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In contemporary science and engineering applications, the volume of
available data is growing at an enormous rate. Spectral methods
have emerged as a simple yet surprisingly effective approach for
extracting information from massive, noisy and incomplete data. A
diverse array of applications have been found in machine learning,
imaging science, financial and econometric modeling, and signal
processing.This monograph presents a systematic, yet accessible
introduction to spectral methods from a modern statistical
perspective, highlighting their algorithmic implications in diverse
large-scale applications. The authors provide a unified and
comprehensive treatment that establishes the theoretical
underpinnings for spectral methods, particularly through a
statistical lens.Building on years of research experience in the
field, the authors present a powerful framework, called
leave-one-out analysis, that proves effective and versatile for
delivering fine-grained performance guarantees for a variety of
problems. This book is essential reading for all students,
researchers and practitioners working in Data Science.
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