An Introduction To Statistical Learning *US HARDCOVER* With Applications In Python By Gareth James, Daniela Witten

  • Condition: Brand New.
  • Author: Gareth James , Daniela Witten
  • ISBN13: 9783031387463
  • ISBN10: 3031387465
  • Type: Hardcover Book.

By: Gareth James , Daniela Witten Availability: In Stock Condition: Brand New.

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Descriptions

An Introduction to Statistical Learning: Unveiling Patterns with Python

Overview

  • Title: An Introduction to Statistical Learning: with Applications in Python (Springer Texts in Statistics)
  • Authors: Gareth James, Daniela Witten, Trevor Hastie, and Robert Tibshirani
  • Edition: 1st (2023)

Key Themes

  • Unveiling patterns and making predictions from complex data using statistical learning methods.
  • Practical application focus, guiding readers through popular techniques with real-world examples.
  • Python proficiency is key, as the book leverages Python code for implementation.

Features

  • Comprehensive coverage: Explores a wide range of statistical learning methods, including linear regression, classification, resampling, tree-based models, and deep learning.
  • Bridge the gap: Connects statistical methods with their underlying assumptions to real-world applications, fostering a deeper understanding.
  • Practical guidance: Provides helpful tips on model selection, evaluation, and interpretation, ensuring effective data analysis.

Target Audience

  • Students and researchers with a statistical or related background (math, computer science) seeking to learn and apply statistical learning with Python.
  • Data scientists and analysts looking to enhance their skillset in statistical modeling and prediction.
  • Professionals across disciplines (finance, marketing, biology) who need to analyze complex datasets.

Strengths

  • Up-to-date content covering popular statistical learning techniques.
  • Clear explanations paired with practical Python code examples, facilitating hands-on learning.
  • Ideal for those with a foundation in statistics and some programming experience, particularly in Python.

Chapter Headlines (Examples)

  • Introduction to Statistical Learning
  • Unveiling Patterns Through Supervised Learning
  • Demystifying Linear Regression
  • Classification: Learning from Categorical Data
  • Resampling Methods: Assessing Variability
  • Shrinkage Approaches: Reducing Model Complexity
  • Unveiling Patterns Through Tree-Based Methods
  • Support Vector Machines: Finding Optimal Separation
  • Unsupervised Learning and Pattern Discovery
  • Deep Learning: Unveiling Complex Patterns

Closing Paragraph

"An Introduction to Statistical Learning" serves as a valuable resource for those seeking to transform data into knowledge. By offering a comprehensive exploration of statistical learning methods alongside practical Python implementations, the book empowers readers to unlock the hidden patterns within data and make informed decisions across various fields.