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Open AccessJournal ArticleDOI

Peeking Inside the Black-Box: A Survey on Explainable Artificial Intelligence (XAI)

Amina Adadi, +1 more
- 17 Sep 2018 - 
- Vol. 6, pp 52138-52160
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TLDR
This survey provides an entry point for interested researchers and practitioners to learn key aspects of the young and rapidly growing body of research related to XAI, and review the existing approaches regarding the topic, discuss trends surrounding its sphere, and present major research trajectories.
Abstract
At the dawn of the fourth industrial revolution, we are witnessing a fast and widespread adoption of artificial intelligence (AI) in our daily life, which contributes to accelerating the shift towards a more algorithmic society. However, even with such unprecedented advancements, a key impediment to the use of AI-based systems is that they often lack transparency. Indeed, the black-box nature of these systems allows powerful predictions, but it cannot be directly explained. This issue has triggered a new debate on explainable AI (XAI). A research field holds substantial promise for improving trust and transparency of AI-based systems. It is recognized as the sine qua non for AI to continue making steady progress without disruption. This survey provides an entry point for interested researchers and practitioners to learn key aspects of the young and rapidly growing body of research related to XAI. Through the lens of the literature, we review the existing approaches regarding the topic, discuss trends surrounding its sphere, and present major research trajectories.

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Explainable Artificial Intelligence (XAI): Concepts, Taxonomies, Opportunities and Challenges toward Responsible AI.

TL;DR: Previous efforts to define explainability in Machine Learning are summarized, establishing a novel definition that covers prior conceptual propositions with a major focus on the audience for which explainability is sought, and a taxonomy of recent contributions related to the explainability of different Machine Learning models are proposed.
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Machine Learning Interpretability: A Survey on Methods and Metrics

TL;DR: A review of the current state of the research field on machine learning interpretability while focusing on the societal impact and on the developed methods and metrics is provided.
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Artificial Intelligence (AI) : Multidisciplinary perspectives on emerging challenges, opportunities, and agenda for research, practice and policy

TL;DR: This research offers significant and timely insight to AI technology and its impact on the future of industry and society in general, whilst recognising the societal and industrial influence on pace and direction of AI development.
Journal ArticleDOI

Explainable AI: A Review of Machine Learning Interpretability Methods

TL;DR: In this paper, a literature review and taxonomy of machine learning interpretability methods are presented, as well as links to their programming implementations, in the hope that this survey would serve as a reference point for both theorists and practitioners.
References
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Model Class Reliance: Variable Importance Measures for any Machine Learning Model Class, from the "Rashomon" Perspective

TL;DR: A framework of VI measures for describing how much any model class, any model-fitting algorithm, or any individual prediction model, relies on covariate(s) of interest, and Model Class Reliance (MCR) is proposed, which describes reliance on a variable while accounting for the fact that many prediction models may fit the data well.
Proceedings Article

Explainable Agency for Intelligent Autonomous Systems

TL;DR: Before they will be trusted by humans, autonomous agents must be able to explain their decisions and the reasoning that produced their choices, which is referred to as explainable agency.
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Falling Rule Lists

TL;DR: In this paper, a Bayesian framework for learning falling rule lists is proposed, which does not rely on traditional greedy decision tree learning methods and is inspired by healthcare applications where patients would be stratified into risk sets and the highest at-risk patients should be considered first.
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Explaining Explanations: An Approach to Evaluating Interpretability of Machine Learning

TL;DR: The definition of explainability is provided and how it can be used to classify existing literature is shown and discussed to create best practices and identify open challenges in explanatory artificial intelligence.
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Statistical Procedures for Forecasting Criminal Behavior

TL;DR: This paper addresses the apparent contradiction between claims that for criminal justice applications, forecasting accuracy is about the same and procedures such as machine learning that proceed adaptively from the data will improve forecasting accuracy.
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