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 76100 of 744 papers

TitleStatusHype
CLIP-TSA: CLIP-Assisted Temporal Self-Attention for Weakly-Supervised Video Anomaly DetectionCode1
Foreground-Action Consistency Network for Weakly Supervised Temporal Action LocalizationCode1
Attention-Challenging Multiple Instance Learning for Whole Slide Image ClassificationCode1
Breast Cancer Histopathology Image Classification and Localization using Multiple Instance LearningCode1
Combining Graph Neural Network and Mamba to Capture Local and Global Tissue Spatial Relationships in Whole Slide ImagesCode1
Contrastive Transformer-based Multiple Instance Learning for Weakly Supervised Polyp Frame DetectionCode1
Iterative Patch Selection for High-Resolution Image RecognitionCode1
Data Efficient and Weakly Supervised Computational Pathology on Whole Slide ImagesCode1
Deciphering antibody affinity maturation with language models and weakly supervised learningCode1
Leveraging Instance-, Image- and Dataset-Level Information for Weakly Supervised Instance SegmentationCode1
Deep Instance-Level Hard Negative Mining Model for Histopathology ImagesCode1
Delving into CLIP latent space for Video Anomaly RecognitionCode1
Detection of prostate cancer in whole-slide images through end-to-end training with image-level labelsCode1
Mamba2MIL: State Space Duality Based Multiple Instance Learning for Computational PathologyCode1
Bounding Box Tightness Prior for Weakly Supervised Image SegmentationCode1
Federated Learning for Computational Pathology on Gigapixel Whole Slide ImagesCode1
Generalizable Whole Slide Image Classification with Fine-Grained Visual-Semantic InteractionCode1
Bag Graph: Multiple Instance Learning using Bayesian Graph Neural NetworksCode1
DGMIL: Distribution Guided Multiple Instance Learning for Whole Slide Image ClassificationCode1
Fast Hierarchical Games for Image ExplanationsCode1
MonoBox: Tightness-free Box-supervised Polyp Segmentation using Monotonicity ConstraintCode1
Distilling Knowledge from Refinement in Multiple Instance Detection NetworksCode1
Distantly Supervised Relation Extraction in Federated SettingsCode1
Adversarial learning of cancer tissue representationsCode1
BoNuS: Boundary Mining for Nuclei Segmentation with Partial Point LabelsCode1
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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