Open AccessPosted Content
Interpretable Machine Learning: Fundamental Principles and 10 Grand Challenges
TL;DR: In this paper, the authors provide fundamental principles for interpretable ML and dispel common misunderstandings that dilute the importance of this crucial topic, and identify 10 technical challenge areas in interpretable machine learning and provide history and background on each problem.
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Abstract: Interpretability in machine learning (ML) is crucial for high stakes decisions and troubleshooting. In this work, we provide fundamental principles for interpretable ML, and dispel common misunderstandings that dilute the importance of this crucial topic. We also identify 10 technical challenge areas in interpretable machine learning and provide history and background on each problem. Some of these problems are classically important, and some are recent problems that have arisen in the last few years. These problems are: (1) Optimizing sparse logical models such as decision trees; (2) Optimization of scoring systems; (3) Placing constraints into generalized additive models to encourage sparsity and better interpretability; (4) Modern case-based reasoning, including neural networks and matching for causal inference; (5) Complete supervised disentanglement of neural networks; (6) Complete or even partial unsupervised disentanglement of neural networks; (7) Dimensionality reduction for data visualization; (8) Machine learning models that can incorporate physics and other generative or causal constraints; (9) Characterization of the "Rashomon set" of good models; and (10) Interpretable reinforcement learning. This survey is suitable as a starting point for statisticians and computer scientists interested in working in interpretable machine learning.
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Citations
Scientific Machine Learning Through Physics–Informed Neural Networks: Where we are and What’s Next
Salvatore Cuomo,Vincenzo Schiano di Cola,Fabio Giampaolo,Gianluigi Rozza,Maizar Raissi,Francesco Piccialli +5 more
TL;DR: A comprehensive review of the literature on physics-informed neural networks can be found in this article , where the primary goal of the study was to characterize these networks and their related advantages and disadvantages, as well as incorporate publications on a broader range of collocation-based physics informed neural networks.
Explainable Artificial Intelligence (XAI): What we know and what is left to attain Trustworthy Artificial Intelligence
Shaukat Ali,Tamer AbuHmed,Shaker El-Sappagh,Khan Muhammad,J. Alonso-Moral,Roberto Confalonieri,Riccardo Guidotti,Javier Del Ser,Natalia Díaz-Rodríguez,Francisco Herrera +9 more
TL;DR: XAI has become a popular research subject within the AI field in recent years as discussed by the authors , and the need for eXplainable AI (XAI) methods for improving trust in AI models has arisen.
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Interpreting Black-Box Models: A Review on Explainable Artificial Intelligence
Vikas Hassija,Vinay Chamola,Atmesh Mahapatra,Abhinandan Singal,Divyansh Goel,Kaizhu Huang,Simone Scardapane,Indro Spinelli,Mufti Mahmud,Amir Hussain +9 more
TL;DR: The development of XAI is reviewed meticulously through careful selection and analysis of the current state-of-the-art ofXAI research to showcase major, model-specific trends for better explanation, enhanced transparency, and improved prediction accuracy.
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Neural Additive Models: Interpretable Machine Learning with Neural Nets
TL;DR: Neural Additive Models (NAMs) are proposed which combine some of the expressivity of DNNs with the inherent intelligibility of generalized additive models and are more accurate than widely used intelligible models such as logistic regression and shallow decision trees.
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Aligning artificial intelligence with climate change mitigation
Lynn H. Kaack,Priya L. Donti,Emma Strubell,George Yoshito Kamiya,Felix Creutzig,David Rolnick +5 more
TL;DR: In this paper , the authors introduce a systematic framework for describing the effects of machine learning on GHG emissions, encompassing three categories: computing-related impacts, immediate impacts of applying ML and system-level impacts.
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