Interpretable Machine Learning

Interpretable Machine Learning pdf epub mobi txt 電子書 下載2025

出版者:Lulu Press
作者:[德] Christoph Molnar
出品人:
頁數:318
译者:
出版時間:2019-3-24
價格:USD 47.62
裝幀:Paperback
isbn號碼:9780244768522
叢書系列:
圖書標籤:
  • 機器學習
  • 計算機
  • Interpretable
  • 計算機科學
  • 美國
  • 統計
  • MachineLearning
  • En.
  • 機器學習
  • 可解釋性
  • 人工智能
  • 數據科學
  • 模型解釋
  • 算法透明度
  • 深度學習
  • 統計學習
  • 模型評估
  • 特徵工程
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具體描述

This book is about making machine learning models and their decisions interpretable.

After exploring the concepts of interpretability, you will learn about simple, interpretable models such as decision trees, decision rules and linear regression. Later chapters focus on general model-agnostic methods for interpreting black box models like feature importance and accumulated local effects and explaining individual predictions with Shapley values and LIME.

All interpretation methods are explained in depth and discussed critically. How do they work under the hood? What are their strengths and weaknesses? How can their outputs be interpreted? This book will enable you to select and correctly apply the interpretation method that is most suitable for your machine learning project.

著者簡介

On a mission to make algorithms more interpretable by combining machine learning and statistics.

圖書目錄

Preface
1 Introduction
1.1 Story Time
1.2 What Is Machine Learning?
1.3 Terminology
2 Interpretability
2.1 Importance of Interpretability
2.2 Taxonomy of Interpretability Methods
2.3 Scope of Interpretability
2.4 Evaluation of Interpretability
2.5 Properties of Explanations
2.6 Human-friendly Explanations
3 Datasets
3.1 Bike Rentals (Regression)
3.2 YouTube Spam Comments (Text Classification)
3.3 Risk Factors for Cervical Cancer (Classification)
4 Interpretable Models
4.1 Linear Regression
4.2 Logistic Regression
4.3 GLM, GAM and more
4.4 Decision Tree
4.5 Decision Rules
4.6 RuleFit
4.7 Other Interpretable Models
5 Model-Agnostic Methods
5.1 Partial Dependence Plot (PDP)
5.2 Individual Conditional Expectation (ICE)
5.3 Accumulated Local Effects (ALE) Plot
5.4 Feature Interaction
5.5 Permutation Feature Importance
5.6 Global Surrogate
5.7 Local Surrogate (LIME)
5.8 Scoped Rules (Anchors)
5.9 Shapley Values
5.10 SHAP (SHapley Additive exPlanations)
6 Example-Based Explanations
6.1 Counterfactual Explanations
6.2 Adversarial Examples
6.3 Prototypes and Criticisms
6.4 Influential Instances
7 Neural Network Interpretation
7.1 Learned Features
8 A Look into the Crystal Ball
8.1 The Future of Machine Learning
8.2 The Future of Interpretability
9 Contribute to the Book
10 Citing this Book
11 Translations
12 Acknowledgements
References
R Packages Used for Examples
· · · · · · (收起)

讀後感

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用戶評價

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重點在6-7章,https://christophm.github.io/interpretable-ml-book/

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解釋有些理論並不是十分清楚,不過算是一本好書

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寫的狗屎一樣,可解釋性其實就是一個僞命題,可以看一下hinton對於可解釋性的駁斥

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解釋有些理論並不是十分清楚,不過算是一本好書

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