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Neural Networks and Animal Behavior:

✍ Scribed by Magnus Enquist, Stefano Ghirlanda


Publisher
Princeton University Press
Year
2005
Tongue
English
Leaves
266
Series
Monographs in Behavior and Ecology
Category
Library

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✦ Synopsis



How can we make better sense of animal behavior by using what we know about the brain? This is the first book that attempts to answer this important question by applying neural network theory. Scientists create Artificial Neural Networks (ANNs) to make models of the brain. These networks mimic the architecture of a nervous system by connecting elementary neuron-like units into networks in which they stimulate or inhibit each other's activity in much the same way neurons do. This book shows how scientists can employ ANNs to analyze animal behavior, explore the general principles of the nervous systems, and test potential generalizations among species. The authors focus on simple neural networks to show how ANNs can be investigated by math and by computers. They demonstrate intuitive concepts that make the operation of neural networks more accessible to nonspecialists.


The first chapter introduces various approaches to animal behavior and provides an informal introduction to neural networks, their history, and their potential advantages. The second chapter reviews artificial neural networks, including biological foundations, techniques, and applications. The following three chapters apply neural networks to such topics as learning and development, classical instrumental condition, and the role of genes in building brain networks. The book concludes by comparing neural networks to other approaches. It will appeal to students of animal behavior in many disciplines. It will also interest neurobiologists, cognitive scientists, and those from other fields who wish to learn more about animal behavior.


✦ Subjects


Certification Adobe Cisco CompTIA Linux Microsoft Oracle Security Computers Technology Neural Networks AI Machine Learning Computer Science Behavioral Sciences Anthropology Psychology Cognitive Math Zoology Amphibians Animal Behavior Communication Ichthyology Invertebrates Mammals Ornithology Primatology Reptiles Biological Geography Historic Information Systems Regional Earth Algorithms Artificial Intelligence Database Storage Design Graphics Visualization Networking Object Oriented Software Op


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