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 125 of 744 papers

TitleStatusHype
Morphological Prototyping for Unsupervised Slide Representation Learning in Computational PathologyCode4
MambaMIL: Enhancing Long Sequence Modeling with Sequence Reordering in Computational PathologyCode2
DinoBloom: A Foundation Model for Generalizable Cell Embeddings in HematologyCode2
Revisiting End-to-End Learning with Slide-level Supervision in Computational PathologyCode2
Snuffy: Efficient Whole Slide Image ClassifierCode2
AEM: Attention Entropy Maximization for Multiple Instance Learning based Whole Slide Image ClassificationCode2
Hopfield Networks is All You NeedCode2
HistGen: Histopathology Report Generation via Local-Global Feature Encoding and Cross-modal Context InteractionCode2
P2Object: Single Point Supervised Object Detection and Instance SegmentationCode2
Queryable Prototype Multiple Instance Learning with Vision-Language Models for Incremental Whole Slide Image ClassificationCode2
ViLa-MIL: Dual-scale Vision-Language Multiple Instance Learning for Whole Slide Image ClassificationCode2
TimeMIL: Advancing Multivariate Time Series Classification via a Time-aware Multiple Instance LearningCode2
Slideflow: Deep Learning for Digital Histopathology with Real-Time Whole-Slide VisualizationCode2
Point-to-Box Network for Accurate Object Detection via Single Point SupervisionCode2
Attention-based Deep Multiple Instance LearningCode2
DGR-MIL: Exploring Diverse Global Representation in Multiple Instance Learning for Whole Slide Image ClassificationCode2
Do MIL Models Transfer?Code2
Feature Re-Embedding: Towards Foundation Model-Level Performance in Computational PathologyCode2
CLIP-TSA: CLIP-Assisted Temporal Self-Attention for Weakly-Supervised Video Anomaly DetectionCode1
cDP-MIL: Robust Multiple Instance Learning via Cascaded Dirichlet ProcessCode1
Cluster-to-Conquer: A Framework for End-to-End Multi-Instance Learning for Whole Slide Image ClassificationCode1
Breast Cancer Histopathology Image Classification and Localization using Multiple Instance LearningCode1
Adversarial learning of cancer tissue representationsCode1
3D Spatial Recognition without Spatially Labeled 3DCode1
A Hybrid Attention Mechanism for Weakly-Supervised Temporal Action LocalizationCode1
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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