Learning in Graphical Models (Adaptive Computation and Machine Learning)

Learning in Graphical Models (Adaptive Computation and Machine Learning)

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Jan 1, 1959 · Inglés · Tapa blanda
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Detalles del libro

Formato Tapa blanda
Idioma Inglés
Publicado Jan 1, 1959
Editorial Mit Pr

Descripción

Graphical models represent a powerful framework that intertwines the principles of probability theory with the structure of graph theory, offering an intuitive approach to understanding complex systems. Michael I. Jordan explores the foundations and applications of these models, illuminating how they can effectively encapsulate relationships and dependencies among variables. With a focus on both the theoretical underpinnings and practical implementations, readers are guided through the intricacies of these models.

Through detailed explanations and illustrative examples, the author unveils how graphical models can simplify the representation of high-dimensional data and support advanced machine learning techniques. This work serves as a comprehensive resource for researchers and practitioners, providing insights that facilitate the application of graphical models across various domains. It encourages readers to think critically about how these models can drive innovation and understanding in their respective fields.
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