Principles and Practice of Explainable Machine Learning
Vaishak Belle, Ioannis Papantonis

TL;DR
This paper surveys the field of explainable machine learning, emphasizing the importance of understanding model decisions for trust and practical application, and provides guidance for practitioners on selecting appropriate explanation methods.
Contribution
It offers a comprehensive overview of explainable ML methods, addressing the gap between academic research and industry practice, and guides data scientists in model explanation strategies.
Findings
Survey of key explainability techniques
Identification of challenges in deploying explainable models
Guidance for practitioners on explanation methods
Abstract
Artificial intelligence (AI) provides many opportunities to improve private and public life. Discovering patterns and structures in large troves of data in an automated manner is a core component of data science, and currently drives applications in diverse areas such as computational biology, law and finance. However, such a highly positive impact is coupled with significant challenges: how do we understand the decisions suggested by these systems in order that we can trust them? In this report, we focus specifically on data-driven methods -- machine learning (ML) and pattern recognition models in particular -- so as to survey and distill the results and observations from the literature. The purpose of this report can be especially appreciated by noting that ML models are increasingly deployed in a wide range of businesses. However, with the increasing prevalence and complexity of…
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Taxonomy
MethodsShapley Additive Explanations
