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BookDOI

An introduction to statistical learning

TLDR
An introduction to statistical learning provides an accessible overview of the essential toolset for making sense of the vast and complex data sets that have emerged in science, industry, and other sectors in the past twenty years.
Abstract
Statistics An Intduction to Stistical Lerning with Applications in R An Introduction to Statistical Learning provides an accessible overview of the fi eld of statistical learning, an essential toolset for making sense of the vast and complex data sets that have emerged in fi elds ranging from biology to fi nance to marketing to astrophysics in the past twenty years. Th is book presents some of the most important modeling and prediction techniques, along with relevant applications. Topics include linear regression, classifi cation, resampling methods, shrinkage approaches, tree-based methods, support vector machines, clustering, and more. Color graphics and real-world examples are used to illustrate the methods presented. Since the goal of this textbook is to facilitate the use of these statistical learning techniques by practitioners in science, industry, and other fi elds, each chapter contains a tutorial on implementing the analyses and methods presented in R, an extremely popular open source statistical soft ware platform. Two of the authors co-wrote Th e Elements of Statistical Learning (Hastie, Tibshirani and Friedman, 2nd edition 2009), a popular reference book for statistics and machine learning researchers. An Introduction to Statistical Learning covers many of the same topics, but at a level accessible to a much broader audience. Th is book is targeted at statisticians and non-statisticians alike who wish to use cutting-edge statistical learning techniques to analyze their data. Th e text assumes only a previous course in linear regression and no knowledge of matrix algebra.

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Journal ArticleDOI

A Physics Informed Machine Learning Approach for Reconstructing Reynolds Stress Modeling Discrepancies Based on DNS Data

TL;DR: In this paper, a data-driven, physics-informed machine learning approach for predicting discrepancies in RANS-averaged Navier-Stokes (RANS) equations is proposed.
Journal ArticleDOI

Real-time forecasts and risk assessment of novel coronavirus (COVID-19) cases: A data-driven analysis.

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Journal ArticleDOI

How Valuable Is FinTech Innovation

TL;DR: Karolyi et al. as discussed by the authors applied machine learning to identify and classify innovations by their underlying technologies, and found that most FinTech innovations yield substantial value to innovators, with blockchain being particularly valuable.
Journal ArticleDOI

Reducing pesticide use while preserving crop productivity and profitability on arable farms

TL;DR: It is demonstrated that low pesticide use rarely decreases productivity and profitability in arable farms, and that pesticide reduction is already accessible to farmers in most production situations.
Journal ArticleDOI

Review of Bridge Structural Health Monitoring Aided by Big Data and Artificial Intelligence: From Condition Assessment to Damage Detection

TL;DR: This work has shown that structural health monitoring techniques have been widely used in long-span bridges but, due to limitations of computational ability and data analysis methods, the knowledge in these techniques is limited.
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