Explainable and Safe AI Research Landscape Map
Theory of Explanations
Definitions
Transparency vs Explanations
Z. C. Lipton, “The mythos of model interpretability,”
Philosophy
Good Explanations
Shane T. Mueller "Explanation in Human-AI Systems:
A Literature Meta-Review
Synopsis of Key Ideas and Publications
and
Bibliography for Explainable AI"
Responsibility
Morality
Requirements and needs
Technical
Safety
User Needs
Legality
R. Budishet al., “Accountability of ai under the law: The role of ex-planation,”
GDPR (Goodman & Flaxman)
Machine Learning
Applications
Autonomous Vehicles
Health Care
A. Avati, K. Jung, S. Harman, L. Downing, A. Ng, and N. H. Shah, “Im-proving palliative care with deep learning,”
ML Methods
Classifiers
L. A. Hendricks, Z. Akata, M. Rohrbach, J. Donahue, B. Schiele,and T. D. and, “Generating visual explanations,”
C. Otte, “Safe and interpretable machine learning a methodologicalreview,”
Unsupervised Learning
Supervised Learning
Neural Nets
C. Olah, L. Schubert, and A. Mordvintsev, “Feature visualization how neural networks build up their understanding of images
T. Zahavy, N. B. Zrihem, and S. Mannor, “Graying the black box:Understanding dqns
RL
Safety Critical Systems
Assurance
Safety Cases
Interpretability methods
Evaluation of Explanation
Transparancy
Explanations
Global
Local
Saliency maps
T. Zahavy, N. B. Zrihem, and S. Mannor, “Graying the black box:Understanding dqns,”https://arxiv.org/abs/1602.02658, 2016.
M. T. Ribeiro, S. Singh, and C. Guestrin,“why should i trust you? explaining the predictions of any classifier, ” https://arxiv.org/abs/1602.04938, 2016.
Surveys
Theory
S. Mohseni, N. Zarei, and E. D. Ragan, “A survey of evaluation methods
and measures for interpretable machine learning
T. Miller, “Explanation in artificial intelligence: Insights from the social
sciences,”
Ex. Techniques
F. K. Dosilovi, M. Brci, and N. Hlupi, “Explainable artificial intelli-gence: A survey,”
Mohseni et al "Explainable Artificial Intelligence: A Survey."
O. Biran and C. Cotton, “Explanation and justification in machine
learning
R. Ashmore, R. Calinescu, and C. Paterson, “Assuring the machine learning lifecycle
A. Adadi and M. Berrada, “Peeking inside the black-box"