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 401450 of 537 papers

TitleStatusHype
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
On Interpretability and Similarity in Concept-Based Machine Learning0
Consistent Sparse Deep Learning: Theory and ComputationCode0
Interpretable Predictive Maintenance for Hard Drives0
COLOGNE: Coordinated Local Graph Neighborhood SamplingCode0
[Re] Explaining Groups of Points in Low-Dimensional RepresentationsCode0
[Re] Explaining Groups of Points in Low-Dimensional RepresentationsCode0
Beyond Expertise and Roles: A Framework to Characterize the Stakeholders of Interpretable Machine Learning and their Needs0
Show or Suppress? Managing Input Uncertainty in Machine Learning Model Explanations0
System Design for a Data-driven and Explainable Customer Sentiment MonitorCode0
Extract Local Inference Chains of Deep Neural Nets0
Multi-type Disentanglement without Adversarial Training0
PANTHER: Pathway Augmented Nonnegative Tensor factorization for HighER-order feature learningCode0
Enriched Annotations for Tumor Attribute Classification from Pathology Reports with Limited Labeled Data0
Challenging common interpretability assumptions in feature attribution explanationsCode0
Interpretability and Explainability: A Machine Learning Zoo Mini-tour0
Data Representing Ground-Truth Explanations to Evaluate XAI Methods0
Quantifying and Learning Linear Symmetry-Based DisentanglementCode0
A Learning Theoretic Perspective on Local Explainability0
Interpretable Machine Learning Models for Predicting and Explaining Vehicle Fuel Consumption Anomalies0
On Explaining Decision Trees0
Interpretable Machine Learning -- A Brief History, State-of-the-Art and Challenges0
Altruist: Argumentative Explanations through Local Interpretations of Predictive ModelsCode0
Novel Topological Shapes of Model Interpretability0
Machine learning with persistent homology and chemical word embeddings improves prediction accuracy and interpretability in metal-organic frameworks0
Quantifying and Learning Disentangled Representations with Limited Supervision0
Accurate and Interpretable Machine Learning for Transparent Pricing of Health Insurance Plans0
Deducing neighborhoods of classes from a fitted model0
Socio-economic disparities and COVID-19 in the USACode0
Individualized Prediction of COVID-19 Adverse outcomes with MLHOCode0
On the Use of Interpretable Machine Learning for the Management of Data Quality0
Closed-Form Expressions for Global and Local Interpretation of Tsetlin Machines with Applications to Explaining High-Dimensional Data0
An Interpretable Probabilistic Approach for Demystifying Black-box Predictive Models0
DeepNNK: Explaining deep models and their generalization using polytope interpolationCode0
Relative Feature ImportanceCode0
On quantitative aspects of model interpretability0
Variable Selection via Thompson Sampling0
Causality Learning: A New Perspective for Interpretable Machine Learning0
A Semiparametric Approach to Interpretable Machine Learning0
Using an interpretable Machine Learning approach to study the drivers of International Migration0
Physically interpretable machine learning algorithm on multidimensional non-linear fields0
Towards Analogy-Based Explanations in Machine Learning0
Interpreting Neural Ranking Models using Grad-CAM0
Interpretable Learning-to-Rank with Generalized Additive Models0
Explaining How Deep Neural Networks Forget by Deep VisualizationCode0
Offensive Language Detection ExplainedCode0
Revealing the Phase Diagram of Kitaev Materials by Machine Learning: Cooperation and Competition between Spin LiquidsCode0
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Benchmark Results

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