Semi-supervised Learning

Semi-supervised Learning

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Jan 1, 2006 · Anglais · Relié (598 pages)
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Détails du livre

Format Relié
Pages 598
Langue Anglais
Publié Jan 1, 2006
Éditeur The MIT Press
ISBN-10 0262033585
ISBN-13 9780262033589

Description

This work delves into the intriguing realm of semi-supervised learning, where the synergy of labeled and unlabeled data becomes pivotal. The authors meticulously explore the methodologies and techniques that harness vast amounts of unlabeled data, providing insights into how they can significantly enhance model performance. Their collaborative effort showcases the importance of leveraging limited labeled datasets alongside the abundant unlabeled counterparts to bolster machine learning applications.

Throughout the text, readers encounter a thorough examination of the fundamental principles, algorithms, and real-world applications of semi-supervised learning. With contributions from leading experts in the field, it serves as an essential resource for both researchers and practitioners, offering a deeper understanding of this burgeoning area and its potential to reshape the landscape of machine learning.

Genres

Romance
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