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An Algorithmic Perspective on Imitation Learning

Autor Takayuki Osa, Joni Pajarinen, Gerhard Neumann
en Limba Engleză Paperback – 27 mar 2018
As robots and other intelligent agents move from simple environments and problems to more complex, unstructured settings, manually programming their behavior has become increasingly challenging and expensive. Often, it is easier for a teacher to demonstrate a desired behavior rather than attempt to manually engineer it. This process of learning from demonstrations, and the study of algorithms to do so, is called imitation learning.
An Algorithmic Perspective on Imitation Learning provides the reader with an introduction to imitation learning. It covers the underlying assumptions, approaches, and how they relate; the rich set of algorithms developed to tackle the problem; and advice on effective tools and implementation.
An Algorithmic Perspective on Imitation Learning serves two audiences. First, it familiarizes machine learning experts with the challenges of imitation learning, particularly those arising in robotics, and the interesting theoretical and practical distinctions between it and more familiar frameworks like statistical supervised learning theory and reinforcement learning. Second, it provides roboticists and experts in applied artificial intelligence with a broader appreciation for the frameworks and tools available for imitation learning. It pays particular attention to the intimate connection between imitation learning approaches and those of structured prediction.
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Specificații

ISBN-13: 9781680834109
ISBN-10: 168083410X
Pagini: 196
Dimensiuni: 156 x 234 x 11 mm
Greutate: 0.31 kg
Editura: Now Publishers Inc

Descriere

Familiarizes machine learning experts with imitation learning, statistical supervised learning theory, and reinforcement learning and roboticists and experts in applied AI with broader appreciation for the frameworks and tools available for imitation learning.