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The Roots of Backpropagation: From Ordered Derivatives to Neural Networks and Political Forecasting (Adaptive and Learning Systems for Signal Processing, Communications and Control Series)
 
 
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The Roots of Backpropagation: From Ordered Derivatives to Neural Networks and Political Forecasting (Adaptive and Learning Systems for Signal Processing, Communications and Control Series) [Hardcover]

Paul John Werbos (Author)

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Book Description

January 1994 0471598976 978-0471598978 1
Now, for the first time, publication of the landmark work in backpropagation! Scientists, engineers, statisticians, operations researchers, and other investigators involved in neural networks have long sought direct access to Paul Werbos's groundbreaking, much-cited 1974 Harvard doctoral thesis, The Roots of Backpropagation, which laid the foundation of backpropagation. Now, with the publication of its full text, these practitioners can go straight to the original material and gain a deeper, practical understanding of this unique mathematical approach to social studies and related fields. In addition, Werbos has provided three more recent research papers, which were inspired by his original work, and a new guide to the field. Originally written for readers who lacked any knowledge of neural nets, The Roots of Backpropagation firmly established both its historical and continuing significance as it:
* Demonstrates the ongoing value and new potential of backpropagation
* Creates a wealth of sound mathematical tools useful across disciplines
* Sets the stage for the emerging area of fast automatic differentiation
* Describes new designs for forecasting and control which exploit backpropagation
* Unifies concepts from Freud, Jung, biologists, and others into a new mathematical picture of the human mind and how it works
* Certifies the viability of Deutsch's model of nationalism as a predictive tool--as well as the utility of extensions of this central paradigm
"What a delight it was to see Paul Werbos rediscover Freud's version of 'back-propagation.' Freud was adamant (in The Project for a Scientific Psychology) that selective learning could only take place if the presynaptic neuron was as influenced as is the postsynaptic neuron during excitation. Such activation of both sides of the contact barrier (Freud's name for the synapse) was accomplished by reducing synaptic resistance by the absorption of 'energy' at the synaptic membranes. Not bad for 1895! But Werbos 1993 is even better." --Karl H. Pribram Professor Emeritus, Stanford University

Editorial Reviews

From the Publisher

Features original papers on backpropagation, the most widely used algorithm in the artificial neural network field. Numerous examples of applications and theorems demonstrate how to calculate relevant derivatives at an acceptable cost. Reviews the latest developments in the neural network arena. Includes a tutorial on the methods commonly used to predict or optimize dynamic systems and an article describing more advanced concepts which may permit a truer understanding of intelligence as it exists in the human mind.

From the Back Cover

Now, for the first time, publication of the landmark work in backpropagation! Scientists, engineers, statisticians, operations researchers, and other investigators involved in neural networks have long sought direct access to Paul Werbos’s groundbreaking, much-cited 1974 Harvard doctoral thesis, The Roots of Backpropagation, which laid the foundation of backpropagation. Now, with the publication of its full text, these practitioners can go straight to the original material and gain a deeper, practical understanding of this unique mathematical approach to social studies and related fields. In addition, Werbos has provided three more recent research papers, which were inspired by his original work, and a new guide to the field. Originally written for readers who lacked any knowledge of neural nets, The Roots of Backpropagation firmly established both its historical and continuing significance as it:
  • Demonstrates the ongoing value and new potential of backpropagation
  • Creates a wealth of sound mathematical tools useful across disciplines
  • Sets the stage for the emerging area of fast automatic differentiation
  • Describes new designs for forecasting and control which exploit backpropagation
  • Unifies concepts from Freud, Jung, biologists, and others into a new mathematical picture of the human mind and how it works
  • Certifies the viability of Deutsch’s model of nationalism as a predictive tool—as well as the utility of extensions of this central paradigm
"What a delight it was to see Paul Werbos rediscover Freud’s version of ‘back-propagation.’ Freud was adamant (in The Project for a Scientific Psychology) that selective learning could only take place if the presynaptic neuron was as influenced as is the postsynaptic neuron during excitation. Such activation of both sides of the contact barrier (Freud’s name for the synapse) was accomplished by reducing synaptic resistance by the absorption of ‘energy’ at the synaptic membranes. Not bad for 1895! But Werbos 1993 is even better." —Karl H. Pribram Professor Emeritus, Stanford University

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Inside This Book (learn more)
First Sentence:
The initial impetus for this thesis came from a suggestion by Professor Karl Deutsch, my thesis supervisor, that I look more closely at the prediction of national assimilation and political mobilization, by use of the Deutsch-Solow model; his comments have been of major help to me with all the empirical work on nationalism and in revising the original structures of Chapters 5 and 6. Read the first page
Key Phrases - Statistically Improbable Phrases (SIPs): (learn more)
dynamic feedback method, rms average errors, acronym rms, adaptive critic systems, such test years, ext reg, percentage dominance, generalized backpropagation, verbal research, direct inverse control, assimilated population, national assimilation, basic backpropagation, sample time series, backpropagation through time, rho coefficients, ordered derivative, average percentage errors, adaptive critics, steepest ascent method, population assimilated, major iteration, language pressure, maximum likelihood theory, differentiated population
Key Phrases - Capitalized Phrases (CAPs): (learn more)
New York, Harvard University, Karl Deutsch, Versus Regression, Cambridge Project, United States, Free Press, International Conference, Project Cambridge, World War, Adapting the Network, Averages of Percentage Errors, Behavioral Science, Englewood Cliffs, International Joint Conference, San Francisco, Technology Square, Department of Energy, Estimates of Growth Factor, Harvard Business School, Houghton Mifflin, North Holland, Parametric Estimation, Princeton University Press, Van Nostrand
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