Bookshock Ask Tez ✨
An Introduction to Statistical Data Science Theory and Models cover

An Introduction to Statistical Data Science Theory and Models

by Giorgio Picci

Lowest price on Bookshock
$111.89
1 offer
In stock

Ask Tez about this book →

This title is temporarily out of stock. Email support@bookshock.ai or call (972) 638-0790 and we'll let you know when it's back.
Free US shipping
30-day free returns
Stripe-secured checkout

All offers (1)

PriceConditionSeller
$111.89Best price New Basi6 International LLC

Stock and pricing refresh on page load. Tez can also compare prices on Amazon, AbeBooks, and ThriftBooks if you ask.

About this book

<p>This graduate textbook on the statistical approach to data science describes the basic ideas, scientific principles and common techniques for the extraction of mathematical models from observed data. Aimed at young scientists, and motivated by their scientific prospects, it provides first principle derivations of various algorithms and procedures, thereby supplying a solid background for their future specialization to diverse fields and applications.</p> <p>The beginning of the book presents the basics of statistical science, with an exposition on linear models. This is followed by an analysis of some numerical aspects and various regularization techniques, including LASSO, which are particularly important for large scale problems. Decision problems are studied both from the classical hypothesis testing perspective and, particularly, from a modern support-vector perspective, in the linear and non-linear context alike. Underlying the book is the Bayesian approach and the Bayesian interpretation of various algorithms and procedures. This is the key to principal components analysis and canonical correlation analysis, which are explained in detail. Following a chapter on nonlinear inference, including material on neural networks, the book concludes with a discussion on time series analysis and estimating their dynamic models.</p> <p>Featuring examples and exercises partially motivated by engineering applications, this book is intended for graduate students in applied mathematics and engineering with a general background in probability and linear algebra.</p>

Details

Format
Hardcover
Pages
432
Publisher
Springer Nature Switzerland
Language
EN
Edition
2024
ISBN-13
9783031666186
ISBN-10
3031666186

Categories

Computers & Technology, Computer Science, AI & Machine Learning, Databases & Big Data