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 101150 of 537 papers

TitleStatusHype
On the definition and importance of interpretability in scientific machine learning0
Enhanced Photonic Chip Design via Interpretable Machine Learning Techniques0
Understanding molecular ratios in the carbon and oxygen poor outer Milky Way with interpretable machine learning0
Manifold Learning with Normalizing Flows: Towards Regularity, Expressivity and Iso-Riemannian GeometryCode0
Navigating the Rashomon Effect: How Personalization Can Help Adjust Interpretable Machine Learning Models to Individual Users0
Attention Mechanisms in Dynamical Systems: A Case Study with Predator-Prey Models0
Towards Probabilistic Dynamic Security Assessment and Enhancement of Large Power Systems0
Interpretable machine learning-guided design of Fe-based soft magnetic alloys0
NFISiS: New Perspectives on Fuzzy Inference Systems for Renewable Energy ForecastingCode0
Causal rule ensemble approach for multi-arm data0
A Statistical Evaluation of Indoor LoRaWAN Environment-Aware Propagation for 6G: MLR, ANOVA, and Residual Distribution AnalysisCode0
Towards Simple Machine Learning Baselines for GNSS RFI Detection0
Interpretable Machine Learning in Physics: A Review0
Kernel Learning Assisted Synthesis Condition Exploration for Ternary SpinelCode0
Predicting Treatment Response in Body Dysmorphic Disorder with Interpretable Machine Learning0
Predicting and Understanding College Student Mental Health with Interpretable Machine LearningCode0
XAI4Extremes: An interpretable machine learning framework for understanding extreme-weather precursors under climate change0
Diagnostic-free onboard battery health assessment0
A Frank System for Co-Evolutionary Hybrid Decision-Making0
Near Optimal Decision Trees in a SPLIT Second0
An Interpretable Machine Learning Approach to Understanding the Relationships between Solar Flares and Source Active Regions0
Interpretable Machine Learning for Kronecker Coefficients0
Classifying the Stoichiometry of Virus-like Particles with Interpretable Machine LearningCode0
Investigating Role of Personal Factors in Shaping Responses to Active Shooter Incident using Machine Learning0
High-Throughput Computational Screening and Interpretable Machine Learning of Metal-organic Frameworks for Iodine Capture0
Unfolding Tensors to Identify the Graph in Discrete Latent Bipartite Graphical Models0
Interpretable machine-learning for predicting molecular weight of PLA based on artificial bee colony optimization algorithm and adaptive neurofuzzy inference system0
The explanation dialogues: an expert focus study to understand requirements towards explanations within the GDPR0
How Your Location Relates to Health: Variable Importance and Interpretable Machine Learning for Environmental and Sociodemographic DataCode0
Sequencing Silicates in the IRS Debris Disk Catalog I: Methodology for Unsupervised Clustering0
Analyzing Country-Level Vaccination Rates and Determinants of Practical Capacity to Administer COVID-19 Vaccines0
Cultivating Archipelago of Forests: Evolving Robust Decision Trees through Island CoevolutionCode0
Category-Specific Topological Learning of Metal-Organic Frameworks0
A comprehensive interpretable machine learning framework for Mild Cognitive Impairment and Alzheimer's disease diagnosis0
Explaining the Unexplained: Revealing Hidden Correlations for Better Interpretability0
Data-driven model reconstruction for nonlinear wave dynamics0
MCCE: Missingness-aware Causal Concept Explainer0
Expert Study on Interpretable Machine Learning Models with Missing Data0
Learning Model Agnostic Explanations via Constraint Programming0
Learning local discrete features in explainable-by-design convolutional neural networksCode0
Info-CELS: Informative Saliency Map Guided Counterfactual Explanation0
Interpretable Multimodal Machine Learning Analysis of X-ray Absorption Near-Edge Spectra and Pair Distribution Functions0
Establishing Nationwide Power System Vulnerability Index across US Counties Using Interpretable Machine Learning0
Kernel Banzhaf: A Fast and Robust Estimator for Banzhaf ValuesCode0
GAMformer: In-Context Learning for Generalized Additive Models0
"Oh LLM, I'm Asking Thee, Please Give Me a Decision Tree": Zero-Shot Decision Tree Induction and Embedding with Large Language Models0
Recent advances in interpretable machine learning using structure-based protein representations0
Challenging the Performance-Interpretability Trade-off: An Evaluation of Interpretable Machine Learning ModelsCode0
Comorbid anxiety predicts lower odds of depression improvement during smartphone-delivered psychotherapyCode0
LLM-based feature generation from text for interpretable machine learningCode0
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Benchmark Results

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