SOTAVerified

Multiple Instance Learning

Multiple Instance Learning is a type of weakly supervised learning algorithm where training data is arranged in bags, where each bag contains a set of instances $X=\{x_1,x_2, \ldots,x_M\}$, and there is one single label $Y$ per bag, $Y\in\{0, 1\}$ in the case of a binary classification problem. It is assumed that individual labels $y_1, y_2,\ldots, y_M$ exist for the instances within a bag, but they are unknown during training. In the standard Multiple Instance assumption, a bag is considered negative if all its instances are negative. On the other hand, a bag is positive, if at least one instance in the bag is positive.

Source: Monte-Carlo Sampling applied to Multiple Instance Learning for Histological Image Classification

Papers

Showing 326350 of 744 papers

TitleStatusHype
Explaining Classifiers Trained on Raw Hierarchical Multiple-Instance Data0
Certainty Pooling for Multiple Instance Learning0
A Proposal-Based Paradigm for Self-Supervised Sound Source Localization in Videos0
Explaining Black-box Model Predictions via Two-level Nested Feature Attributions with Consistency Property0
Explaining Aviation Safety Incidents Using Deep Temporal Multiple Instance Learning0
Case-based Similar Image Retrieval for Weakly Annotated Large Histopathological Images of Malignant Lymphoma Using Deep Metric Learning0
A novel multiple instance learning framework for COVID-19 severity assessment via data augmentation and self-supervised learning0
Cascade Attentive Dropout for Weakly Supervised Object Detection0
Evaluation of Multi-Scale Multiple Instance Learning to Improve Thyroid Cancer Classification0
Estimating Target Signatures with Diverse Density0
CARMIL: Context-Aware Regularization on Multiple Instance Learning models for Whole Slide Images0
Establishing Causal Relationship Between Whole Slide Image Predictions and Diagnostic Evidence Subregions in Deep Learning0
Ensemble of Part Detectors for Simultaneous Classification and Localization0
CanvOI, an Oncology Intelligence Foundation Model: Scaling FLOPS Differently0
Cancer Detection with Multiple Radiologists via Soft Multiple Instance Logistic Regression and L_1 Regularization0
Anomaly Detection with Inexact Labels0
AI-Driven Rapid Identification of Bacterial and Fungal Pathogens in Blood Smears of Septic Patients0
Embedding Space Augmentation for Weakly Supervised Learning in Whole-Slide Images0
Efficient Multiple Instance Metric Learning Using Weakly Supervised Data0
Effective and Interpretable Information Aggregation with Capacity Networks0
EEG-Language Modeling for Pathology Detection0
Dynamic Hypergraph Representation for Bone Metastasis Cancer Analysis0
Brain Cancer Survival Prediction on Treatment-na ive MRI using Deep Anchor Attention Learning with Vision Transformer0
Anomalous Event Recognition in Videos Based on Joint Learningof Motion and Appearance with Multiple Ranking Measures0
Dual Graph Attention based Disentanglement Multiple Instance Learning for Brain Age Estimation0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Snuffy (DINO Exhaustive)AUC0.99Unverified
2Snuffy (SimCLR Exhaustive)AUC0.97Unverified
3CAMILAUC0.96Unverified
4CAMIL (CAMIL-L)AUC0.95Unverified
5CAMIL (CAMIL-G)AUC0.95Unverified
6DTFD-MIL (AFS)AUC0.95Unverified
7DTFD-MIL (MAS)AUC0.95Unverified
8DTFD-MIL (MaxMinS)AUC0.94Unverified
9TransMILAUC0.93Unverified
10DSMIL-LCAUC0.92Unverified
#ModelMetricClaimedVerifiedStatus
1DTFD-MIL (MAS)AUC0.96Unverified
2DTFD-MIL (AFS)ACC0.95Unverified
3Snuffy (SimCLR Exhaustive)ACC0.95Unverified
4DSMIL-LCACC0.93Unverified
5DSMILACC0.92Unverified
6DTFD-MIL (MaxMinS)ACC0.89Unverified
7TransMILACC0.88Unverified
8DTFD-MIL (MaxS)ACC0.87Unverified
#ModelMetricClaimedVerifiedStatus
1SnuffyAUC0.97Unverified
2DSMILACC0.93Unverified
#ModelMetricClaimedVerifiedStatus
1SnuffyACC0.96Unverified
2DSMILACC0.95Unverified
#ModelMetricClaimedVerifiedStatus
1DSMILACC0.93Unverified
2SnuffyACC0.79Unverified