Description: Transfer Learning through Embedding Spaces by Mohammad Rostami Transfer Learning through Embedding Spaces provides a brief background on transfer learning and then focus on the idea of transferring knowledge through intermediate embedding spaces. The idea is to couple and relate different learning through embedding spaces that encode task-level relations and similarities. FORMAT Paperback CONDITION Brand New Publisher Description Recent progress in artificial intelligence (AI) has revolutionized our everyday life. Many AI algorithms have reached human-level performance and AI agents are replacing humans in most professions. It is predicted that this trend will continue and 30% of work activities in 60% of current occupations will be automated.This success, however, is conditioned on availability of huge annotated datasets to training AI models. Data annotation is a time-consuming and expensive task which still is being performed by human workers. Learning efficiently from less data is a next step for making AI more similar to natural intelligence. Transfer learning has been suggested a remedy to relax the need for data annotation. The core idea in transfer learning is to transfer knowledge across similar tasks and use similarities and previously learned knowledge to learn more efficiently.In this book, we provide a brief background on transfer learning and then focus on the idea of transferring knowledge through intermediate embedding spaces. The idea is to couple and relate different learning through embedding spaces that encode task-level relations and similarities. We cover various machine learning scenarios and demonstrate that this idea can be used to overcome challenges of zero-shot learning, few-shot learning, domain adaptation, continual learning, lifelong learning, and collaborative learning. Author Biography Mohammad Rostami is a computer scientist at USC Information Sciences Institute. He is a graduate of the University of Pennsylvania, University of Waterloo, and Sharif University of Technology. His research area includes continual machine learning and learning in data scarce regimes. Table of Contents Introduction. Background and Related Work. Zero-Shot Image Classification through Coupled Visual and Semantic Embedding Spaces. Learning a Discriminative Embedding for Unsupervised Domain Adaptation. Few-Shot Image Classification through Coupled Embedding Spaces. Cross-Task Knowledge Transfer. Lifelong Zero-Shot Learning Using High-Level Task Descriptors. Complementary Learning Systems Theory for Tackling Catastrophic Forgetting. Continual Concept Learning. Collective Lifelong Learning for Multi-Agent Networks. Concluding Remarks and Potential Future Research Directions. Details ISBN0367703866 Author Mohammad Rostami Pages 198 Publisher Taylor & Francis Ltd Year 2023 ISBN-13 9780367703868 Format Paperback Publication Date 2023-06-26 Place of Publication London Country of Publication United Kingdom AU Release Date 2023-06-26 NZ Release Date 2023-06-26 UK Release Date 2023-06-26 Illustrations 10 Tables, black and white; 40 Line drawings, black and white; 40 Illustrations, black and white ISBN-10 0367703866 Alternative 9780367699055 DEWEY 006.31 Audience Tertiary & Higher Education Imprint Chapman & Hall/CRC We've got this At The Nile, if you're looking for it, we've got it. With fast shipping, low prices, friendly service and well over a million items - you're bound to find what you want, at a price you'll love! TheNile_Item_ID:159565377;
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