SOTAVerified

Incremental Learning

Incremental learning aims to develop artificially intelligent systems that can continuously learn to address new tasks from new data while preserving knowledge learned from previously learned tasks.

Papers

Showing 110 of 1371 papers

TitleStatusHype
The Bayesian Approach to Continual Learning: An Overview0
Balancing the Past and Present: A Coordinated Replay Framework for Federated Class-Incremental Learning0
Addressing Imbalanced Domain-Incremental Learning through Dual-Balance Collaborative ExpertsCode0
DuET: Dual Incremental Object Detection via Exemplar-Free Task Arithmetic0
Class-Incremental Learning for Honey Botanical Origin Classification with Hyperspectral Images: A Study with Continual Backpropagation0
Hyperbolic Dual Feature Augmentation for Open-Environment0
L3A: Label-Augmented Analytic Adaptation for Multi-Label Class Incremental LearningCode0
CL-LoRA: Continual Low-Rank Adaptation for Rehearsal-Free Class-Incremental LearningCode1
Buffer-free Class-Incremental Learning with Out-of-Distribution Detection0
Boosting Domain Incremental Learning: Selecting the Optimal Parameters is All You NeedCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1PPCA-SWSLFinal Accuracy77.07Unverified
2TCILAverage Incremental Accuracy74.88Unverified
3TCIL-LiteAverage Incremental Accuracy74.3Unverified
4DER(Standard ResNet-18)Average Incremental Accuracy72.6Unverified
5D3FormerAverage Incremental Accuracy72.23Unverified
6PPCA-CLIPFinal Accuracy69.71Unverified
7FOSTERAverage Incremental Accuracy69.46Unverified
8RMM (Modified ResNet-32)Average Incremental Accuracy68.86Unverified
9DER(Modified Res-32)Average Incremental Accuracy67.6Unverified
10CCIL-SDAverage Incremental Accuracy67.17Unverified