Linear Algebra and Learning from Data

Linear Algebra and Learning from Data

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Feb 28, 2019 · Anglais · Relié (446 pages)
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Détails du livre

Format Relié
Pages 446
Langue Anglais
Publié Feb 28, 2019
Éditeur Wellesley-Cambridge Press
Édition First Edition
ISBN-10 0692196382
ISBN-13 9780692196380

Description

Gilbert Strang delves into the intertwined worlds of linear algebra and data science in this insightful exploration. The book offers a comprehensive perspective on how linear algebra serves as a foundational tool for understanding and analyzing data. Strang expertly illustrates the principles of linear transformations, matrix operations, and vector spaces, making the intricate concepts digestible for readers at various levels of expertise.

Through a combination of theoretical insights and practical applications, it becomes clear how linear algebra is integral to fields like machine learning and statistics. Strang encourages readers to develop a critical understanding of these concepts, showcasing their relevance in real-world scenarios. The narrative strikes a balance between mathematical rigor and accessibility, enabling a wider audience to appreciate the beauty and utility of linear algebra in the context of modern data analysis.
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