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 51100 of 537 papers

TitleStatusHype
Interpreting and Correcting Medical Image Classification with PIP-NetCode1
"Why Should I Trust You?": Explaining the Predictions of Any ClassifierCode1
Interpretable machine learning: definitions, methods, and applicationsCode1
TorchPRISM: Principal Image Sections Mapping, a novel method for Convolutional Neural Network features visualizationCode1
Interpreting Machine Learning Models for Room Temperature Prediction in Non-domestic BuildingsCode1
Graph Learning for Numeric PlanningCode1
In Pursuit of Interpretable, Fair and Accurate Machine Learning for Criminal Recidivism PredictionCode1
Quantifying Model Complexity via Functional Decomposition for Better Post-Hoc InterpretabilityCode1
Interpretable and intervenable ultrasonography-based machine learning models for pediatric appendicitisCode1
Hierarchical interpretations for neural network predictionsCode1
Interpretable machine learning for time-to-event prediction in medicine and healthcareCode1
How Interpretable and Trustworthy are GAMs?Code1
ControlBurn: Nonlinear Feature Selection with Sparse Tree EnsemblesCode1
Adversarial Attacks on Knowledge Graph Embeddings via Instance Attribution MethodsCode1
Disentangled Attribution Curves for Interpreting Random Forests and Boosted TreesCode1
Axiomatic Attribution for Deep NetworksCode1
Interpretable Machine Learning Approaches to Prediction of Chronic HomelessnessCode1
Interpretable machine learning for high-dimensional trajectories of aging healthCode1
Interpretable Machine Learning for TabPFNCode1
Interpretable Machine Learning with an Ensemble of Gradient Boosting MachinesCode1
ContrXT: Generating Contrastive Explanations from any Text ClassifierCode1
Development of Interpretable Machine Learning Models to Detect Arrhythmia based on ECG DataCode1
Interpretable Machine Learning for COVID-19: An Empirical Study on Severity Prediction TaskCode1
Cross- and Intra-image Prototypical Learning for Multi-label Disease Diagnosis and InterpretationCode1
Learning the Dynamics of Physical Systems from Sparse Observations with Finite Element NetworksCode1
BreastScreening: On the Use of Multi-Modality in Medical Imaging DiagnosisCode1
Detecting Video Game Player Burnout with the Use of Sensor Data and Machine LearningCode1
Mixture of Gaussian-distributed Prototypes with Generative Modelling for Interpretable and Trustworthy Image RecognitionCode1
DISSECT: Disentangled Simultaneous Explanations via Concept TraversalsCode1
Do Feature Attribution Methods Correctly Attribute Features?Code1
ExeKGLib: Knowledge Graphs-Empowered Machine Learning AnalyticsCode1
Improving Accuracy of Interpretability Measures in Hyperparameter Optimization via Bayesian Algorithm ExecutionCode1
Take 5: Interpretable Image Classification with a Handful of FeaturesCode1
Neural Prototype Trees for Interpretable Fine-grained Image RecognitionCode1
Anomaly Detection in Time Series with Triadic Motif Fields and Application in Atrial Fibrillation ECG ClassificationCode1
Higher-order Neural Additive Models: An Interpretable Machine Learning Model with Feature InteractionsCode0
How to See Hidden Patterns in Metamaterials with Interpretable Machine LearningCode0
midr: Learning from Black-Box Models by Maximum Interpretation DecompositionCode0
ProtoAttend: Attention-Based Prototypical LearningCode0
Harnessing Interpretable Machine Learning for Holistic Inverse Design of OrigamiCode0
An Additive Instance-Wise Approach to Multi-class Model InterpretationCode0
Have We Learned to Explain?: How Interpretability Methods Can Learn to Encode Predictions in their InterpretationsCode0
How Your Location Relates to Health: Variable Importance and Interpretable Machine Learning for Environmental and Sociodemographic DataCode0
A Statistical Evaluation of Indoor LoRaWAN Environment-Aware Propagation for 6G: MLR, ANOVA, and Residual Distribution AnalysisCode0
A machine learning methodology for real-time forecasting of the 2019-2020 COVID-19 outbreak using Internet searches, news alerts, and estimates from mechanistic modelsCode0
Accurate and interpretable evaluation of surgical skills from kinematic data using fully convolutional neural networksCode0
Altruist: Argumentative Explanations through Local Interpretations of Predictive ModelsCode0
GENESIM: genetic extraction of a single, interpretable modelCode0
GFN-SR: Symbolic Regression with Generative Flow NetworksCode0
A Deep Dive into Perturbations as Evaluation Technique for Time Series XAICode0
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Benchmark Results

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