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Subgroup Discovery

Papers

Showing 125 of 47 papers

TitleStatusHype
Discover and Mitigate Multiple Biased Subgroups in Image ClassifiersCode2
Subgroups: A Python library for Subgroup DiscoveryCode1
Robust subgroup discoveryCode1
VLSD—An Efficient Subgroup Discovery Algorithm Based on Equivalence Classes and Optimistic EstimateCode1
Discovering outstanding subgroup lists for numeric targets using MDLCode1
Subgroup Discovery in Unstructured DataCode0
FairVis: Visual Analytics for Discovering Intersectional Bias in Machine LearningCode0
Mining Java Memory Errors using Subjective Interesting Subgroups with Hierarchical TargetsCode0
Contrastive Principal Component AnalysisCode0
Embedding-based Silhouette Community DetectionCode0
Unsupervised learning with contrastive latent variable modelsCode0
Using Constraints to Discover Sparse and Alternative Subgroup DescriptionsCode0
Explainable Subgraphs with Surprising Densities: A Subgroup Discovery ApproachCode0
"What makes my queries slow?": Subgroup Discovery for SQL Workload AnalysisCode0
Identifying the Leading Factors of Significant Weight Gains Using a New Rule Discovery MethodCode0
REDS: Rule Extraction for Discovering ScenariosCode0
Discovering multiple antibiotic resistance phenotypes using diverse top-k subgroup list discoveryCode0
Interpretable Summaries of Black Box Incident Triaging with Subgroup DiscoveryCode0
Interpretable Subgroup Discovery in Treatment Effect Estimation with Application to Opioid Prescribing Guidelines0
Pedagogical Rule Extraction to Learn Interpretable Models - an Empirical Study0
Peripheral Nervous System Responses to Food Stimuli: Analysis Using Data Science Approaches0
Preservation of Anomalous Subgroups On Machine Learning Transformed Data0
Sparsity-based Feature Selection for Anomalous Subgroup Discovery0
Subgroup Discovery in MOOCs: A Big Data Application for Describing Different Types of Learners0
Subgroup discovery of Parkinson's Disease by utilizing a multi-modal smart device system0
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