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awesome-incremental-learning's Introduction

Awesome Incremental Learning / Lifelong learning

Survey

  • A Comprehensive Empirical Evaluation on Online Continual Learning (ICCV Workshop 2023) [paper][code]
  • An Introduction to Lifelong Supervised Learning (arXiv 2022) [paper]
  • A Survey on Incremental Update for Neural Recommender Systems (arXiv 2023) [paper]
  • Deep Class-Incremental Learning: A Survey (arXiv 2023) [paper]
  • A Comprehensive Survey of Continual Learning: Theory, Method and Application (arXiv 2023) [paper]
  • Continual Learning of Natural Language Processing Tasks: A Survey (arXiv 2022) [paper]
  • Continual Learning for Real-World Autonomous Systems: Algorithms, Challenges and Frameworks (arXiv 2022) [paper]
  • Recent Advances of Continual Learning in Computer Vision: An Overview (arXiv 2021) [paper]
  • Replay in Deep Learning: Current Approaches and Missing Biological Elements (Neural Computation 2021) [paper]
  • Online Continual Learning in Image Classification: An Empirical Survey (Neurocomputing 2021) [paper] [code]
  • Continual Lifelong Learning in Natural Language Processing: A Survey (COLING 2020) [paper]
  • Class-incremental learning: survey and performance evaluation (TPAMI 2022) [paper] [code]
  • A Comprehensive Study of Class Incremental Learning Algorithms for Visual Tasks (Neural Networks) [paper] [code]
  • A continual learning survey: Defying forgetting in classification tasks (TPAMI 2021) [paper] [arxiv]
  • Continual Lifelong Learning with Neural Networks: A Review (Neural Networks) [paper]
  • Three scenarios for continual learning (arXiv 2019) [paper][code]

Papers

2024

  • Plasticity-Optimized Complementary Networks for Unsupervised Continual (WACV2024)[paper]

2023

  • Hierarchical Decomposition of Prompt-Based Continual Learning: Rethinking Obscured Sub-optimality (NeurIPS 2023)[paper]

  • FeCAM: Exploiting the Heterogeneity of Class Distributions in Exemplar-Free Continual Learning (NeurIPS 2023)[paper]

  • Continual Learners are Incremental Model Generalizers (ICML2023)[paper]

  • Learnability and Algorithm for Continual Learning (ICML2023)[paper][code]

  • Parameter-Level Soft-Masking for Continual Learning (ICML2023)[paper]

  • Continual Learning in Linear Classification on Separable Data (ICML2023)[paper]

  • DualHSIC: HSIC-Bottleneck and Alignment for Continual Learning (ICML2023)[paper]

  • BiRT: Bio-inspired Replay in Vision Transformers for Continual Learning (ICML2023)[paper]

  • DDGR: Continual Learning with Deep Diffusion-based Generative Replay (ICML2023)[paper]

  • Neuro-Symbolic Continual Learning: Knowledge, Reasoning Shortcuts and Concept Rehearsal (ICML2023)[paper]

  • Theory on Forgetting and Generalization of Continual Learning (ICML2023)[paper]

  • Poisoning Generative Replay in Continual Learning to Promote Forgetting (ICML2023)[paper]

  • Continual Vision-Language Representation Learning with Off-Diagonal Information (ICML2023)[paper]

  • Prototype-Sample Relation Distillation: Towards Replay-Free Continual Learning (ICML2023)[paper]

  • Does Continual Learning Equally Forget All Parameters? (ICML2023)[paper]

  • Self-regulating Prompts: Foundational Model Adaptation without Forgetting (ICCV 2023)[paper][code]

  • Tangent Model Composition for Ensembling and Continual Fine-tuning (ICCV 2023)[paper][code]

  • CBA: Improving Online Continual Learning via Continual Bias Adaptor (ICCV 2023)[paper]

  • CTP: Towards Vision-Language Continual Pretraining via Compatible Momentum Contrast and Topology Preservation (ICCV 2023)[paper][code]

  • NAPA-VQ: Neighborhood Aware Prototype Augmentation with Vector Quantization for Continual Learning (ICCV 2023)[paper][code]

  • Online Continual Learning on Hierarchical Label Expansion (ICCV 2023)[paper]

  • Class-Incremental Grouping Network for Continual Audio-Visual Learning (ICCV 2023)[paper][code]

  • Rapid Adaptation in Online Continual Learning: Are We Evaluating It Right? (ICCV 2023)[paper][code]

  • When Prompt-based Incremental Learning Does Not Meet Strong Pretraining (ICCV 2023)[paper]

  • Online Class Incremental Learning on Stochastic Blurry Task Boundary via Mask and Visual Prompt Tuning (ICCV 2023)[paper][code]

  • Dynamic Residual Classifier for Class Incremental Learning (ICCV 2023)[paper]

  • First Session Adaptation: A Strong Replay-Free Baseline for Class-Incremental Learning (ICCV 2023)[paper]

  • Masked Autoencoders are Efficient Class Incremental Learners (ICCV 2023)[paper]

  • Introducing Language Guidance in Prompt-based Continual Learning (ICCV 2023)[paper]

  • CLNeRF: Continual Learning Meets NeRFs (ICCV 2023)[paper]

  • Preventing Zero-Shot Transfer Degradation in Continual Learning of Vision-Language Models (ICCV 2023)[paper][code]

  • LFS-GAN: Lifelong Few-Shot Image Generation (ICCV 2023)[paper]

  • TARGET: Federated Class-Continual Learning via Exemplar-Free Distillation (ICCV 2023)[paper]

  • Learning to Learn: How to Continuously Teach Humans and Machines (ICCV 2023)[paper]

  • Audio-Visual Class-Incremental Learning (ICCV 2023)[paper][code]

  • MetaGCD: Learning to Continually Learn in Generalized Category Discovery (ICCV 2023)[paper]

  • Exemplar-Free Continual Transformer with Convolutions (ICCV 2023)[paper]

  • A Unified Continual Learning Framework with General Parameter-Efficient Tuning (ICCV 2023)[paper]

  • Incremental Generalized Category Discovery (ICCV 2023)[paper]

  • Heterogeneous Forgetting Compensation for Class-Incremental Learning (ICCV 2023)[paper][code]

  • Augmented Box Replay: Overcoming Foreground Shift for Incremental Object Detection (ICCV 2023)[paper][code]

  • MRN: Multiplexed Routing Network for Incremental Multilingual Text Recognition (ICCV 2023)[paper][code]

  • CLR: Channel-wise Lightweight Reprogramming for Continual Learning (ICCV 2023)[paper][code]

  • ICICLE: Interpretable Class Incremental Continual Learning (ICCV 2023)[paper]

  • Proxy Anchor-based Unsupervised Learning for Continuous Generalized Category Discovery (ICCV 2023)[paper]

  • SLCA: Slow Learner with Classifier Alignment for Continual Learning on a Pre-trained Model (ICCV 2023)[paper][code]

  • Online Prototype Learning for Online Continual Learning (ICCV 2023)[paper][code]

  • Analyzing and Reducing the Performance Gap in Cross-Lingual Transfer with Fine-tuning Slow and Fast (ACL2023)[paper]

  • Class-Incremental Learning based on Label Generation (ACL2023)[paper]

  • Computationally Budgeted Continual Learning: What Does Matter? (CVPR2023)[paper][code]

  • Real-Time Evaluation in Online Continual Learning: A New Hope (CVPR2023)[paper]

  • Dealing With Cross-Task Class Discrimination in Online Continual Learning (CVPR2023)[paper][code]

  • Decoupling Learning and Remembering: A Bilevel Memory Framework With Knowledge Projection for Task-Incremental Learning (CVPR2023)[paper][code]

  • GKEAL: Gaussian Kernel Embedded Analytic Learning for Few-shot Class Incremental Task (CVPR2023)[paper]

  • EcoTTA: Memory-Efficient Continual Test-time Adaptation via Self-distilled Regularization (CVPR2023)[paper]

  • Endpoints Weight Fusion for Class Incremental Semantic Segmentation (CVPR2023)[paper]

  • On the Stability-Plasticity Dilemma of Class-Incremental Learning (CVPR2023)[paper]

  • Regularizing Second-Order Influences for Continual Learning (CVPR2023)[paper][code]

  • Rebalancing Batch Normalization for Exemplar-based Class-Incremental Learning (CVPR2023)[paper]

  • Task Difficulty Aware Parameter Allocation & Regularization for Lifelong Learning (CVPR2023)[paper]

  • A Probabilistic Framework for Lifelong Test-Time Adaptation (CVPR2023)[paper][code]

  • Continual Semantic Segmentation with Automatic Memory Sample Selection (CVPR2023)[paper]

  • Exploring Data Geometry for Continual Learning (CVPR2023)[paper]

  • PCR: Proxy-based Contrastive Replay for Online Class-Incremental Continual Learning (CVPR2023)[paper][code]

  • Learning with Fantasy: Semantic-Aware Virtual Contrastive Constraint for Few-Shot Class-Incremental Learning (CVPR2023)[paper][code]

  • Foundation Model Drives Weakly Incremental Learning for Semantic Segmentation (CVPR2023)[paper]

  • Continual Detection Transformer for Incremental Object Detection (CVPR2023)[paper][code]

  • PIVOT: Prompting for Video Continual Learning (CVPR2023)[paper]

  • CODA-Prompt: COntinual Decomposed Attention-based Prompting for Rehearsal-Free Continual Learning (CVPR2023)[paper][code]

  • Principles of Forgetting in Domain-Incremental Semantic Segmentation in Adverse Weather Conditions (CVPR2023)[paper]

  • Class-Incremental Exemplar Compression for Class-Incremental Learning (CVPR2023)[paper][code]

  • Dense Network Expansion for Class Incremental Learning (CVPR2023)[paper]

  • Online Bias Correction for Task-Free Continual Learning (ICLR2023)[paper]

  • Sparse Distributed Memory is a Continual Learner (ICLR2023)[paper]

  • Continual Learning of Language Models (ICLR2023)[paper]

  • Progressive Prompts: Continual Learning for Language Models without Forgetting (ICLR2023)[paper]

  • Is Forgetting Less a Good Inductive Bias for Forward Transfer? (ICLR2023)[paper]

  • Online Boundary-Free Continual Learning by Scheduled Data Prior (ICLR2023)[paper]

  • Incremental Learning of Structured Memory via Closed-Loop Transcription (ICLR2023)[paper]

  • Better Generative Replay for Continual Federated Learning (ICLR2023)[paper]

  • 3EF: Class-Incremental Learning via Efficient Energy-Based Expansion and Fusion (ICLR2023)[paper]

  • Progressive Voronoi Diagram Subdivision Enables Accurate Data-free Class-Incremental Learning (ICLR2023)[paper]

  • Learning without Prejudices: Continual Unbiased Learning via Benign and Malignant Forgetting (ICLR2023)[paper]

  • Building a Subspace of Policies for Scalable Continual Learning (ICLR2023)[paper]

  • A Model or 603 Exemplars: Towards Memory-Efficient Class-Incremental Learning (ICLR2023)[paper]

  • Continual evaluation for lifelong learning: Identifying the stability gap (ICLR2023)[paper]

  • Continual Unsupervised Disentangling of Self-Organizing Representations (ICLR2023)[paper]

  • Warping the Space: Weight Space Rotation for Class-Incremental Few-Shot Learning (ICLR2023)[paper]

  • Neural Collapse Inspired Feature-Classifier Alignment for Few-Shot Class-Incremental Learning (ICLR2023)[paper]

  • On the Soft-Subnetwork for Few-Shot Class Incremental Learning (ICLR2023)[paper]

  • Task-Aware Information Routing from Common Representation Space in Lifelong Learning (ICLR2023)[paper]

  • Error Sensitivity Modulation based Experience Replay: Mitigating Abrupt Representation Drift in Continual Learning (ICLR2023)[paper]

  • Neural Weight Search for Scalable Task Incremental Learning (WACV2023)[paper]

  • Attribution-aware Weight Transfer: A Warm-Start Initialization for Class-Incremental Semantic Segmentation (WACV2023)[paper]

  • FeTrIL: Feature Translation for Exemplar-Free Class-Incremental Learning (WACV2023)[paper]

  • Do Pre-trained Models Benefit Equally in Continual Learning? (WACV2023)[paper] [code]

  • Sparse Coding in a Dual Memory System for Lifelong Learning (AAAI2023)[paper] [code]

2022

  • Prototype-guided continual adaptation for class-incremental unsupervised domain adaptation (ECCV2022)[paper] [code]

  • Balanced softmax cross-entropy for incremental learning with and without memory (CVIU)[paper]

  • Incremental Prompting: Episodic Memory Prompt for Lifelong Event Detection (COLING2022) [paper] [code]

  • Online Continual Learning through Mutual Information Maximization (ICML2022)[paper]

  • Improving Task-free Continual Learning by Distributionally Robust Memory Evolution (ICML2022)[paper]

  • Forget-free Continual Learning with Winning Subnetworks (ICML2022)[paper]

  • NISPA: Neuro-Inspired Stability-Plasticity Adaptation for Continual Learning in Sparse Networks (ICML2022)[paper]

  • Continual Learning via Sequential Function-Space Variational Inference (ICML2022)[paper]

  • A Theoretical Study on Solving Continual Learning (NeurIPS2022) [paper] [code]

  • ACIL: Analytic Class-Incremental Learning with Absolute Memorization and Privacy Protection (NeurIPS2022) [paper]

  • Beyond Not-Forgetting: Continual Learning with Backward Knowledge Transfer (NeurIPS2022) [paper]

  • Memory Efficient Continual Learning with Transformers (NeurIPS2022) [paper]

  • Margin-Based Few-Shot Class-Incremental Learning with Class-Level Overfitting Mitigation (NeurIPS2022) [paper] [code]

  • Disentangling Transfer in Continual Reinforcement Learning (NeurIPS2022) [paper]

  • Task-Free Continual Learning via Online Discrepancy Distance Learning (NeurIPS2022) [paper]

  • A simple but strong baseline for online continual learning: Repeated Augmented Rehearsal (NeurIPS2022) [paper]

  • S-Prompts Learning with Pre-trained Transformers: An Occam’s Razor for Domain Incremental Learning (NeurIPS2022) [paper]

  • Lifelong Neural Predictive Coding: Learning Cumulatively Online without Forgetting (NeurIPS2022) [paper]

  • Few-Shot Continual Active Learning by a Robot (NeurIPS2022) [paper]

  • Continual learning: a feature extraction formalization, an efficient algorithm, and fundamental obstructions(NeurIPS2022) [paper]

  • SparCL: Sparse Continual Learning on the Edge(NeurIPS2022) [paper]

  • CLiMB: A Continual Learning Benchmark for Vision-and-Language Tasks (NeurIPS2022) [paper] [code]

  • Continual Learning In Environments With Polynomial Mixing Times (NeurIPS2022) [paper] [code]

  • Exploring Example Influence in Continual Learning (NeurIPS2022) [paper] [code]

  • ALIFE: Adaptive Logit Regularizer and Feature Replay for Incremental Semantic Segmentation (NeurIPS2022) [paper]

  • On the Effectiveness of Lipschitz-Driven Rehearsal in Continual Learning (NeurIPS2022) [paper] [code]

  • On Reinforcement Learning and Distribution Matching for Fine-Tuning Language Models with no Catastrophic Forgetting (NeurIPS2022)[paper]

  • CGLB: Benchmark Tasks for Continual Graph Learning (NeurIPS2022)[paper] [code]

  • How Well Do Unsupervised Learning Algorithms Model Human Real-time and Life-long Learning? (NeurIPS2022)[paper]

  • CoSCL: Cooperation of Small Continual Learners is Stronger than a Big One (ECCV2022)[paper] [code]

  • Generative Negative Text Replay for Continual Vision-Language Pretraining (ECCV2022) [paper]

  • DualPrompt: Complementary Prompting for Rehearsal-free Continual Learning (ECCV2022) [paper] [code]

  • The Challenges of Continuous Self-Supervised Learning (ECCV2022)[paper]

  • Helpful or Harmful: Inter-Task Association in Continual Learning (ECCV2022)[paper]

  • incDFM: Incremental Deep Feature Modeling for Continual Novelty Detection (ECCV2022)[paper]

  • S3C: Self-Supervised Stochastic Classifiers for Few-Shot Class-Incremental Learning (ECCV2022)[paper]

  • Online Task-free Continual Learning with Dynamic Sparse Distributed Memory (ECCV2022)[paper][code]

  • Balancing between Forgetting and Acquisition in Incremental Subpopulation Learning (ECCV2022)[paper]

  • Class-Incremental Learning with Cross-Space Clustering and Controlled Transfer (ECCV2022) [paper] [code]

  • FOSTER: Feature Boosting and Compression for Class-Incremental Learning (ECCV2022) [paper] [code]

  • Meta-Learning with Less Forgetting on Large-Scale Non-Stationary Task Distributions (ECCV2022) [paper]

  • R-DFCIL: Relation-Guided Representation Learning for Data-Free Class Incremental Learning (ECCV2022) [paper] [code]

  • DLCFT: Deep Linear Continual Fine-Tuning for General Incremental Learning (ECCV2022) [paper]

  • Learning with Recoverable Forgetting (ECCV2022) [paper]

  • Prototype-Guided Continual Adaptation for Class-Incremental Unsupervised Domain Adaptation (ECCV2022) [paper] [code]

  • Balancing Stability and Plasticity through Advanced Null Space in Continual Learning (ECCV2022) [paper]

  • Long-Tailed Class Incremental Learning (ECCV2022) [paper]

  • Anti-Retroactive Interference for Lifelong Learning (ECCV2022) [paper]

  • Novel Class Discovery without Forgetting (ECCV2022) [paper]

  • Class-incremental Novel Class Discovery (ECCV2022) [paper]

  • Few-Shot Class Incremental Learning From an Open-Set Perspective(ECCV2022)[paper]

  • Incremental Task Learning with Incremental Rank Updates(ECCV2022)[paper]

  • Few-Shot Class-Incremental Learning via Entropy-Regularized Data-Free Replay(ECCV2022)[paper]

  • Online Continual Learning with Contrastive Vision Transformer (ECCV2022)[paper]

  • Transfer without Forgetting (ECCV2022) [paper][code]

  • Continual Training of Language Models for Few-Shot Learning (EMNLP2022) [paper] [code]

  • Uncertainty-aware Contrastive Distillation for Incremental Semantic Segmentation (TPAMI2022) [paper]

  • MgSvF: Multi-Grained Slow vs. Fast Framework for Few-Shot Class-Incremental Learning (TPAMI2022) [paper]

  • Class-Incremental Continual Learning into the eXtended DER-verse (TPAMI2022) [paper] [code]

  • Few-Shot Class-Incremental Learning by Sampling Multi-Phase Tasks (TPAMI2022) [paper] [code]

  • Continual Semi-Supervised Learning through Contrastive Interpolation Consistency (PRL2022) [paper][code]

  • GCR: Gradient Coreset Based Replay Buffer Selection for Continual Learning (CVPR2022) [paper]

  • Learning Bayesian Sparse Networks With Full Experience Replay for Continual Learning (CVPR2022) [paper]

  • Continual Learning With Lifelong Vision Transformer (CVPR2022) [paper]

  • Towards Better Plasticity-Stability Trade-Off in Incremental Learning: A Simple Linear Connector (CVPR2022) [paper]

  • Doodle It Yourself: Class Incremental Learning by Drawing a Few Sketches (CVPR2022) [paper]

  • Continual Learning for Visual Search with Backward Consistent Feature Embedding (CVPR2022) [paper]

  • Online Continual Learning on a Contaminated Data Stream with Blurry Task Boundaries (CVPR2022) [paper]

  • Not Just Selection, but Exploration: Online Class-Incremental Continual Learning via Dual View Consistency (CVPR2022) [paper]

  • Bring Evanescent Representations to Life in Lifelong Class Incremental Learning (CVPR2022) [paper]

  • Lifelong Graph Learning (CVPR2022) [paper]

  • Lifelong Unsupervised Domain Adaptive Person Re-identification with Coordinated Anti-forgetting and Adaptation (CVPR2022) [paper]

  • vCLIMB: A Novel Video Class Incremental Learning Benchmark (CVPR2022) [paper]

  • Class-Incremental Learning by Knowledge Distillation with Adaptive Feature Consolidation(CVPR2022) [paper]

  • Few-Shot Incremental Learning for Label-to-Image Translation (CVPR2022) [paper]

  • MetaFSCIL: A Meta-Learning Approach for Few-Shot Class Incremental Learning (CVPR2022) [paper]

  • Incremental Learning in Semantic Segmentation from Image Labels (CVPR2022) [paper]

  • Self-Supervised Models are Continual Learners (CVPR2022) [paper] [code]

  • Learning to Imagine: Diversify Memory for Incremental Learning using Unlabeled Data (CVPR2022) [paper]

  • General Incremental Learning with Domain-aware Categorical Representations (CVPR2022) [paper]

  • Constrained Few-shot Class-incremental Learning (CVPR2022) [paper]

  • Overcoming Catastrophic Forgetting in Incremental Object Detection via Elastic Response Distillation (CVPR2022) [paper]

  • Class-Incremental Learning with Strong Pre-trained Models (CVPR2022) [paper]

  • Energy-based Latent Aligner for Incremental Learning (CVPR2022) [paper] [code]

  • Meta-attention for ViT-backed Continual Learning (CVPR2022) [paper] [code]

  • Learning to Prompt for Continual Learning (CVPR2022) [paper] [code]

  • On Generalizing Beyond Domains in Cross-Domain Continual Learning (CVPR2022) [paper]

  • Probing Representation Forgetting in Supervised and Unsupervised Continual Learning (CVPR2022) [paper]

  • Incremental Transformer Structure Enhanced Image Inpainting with Masking Positional Encoding (CVPR2022) [paper] [code]

  • Mimicking the Oracle: An Initial Phase Decorrelation Approach for Class Incremental Learning (CVPR2022) [paper] [code]

  • Forward Compatible Few-Shot Class-Incremental Learning (CVPR2022) [paper] [code]

  • Self-Sustaining Representation Expansion for Non-Exemplar Class-Incremental Learning (CVPR2022) [paper]

  • DyTox: Transformers for Continual Learning with DYnamic TOken eXpansion (CVPR2022) [paper]

  • Federated Class-Incremental Learning (CVPR2022) [paper] [code]

  • Representation Compensation Networks for Continual Semantic Segmentation (CVPR2022) [paper]

  • A Multi-Head Model for Continual Learning via Out-of-Distribution Replay (CoLLAs2022) [paper] [code]

  • Continual Attentive Fusion for Incremental Learning in Semantic Segmentation (TMM2022) [paper]

  • Self-training for class-incremental semantic segmentation (TNNLS2022) [paper]

  • Effects of Auxiliary Knowledge on Continual Learning (ICPR2022) [paper]

  • Continual Sequence Generation with Adaptive Compositional Modules (ACL2022) [paper]

  • Learngene: From Open-World to Your Learning Task (AAAI2022) [paper] [code]

  • Rethinking the Representational Continuity: Towards Unsupervised Continual Learning (ICLR2022) [paper]

  • Continual Learning with Filter Atom Swapping (ICLR2022) [paper]

  • Continual Learning with Recursive Gradient Optimization (ICLR2022) [paper]

  • TRGP: Trust Region Gradient Projection for Continual Learning (ICLR2022) [paper]

  • Looking Back on Learned Experiences For Class/task Incremental Learning (ICLR2022) [paper]

  • Continual Normalization: Rethinking Batch Normalization for Online Continual Learning (ICLR2022) [paper]

  • Model Zoo: A Growing Brain That Learns Continually (ICLR2022) [paper]

  • Learning curves for continual learning in neural networks: Self-knowledge transfer and forgetting (ICLR2022) [paper]

  • Memory Replay with Data Compression for Continual Learning (ICLR2022) [paper]

  • Learning Fast, Learning Slow: A General Continual Learning Method based on Complementary Learning System (ICLR2022) [paper]

  • Online Coreset Selection for Rehearsal-based Continual Learning (ICLR2022) [paper]

  • Pretrained Language Model in Continual Learning: A Comparative Study (ICLR2022) [paper]

  • Online Continual Learning on Class Incremental Blurry Task Configuration with Anytime Inference (ICLR2022) [paper]

  • New Insights on Reducing Abrupt Representation Change in Online Continual Learning (ICLR2022) [paper]

  • Towards Continual Knowledge Learning of Language Models (ICLR2022) [paper]

  • CLEVA-Compass: A Continual Learning Evaluation Assessment Compass to Promote Research Transparency and Comparability (ICLR2022) [paper]

  • CoMPS: Continual Meta Policy Search (ICLR2022) [paper]

  • Information-theoretic Online Memory Selection for Continual Learning (ICLR2022) [paper]

  • Subspace Regularizers for Few-Shot Class Incremental Learning (ICLR2022) [paper]

  • LFPT5: A Unified Framework for Lifelong Few-shot Language Learning Based on Prompt Tuning of T5 (ICLR2022) [paper]

  • Effect of scale on catastrophic forgetting in neural networks (ICLR2022) [paper]

  • Dataset Knowledge Transfer for Class-Incremental Learning without Memory (WACV2022) [paper]

  • Knowledge Capture and Replay for Continual Learning (WACV2022) [paper]

  • Online Continual Learning via Candidates Voting (WACV2022) [paper]

  • lpSpikeCon: Enabling Low-Precision Spiking Neural Network Processing for Efficient Unsupervised Continual Learning on Autonomous Agents (IJCNN2022) [paper]

2021

  • Incremental Object Detection via Meta-Learning (TPAMI 2021) [paper] [code]
  • Triple-Memory Networks: A Brain-Inspired Method for Continual Learning (TNNLS 2021) [paper]
  • Memory efficient class-incremental learning for image classification (TNNLS 2021) [paper]
  • Class-Incremental Learning via Dual Augmentation (NeurIPS2021) [paper]
  • SSUL: Semantic Segmentation with Unknown Label for Exemplar-based Class-Incremental Learning (NeurIPS2021) [paper]
  • RMM: Reinforced Memory Management for Class-Incremental Learning (NeurIPS2021) [paper]
  • Overcoming Catastrophic Forgetting in Incremental Few-Shot Learning by Finding Flat Minima (NeurIPS2021) [paper]
  • Lifelong Domain Adaptation via Consolidated Internal Distribution (NeurIPS2021) [paper]
  • AFEC: Active Forgetting of Negative Transfer in Continual Learning (NeurIPS2021) [paper]
  • Natural continual learning: success is a journey, not (just) a destination (NeurIPS2021) [paper]
  • Gradient-based Editing of Memory Examples for Online Task-free Continual Learning (NeurIPS2021) [paper]
  • Optimizing Reusable Knowledge for Continual Learning via Metalearning (NeurIPS2021) [paper]
  • Formalizing the Generalization-Forgetting Trade-off in Continual Learning (NeurIPS2021) [paper]
  • Learning where to learn: Gradient sparsity in meta and continual learning (NeurIPS2021) [paper]
  • Flattening Sharpness for Dynamic Gradient Projection Memory Benefits Continual Learning (NeurIPS2021) [paper]
  • Posterior Meta-Replay for Continual Learning (NeurIPS2021) [paper]
  • Continual Auxiliary Task Learning (NeurIPS2021) [paper]
  • Mitigating Forgetting in Online Continual Learning with Neuron Calibration (NeurIPS2021) [paper]
  • BNS: Building Network Structures Dynamically for Continual Learning (NeurIPS2021) [paper]
  • DualNet: Continual Learning, Fast and Slow (NeurIPS2021) [paper]
  • BooVAE: Boosting Approach for Continual Learning of VAE (NeurIPS2021) [paper]
  • Generative vs. Discriminative: Rethinking The Meta-Continual Learning (NeurIPS2021) [paper]
  • Achieving Forgetting Prevention and Knowledge Transfer in Continual Learning (NeurIPS2021) [paper]
  • Bridging Non Co-occurrence with Unlabeled In-the-wild Data for Incremental Object Detection (NeurIPS, 2021) [paper] [code]
  • SS-IL: Separated Softmax for Incremental Learning (ICCV, 2021) [paper]
  • Striking a Balance between Stability and Plasticity for Class-Incremental Learning (ICCV, 2021) [paper]
  • Synthesized Feature based Few-Shot Class-Incremental Learning on a Mixture of Subspaces (ICCV, 2021) [paper]
  • Class-Incremental Learning for Action Recognition in Videos (ICCV, 2021) [paper]
  • Continual Prototype Evolution:Learning Online from Non-Stationary Data Streams (ICCV, 2021) [paper]
  • Rehearsal Revealed: The Limits and Merits of Revisiting Samples in Continual Learning (ICCV, 2021) [paper]
  • Co2L: Contrastive Continual Learning (ICCV, 2021) [paper]
  • Wanderlust: Online Continual Object Detection in the Real World (ICCV, 2021) [paper]
  • Continual Learning on Noisy Data Streams via Self-Purified Replay (ICCV, 2021) [paper]
  • Else-Net: Elastic Semantic Network for Continual Action Recognition from Skeleton Data (ICCV, 2021) [paper]
  • Detection and Continual Learning of Novel Face Presentation Attacks (ICCV, 2021) [paper]
  • Online Continual Learning with Natural Distribution Shifts: An Empirical Study with Visual Data (ICCV, 2021) [paper]
  • Continual Learning for Image-Based Camera Localization (ICCV, 2021) [paper]
  • Generalized and Incremental Few-Shot Learning by Explicit Learning and Calibration without Forgetting (ICCV, 2021) [paper]
  • Always Be Dreaming: A New Approach for Data-Free Class-Incremental Learning (ICCV, 2021) [paper]
  • RECALL: Replay-based Continual Learning in Semantic Segmentation (ICCV, 2021) [paper]
  • Few-Shot and Continual Learning with Attentive Independent Mechanisms (ICCV, 2021) [paper]
  • Learning with Selective Forgetting (IJCAI, 2021) [paper]
  • Continuous Coordination As a Realistic Scenario for Lifelong Learning (ICML, 2021) [paper]
  • Kernel Continual Learning (ICML, 2021) [paper]
  • Variational Auto-Regressive Gaussian Processes for Continual Learning (ICML, 2021) [paper]
  • Bayesian Structural Adaptation for Continual Learning (ICML, 2021) [paper]
  • Continual Learning in the Teacher-Student Setup: Impact of Task Similarity (ICML, 2021) [paper]
  • Continuous Coordination As a Realistic Scenario for Lifelong Learning (ICML, 2021) [paper]
  • Federated Continual Learning with Weighted Inter-client Transfer (ICML, 2021) [paper]
  • Adapting BERT for Continual Learning of a Sequence of Aspect Sentiment Classification Tasks (NAACL, 2021) [paper]
  • Continual Learning for Text Classification with Information Disentanglement Based Regularization (NAACL, 2021) [paper]
  • CLASSIC: Continual and Contrastive Learning of Aspect Sentiment Classification Tasks (EMNLP, 2021) [paper][code]
  • Co-Transport for Class-Incremental Learning (ACM MM, 2021) [paper]
  • Towards Open World Object Detection (CVPR, 2021) [paper] [code] [video]
  • Prototype Augmentation and Self-Supervision for Incremental Learning (CVPR, 2021) [paper] [code]
  • ORDisCo: Effective and Efficient Usage of Incremental Unlabeled Data for Semi-supervised Continual Learning (CVPR, 2021) [paper]
  • Incremental Learning via Rate Reduction (CVPR, 2021) [paper]
  • IIRC: Incremental Implicitly-Refined Classification (CVPR, 2021) [paper]
  • Continual Adaptation of Visual Representations via Domain Randomization and Meta-learning (CVPR, 2021) [paper]
  • Image De-raining via Continual Learning (CVPR, 2021) [paper]
  • Continual Learning via Bit-Level Information Preserving (CVPR, 2021) [paper]
  • Hyper-LifelongGAN: Scalable Lifelong Learning for Image Conditioned Generation (CVPR, 2021) [paper]
  • Lifelong Person Re-Identification via Adaptive Knowledge Accumulation (CVPR, 2021) [paper]
  • Distilling Causal Effect of Data in Class-Incremental Learning (CVPR, 2021) [paper]
  • Self-Promoted Prototype Refinement for Few-Shot Class-Incremental Learning (CVPR, 2021) [paper]
  • Layerwise Optimization by Gradient Decomposition for Continual Learning (CVPR, 2021) [paper]
  • Adaptive Aggregation Networks for Class-Incremental Learning (CVPR, 2021) [paper]
  • Incremental Few-Shot Instance Segmentation (CVPR, 2021) [paper]
  • Efficient Feature Transformations for Discriminative and Generative Continual Learning (CVPR, 2021) [paper]
  • On Learning the Geodesic Path for Incremental Learning (CVPR, 2021) [paper]
  • Few-Shot Incremental Learning with Continually Evolved Classifiers (CVPR, 2021) [paper]
  • Rectification-based Knowledge Retention for Continual Learning (CVPR, 2021) [paper]
  • DER: Dynamically Expandable Representation for Class Incremental Learning (CVPR, 2021) [paper]
  • Rainbow Memory: Continual Learning with a Memory of Diverse Samples (CVPR, 2021) [paper]
  • Training Networks in Null Space of Feature Covariance for Continual Learning (CVPR, 2021) [paper]
  • Semantic-aware Knowledge Distillation for Few-Shot Class-Incremental Learning (CVPR, 2021) [paper]
  • PLOP: Learning without Forgetting for Continual Semantic Segmentation (CVPR, 2021) [paper]
  • Continual Semantic Segmentation via Repulsion-Attraction of Sparse and Disentangled Latent Representations (CVPR, 2021) [paper]
  • Online Class-Incremental Continual Learning with Adversarial Shapley Value(AAAI, 2021) [paper] [code]
  • Lifelong and Continual Learning Dialogue Systems: Learning during Conversation(AAAI, 2021) [paper]
  • Continual learning for named entity recognition(AAAI, 2021) [paper]
  • Using Hindsight to Anchor Past Knowledge in Continual Learning(AAAI, 2021) [paper]
  • Split-and-Bridge: Adaptable Class Incremental Learning within a Single Neural Network(AAAI, 2021) [paper] [code]
  • Curriculum-Meta Learning for Order-Robust Continual Relation Extraction(AAAI, 2021) [paper]
  • Continual Learning by Using Information of Each Class Holistically(AAAI, 2021) [paper]
  • Gradient Regularized Contrastive Learning for Continual Domain Adaptation(AAAI, 2021) [paper]
  • Unsupervised Model Adaptation for Continual Semantic Segmentation(AAAI, 2021) [paper]
  • A Continual Learning Framework for Uncertainty-Aware Interactive Image Segmentation(AAAI, 2021) [paper]
  • Do Not Forget to Attend to Uncertainty While Mitigating Catastrophic Forgetting(WACV, 2021) [paper]
  • SpikeDyn: A Framework for Energy-Efficient Spiking Neural Networks with Continual and Unsupervised Learning Capabilities in Dynamic Environments (DAC2021) [paper]

2020

  • Rethinking Experience Replay: a Bag of Tricks for Continual Learning(ICPR, 2020) [paper] [code]
  • Continual Learning for Natural Language Generation in Task-oriented Dialog Systems(EMNLP, 2020) [paper]
  • Distill and Replay for Continual Language Learning(COLING, 2020) [paper]
  • Continual Learning of a Mixed Sequence of Similar and Dissimilar Tasks (NeurIPS2020) [paper] [code]
  • Meta-Consolidation for Continual Learning (NeurIPS2020) [paper]
  • Understanding the Role of Training Regimes in Continual Learning (NeurIPS2020) [paper]
  • Continual Learning with Node-Importance based Adaptive Group Sparse Regularization (NeurIPS2020) [paper]
  • Online Fast Adaptation and Knowledge Accumulation (OSAKA): a New Approach to Continual Learning (NeurIPS2020) [paper]
  • Coresets via Bilevel Optimization for Continual Learning and Streaming (NeurIPS2020) [paper]
  • RATT: Recurrent Attention to Transient Tasks for Continual Image Captioning (NeurIPS2020) [paper]
  • Continual Deep Learning by Functional Regularisation of Memorable Past (NeurIPS2020) [paper]
  • Dark Experience for General Continual Learning: a Strong, Simple Baseline (NeurIPS2020) [paper] [code]
  • GAN Memory with No Forgetting (NeurIPS2020) [paper]
  • Calibrating CNNs for Lifelong Learning (NeurIPS2020) [paper]
  • Mitigating Forgetting in Online Continual Learning via Instance-Aware Parameterization (NeurIPS2020) [paper]
  • ADER: Adaptively Distilled Exemplar Replay Towards Continual Learning for Session-based Recommendation(RecSys, 2020) [paper]
  • Initial Classifier Weights Replay for Memoryless Class Incremental Learning (BMVC2020) [paper]
  • Adversarial Continual Learning (ECCV2020) [paper] [code]
  • REMIND Your Neural Network to Prevent Catastrophic Forgetting (ECCV2020) [paper] [code]
  • Incremental Meta-Learning via Indirect Discriminant Alignment (ECCV2020) [paper]
  • Memory-Efficient Incremental Learning Through Feature Adaptation (ECCV2020) [paper]
  • PODNet: Pooled Outputs Distillation for Small-Tasks Incremental Learning (ECCV2020) [paper] [code]
  • Reparameterizing Convolutions for Incremental Multi-Task Learning Without Task Interference (ECCV2020) [paper]
  • Learning latent representions across multiple data domains using Lifelong VAEGAN (ECCV2020) [paper]
  • Online Continual Learning under Extreme Memory Constraints (ECCV2020) [paper]
  • Class-Incremental Domain Adaptation (ECCV2020) [paper]
  • More Classifiers, Less Forgetting: A Generic Multi-classifier Paradigm for Incremental Learning (ECCV2020) [paper]
  • Piggyback GAN: Efficient Lifelong Learning for Image Conditioned Generation (ECCV2020) [paper]
  • GDumb: A Simple Approach that Questions Our Progress in Continual Learning (ECCV2020) [paper]
  • Imbalanced Continual Learning with Partitioning Reservoir Sampling (ECCV2020) [paper]
  • Topology-Preserving Class-Incremental Learning (ECCV2020) [paper]
  • GraphSAIL: Graph Structure Aware Incremental Learning for Recommender Systems (CIKM2020) [paper]
  • OvA-INN: Continual Learning with Invertible Neural Networks (IJCNN2020) [paper]
  • XtarNet: Learning to Extract Task-Adaptive Representation for Incremental Few-Shot Learning (ICLM2020) [paper]
  • Optimal Continual Learning has Perfect Memory and is NP-HARD (ICML2020) [paper]
  • Neural Topic Modeling with Continual Lifelong Learning (ICML2020) [paper]
  • Continual Learning with Knowledge Transfer for Sentiment Classification (ECML-PKDD2020) [paper] [code]
  • Semantic Drift Compensation for Class-Incremental Learning (CVPR2020) [paper] [code]
  • Few-Shot Class-Incremental Learning (CVPR2020) [paper]
  • Modeling the Background for Incremental Learning in Semantic Segmentation (CVPR2020) [paper]
  • Incremental Few-Shot Object Detection (CVPR2020) [paper]
  • Incremental Learning In Online Scenario (CVPR2020) [paper]
  • Maintaining Discrimination and Fairness in Class Incremental Learning (CVPR2020) [paper]
  • Conditional Channel Gated Networks for Task-Aware Continual Learning (CVPR2020) [paper]
  • Continual Learning with Extended Kronecker-factored Approximate Curvature (CVPR2020) [paper]
  • iTAML : An Incremental Task-Agnostic Meta-learning Approach (CVPR2020) [paper] [code]
  • Mnemonics Training: Multi-Class Incremental Learning without Forgetting (CVPR2020) [paper] [code]
  • ScaIL: Classifier Weights Scaling for Class Incremental Learning (WACV2020) [paper]
  • Accepted papers(ICLR2020) [paper]
  • Brain-inspired replay for continual learning with artificial neural networks (Natrue Communications 2020) [paper] [code]
  • Learning to Continually Learn (ECAI 2020) [paper] [code]

2019

  • Compacting, Picking and Growing for Unforgetting Continual Learning (NeurIPS2019)[paper][code]
  • Increasingly Packing Multiple Facial-Informatics Modules in A Unified Deep-Learning Model via Lifelong Learning (ICMR2019) [paper][code]
  • Towards Training Recurrent Neural Networks for Lifelong Learning (Neural Computation 2019) [paper]
  • Complementary Learning for Overcoming Catastrophic Forgetting Using Experience Replay (IJCAI2019) [paper]
  • IL2M: Class Incremental Learning With Dual Memory (ICCV2019) [paper]
  • Incremental Learning Using Conditional Adversarial Networks (ICCV2019) [paper]
  • Adaptive Deep Models for Incremental Learning: Considering Capacity Scalability and Sustainability (KDD2019) [paper]
  • Random Path Selection for Incremental Learning (NeurIPS2019) [paper]
  • Online Continual Learning with Maximal Interfered Retrieval (NeurIPS2019) [paper]
  • Meta-Learning Representations for Continual Learning (NeurIPS2019) [paper] [code]
  • Overcoming Catastrophic Forgetting with Unlabeled Data in the Wild (ICCV2019) [paper]
  • Continual Learning by Asymmetric Loss Approximation with Single-Side Overestimation (ICCV2019) [paper]
  • Lifelong GAN: Continual Learning for Conditional Image Generation (ICCV2019) [paper]
  • Continual learning of context-dependent processing in neural networks (Nature Machine Intelligence 2019) [paper] [code]
  • Large Scale Incremental Learning (CVPR2019) [paper] [code]
  • Learning a Unified Classifier Incrementally via Rebalancing (CVPR2019) [paper] [code]
  • Learning Without Memorizing (CVPR2019) [paper]
  • Learning to Remember: A Synaptic Plasticity Driven Framework for Continual Learning (CVPR2019) [paper]
  • Task-Free Continual Learning (CVPR2019) [paper]
  • Learn to Grow: A Continual Structure Learning Framework for Overcoming Catastrophic Forgetting (ICML2019) [paper]
  • Efficient Lifelong Learning with A-GEM (ICLR2019) [paper] [code]
  • Learning to Learn without Forgetting By Maximizing Transfer and Minimizing Interference (ICLR2019) [paper] [code]
  • Overcoming Catastrophic Forgetting via Model Adaptation (ICLR2019) [paper]
  • A comprehensive, application-oriented study of catastrophic forgetting in DNNs (ICLR2019) [paper]

2018

  • Memory Replay GANs: learning to generate images from new categories without forgetting (NIPS2018) [paper] [code]
  • Reinforced Continual Learning (NIPS2018) [paper] [code]
  • Online Structured Laplace Approximations for Overcoming Catastrophic Forgetting (NIPS2018) [paper]
  • Rotate your Networks: Better Weight Consolidation and Less Catastrophic Forgetting (R-EWC) (ICPR2018) [paper] [code]
  • Exemplar-Supported Generative Reproduction for Class Incremental Learning (BMVC2018) [paper] [code]
  • End-to-End Incremental Learning (ECCV2018) [paper][code]
  • Riemannian Walk for Incremental Learning: Understanding Forgetting and Intransigence (ECCV2018)[paper]
  • Piggyback: Adapting a Single Network to Multiple Tasks by Learning to Mask Weights (ECCV2018) [paper] [code]
  • Memory Aware Synapses: Learning what (not) to forget (ECCV2018) [paper] [code]
  • Lifelong Learning via Progressive Distillation and Retrospection (ECCV2018) [paper]
  • PackNet: Adding Multiple Tasks to a Single Network by Iterative Pruning (CVPR2018) [paper] [code]
  • Overcoming Catastrophic Forgetting with Hard Attention to the Task (ICML2018) [paper] [code]
  • Lifelong Learning with Dynamically Expandable Networks (ICLR2018) [paper]
  • FearNet: Brain-Inspired Model for Incremental Learning (ICLR2018) [paper]

2017

  • Incremental Learning of Object Detectors Without Catastrophic Forgetting (ICCV2017) [paper]
  • Overcoming catastrophic forgetting in neural networks (EWC) (PNAS2017) [paper] [code] [code]
  • Continual Learning Through Synaptic Intelligence (ICML2017) [paper] [code]
  • Gradient Episodic Memory for Continual Learning (NIPS2017) [paper] [code]
  • iCaRL: Incremental Classifier and Representation Learning (CVPR2017) [paper] [code]
  • Continual Learning with Deep Generative Replay (NIPS2017) [paper] [code]
  • Overcoming Catastrophic Forgetting by Incremental Moment Matching (NIPS2017) [paper] [code]
  • Expert Gate: Lifelong Learning with a Network of Experts (CVPR2017) [paper]
  • Encoder Based Lifelong Learning (ICCV2017) [paper]

2016

  • Learning without forgetting (ECCV2016) [paper] [code]

Find it interesting that there are more shared techniques than I thought for incremental learning (exemplars-based).

ContinualAI wiki

Workshops

Challenges or Competitions

Feel free to contact me if you find any interesting paper is missing.

Workshop papers are currently out due to space.

awesome-incremental-learning's People

Contributors

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