Matrices, Statistics and Big Data: Selected Contributions from IWMS 2016

Matrices, Statistics and Big Data: Selected Contributions from IWMS 2016

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Aug 2, 2019 · Anglais · Relié (202 pages)
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Détails du livre

Format Relié
Pages 202
Langue Anglais
Publié Aug 2, 2019
Éditeur Springer
ISBN-10 3030175189
ISBN-13 9783030175184

Description

This collection presents a compilation of selected, peer-reviewed contributions that delve into the intricate relationships between matrices, statistics, and the burgeoning field of big data. Scholars and practitioners from diverse backgrounds come together to share insights gained during the International Workshop on Matrix Theory and Statistics held in 2016, illuminating the profound implications of their research.

The authors explore a wide range of topics, examining the role of matrix theory in statistical analysis and its application to data-driven challenges. By merging theoretical frameworks with practical applications, they provide readers with a thorough understanding of how matrix-based methods can enhance data interpretation and statistical modeling.

As the volume progresses, it addresses contemporary issues in handling large datasets, shedding light on new strategies and methodologies that harness the power of matrices in big data environments. This indispensable resource serves as a bridge between foundational theories and modern-day applications, appealing to those eager to navigate the complexities of data analysis in an increasingly quantitative world.
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