbackpropagation
* Unifies concepts from Freud, Jung, biologists, and others into anew mathematical picture of the human mind and how it works
* Certifies the viability of Deutsch's model of nationalism as apredictive tool--as well as the utility of extensions of thiscentral paradigm
"What a delight it was to see Paul Werbos rediscover Freud'sversion of 'back-propagation.' Freud was adamant (in The Projectfor a Scientific Psychology) that selective learning could onlytake place if the presynaptic neuron was as influenced as is thepostsynaptic neuron during excitation. Such activation of bothsides of the contact barrier (Freud's name for the synapse) wasaccomplished by reducing synaptic resistance by the absorption of'energy' at the synaptic membranes. Not bad for 1895! But Werbos1993 is even better." --Karl H. Pribram Professor Emeritus,Stanford University
Table of Contents
THESIS.
Beyond Regression: New Tools for Prediction and Analysis in theBehavioral Sciences.
Dynamic Feedback, Statistical Estimation, and Systems Optimization:General Techniques.
The Multivariate ARMA(1,1) Model: Its Significance andEstimation.
Simulation Studies of Techniques of Time-Series Analysis.
General Applications of These Ideas: Practical Hazards and NewPossibilities.
Nationalism and Social Communications: A Test Case for MathematicalApproaches.
APPLICATIONS AND EXTENSIONS.
Forms of Backpropagation for Sensitivity Analysis, Optimization,and Neural Networks.
Backpropagation Through Time: What It Does and How to Do It.
Neurocontrol: Where It Is Going and Why It Is Crucial.
Neural Networks and the Human Mind: New Mathematics Fits HumanisticInsight.
Index.
by "Nielsen BookData"