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Split CIFAR100
A variant of CIFAR-100 dataset, where the original dataset is split into 20 disjoint tasks, each consisting of 2,500 samples from 5 classes. -
Generative Kernel Continual Learning
Generative kernel continual learning dataset -
BECoTTA: Input-dependent Online Blending of Experts for Continual Test-time A...
Continual Test Time Adaptation (CTTA) is re-required to adapt efficiently to continuous unseen domains while retaining previously learned knowledge. -
splitMNIST, splitFashionMNIST, splitCIFAR
The dataset used in the paper is a continual learning benchmark, consisting of three datasets: splitMNIST, splitFashionMNIST, and splitCIFAR. -
Sparse Diffusion Policy: A Sparse, Reusable, and Flexible Policy for Robot Le...
The Sparse Diffusion Policy (SDP) framework, which integrates Mixture of Experts (MoE) layers into the diffusion policy. -
COB: Crude Oil Benchmark datasets
Real-world time-series benchmark datasets for crude oil prices with distribution shifts -
Split CIFAR
The dataset used in this paper for Continual Learning, Catastrophic Forgetting and PCA-OGD. -
Permuted MNIST
The Permuted MNIST dataset is a variation of MNIST where new tasks of comparable difficulty to the original MNIST classification task are created by permuting the pixels of... -
Split MNIST
The dataset used in this paper for Continual Learning, Catastrophic Forgetting and PCA-OGD. -
Rotated MNIST
The Rotated MNIST dataset is a subset of the MNIST dataset with images of handwritten digits rotated by 90 degrees. -
Multimodal Parameter-Efficient Few-Shot Class Incremental Learning
Few-Shot Class Incremental Learning (FSCIL) is a challenging continual learning task, where limited training examples are available during several learning sessions.