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 351375 of 537 papers

TitleStatusHype
Towards Explaining Hyperparameter Optimization via Partial Dependence Plots0
Comparing interpretability and explainability for feature selection0
Interpretable machine learning for high-dimensional trajectories of aging healthCode1
Partially Interpretable Estimators (PIE): Black-Box-Refined Interpretable Machine Learning0
Two4Two: Evaluating Interpretable Machine Learning - A Synthetic Dataset For Controlled ExperimentsCode0
Explainable Artificial Intelligence for Human Decision-Support System in Medical Domain0
Causality-based Counterfactual Explanation for Classification ModelsCode0
Online Product Feature Recommendations with Interpretable Machine Learning0
Do Feature Attribution Methods Correctly Attribute Features?Code1
From Human Explanation to Model Interpretability: A Framework Based on Weight of EvidenceCode0
Towards Rigorous Interpretations: a Formalisation of Feature AttributionCode0
Grouped Feature Importance and Combined Features Effect PlotCode1
LioNets: A Neural-Specific Local Interpretation Technique Exploiting Penultimate Layer InformationCode0
Triplot: model agnostic measures and visualisations for variable importance in predictive models that take into account the hierarchical correlation structureCode0
Out-of-Distribution Detection of Melanoma using Normalizing Flows0
IAIA-BL: A Case-based Interpretable Deep Learning Model for Classification of Mass Lesions in Digital Mammography0
Interpretable Machine Learning: Fundamental Principles and 10 Grand Challenges0
Interpretable Data-driven Methods for Subgrid-scale Closure in LES for Transcritical LOX/GCH4 Combustion0
Interpretable Machine Learning: Moving From Mythos to Diagnostics0
CoDeGAN: Contrastive Disentanglement for Generative Adversarial NetworkCode0
Have We Learned to Explain?: How Interpretability Methods Can Learn to Encode Predictions in their InterpretationsCode0
Consistent Sparse Deep Learning: Theory and ComputationCode0
On Interpretability and Similarity in Concept-Based Machine Learning0
NuCLS: A scalable crowdsourcing, deep learning approach and dataset for nucleus classification, localization and segmentationCode1
Interpretable Predictive Maintenance for Hard Drives0
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Benchmark Results

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