Applied Statistical Learning Applied Statistical Learning
Statistics and Computing

Applied Statistical Learning

With Case Studies in Stata

    • CHF 115.00
    • CHF 115.00

Beschreibung des Verlags

This textbook provides an accessible overview of statistical learning methods and techniques, and includes case studies using the statistical software Stata. After introductory material on statistical learning concepts and practical aspects, each further chapter is devoted to a statistical learning algorithm or a group of related techniques. In particular, the book presents logistic regression, regularized linear models such as the Lasso, nearest neighbors, the Naive Bayes classifier, classification trees, random forests, boosting, support vector machines, feature engineering, neural networks, and stacking. It also explains how to construct n-gram variables from text data. Examples, conceptual exercises and exercises using software are featured throughout, together with case studies in Stata, mostly from the social sciences; true to the book’s goal to facilitate the use of modern methods of data science in the field. Although mainly intended for upper undergraduate and graduate students in the social sciences, given its applied nature, the book will equally appeal to readers from other disciplines, including the health sciences, statistics, engineering and computer science.

GENRE
Computer und Internet
ERSCHIENEN
2023
2. August
SPRACHE
EN
Englisch
UMFANG
347
Seiten
VERLAG
Springer International Publishing
GRÖSSE
27.3
 MB

Andere Bücher in dieser Reihe

Linear Time Series with MATLAB and OCTAVE Linear Time Series with MATLAB and OCTAVE
2019
Visualization and Imputation of Missing Values Visualization and Imputation of Missing Values
2023
Fundamentals of Supervised Machine Learning Fundamentals of Supervised Machine Learning
2023
An Introduction to Statistics with Python An Introduction to Statistics with Python
2022
Applied Time Series Analysis and Forecasting with Python Applied Time Series Analysis and Forecasting with Python
2022
Independent Random Sampling Methods Independent Random Sampling Methods
2018