SOTAVerified

Interpretable Machine Learning

The goal of Interpretable Machine Learning is to allow oversight and understanding of machine-learned decisions. Much of the work in Interpretable Machine Learning has come in the form of devising methods to better explain the predictions of machine learning models.

Source: Assessing the Local Interpretability of Machine Learning Models

Papers

Showing 221230 of 537 papers

TitleStatusHype
Big Earth Data and Machine Learning for Sustainable and Resilient AgricultureCode0
Supervised Feature Compression based on Counterfactual AnalysisCode0
Rethinking Log Odds: Linear Probability Modelling and Expert Advice in Interpretable Machine Learning0
Explainability in Practice: Estimating Electrification Rates from Mobile Phone Data in SenegalCode0
Efficient and quantum-adaptive machine learning with fermion neural networksCode0
Reconstruction and analysis of negatively buoyant jets with interpretable machine learning0
What Makes a Good Explanation?: A Harmonized View of Properties of Explanations0
Improving Clinician Performance in Classification of EEG Patterns on the Ictal-Interictal-Injury Continuum using Interpretable Machine LearningCode0
Motif-guided Time Series Counterfactual Explanations0
On the Safety of Interpretable Machine Learning: A Maximum Deviation Approach0
Show:102550
← PrevPage 23 of 54Next →

Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Q-SENNTop 1 Accuracy85.9Unverified
2SLDD-ModelTop 1 Accuracy85.7Unverified