Online continual learning aims to get closer to a live learning experience by learning directly on a stream of data with temporally shifting distribution and by storing a minimum amount of data from that stream. In this empirical evaluation, we evaluate various methods from the literature that tackle online continual learning. More specifically, we focus on the class-incremental setting in the context of image classification, where the learner must learn new classes incrementally from a stream of data. We compare these methods on the Split-CIFAR100 and Split-TinyImagenet benchmarks, and measure their average accuracy, forgetting, stability, and quality of the representations, to evaluate various aspects of the algorithm at the end but also ...
Continual Learning deals with Artificial Intelligent agents striving to learn from an ever-ending s...
Continual Learning (CL) allows artificial neural networks to learn a sequence of tasks without catas...
Continual learning requires the model to maintain the learned knowledge while learning from a non-i....
The ability of a model to learn continually can be empirically assessed in different continual learn...
The ability of a model to learn continually can be empirically assessed in different continual learn...
Recently, self-supervised representation learning gives further development in multimedia technology...
Deep neural networks have shown remarkable performance when trained on independent and identically d...
Real-time on-device continual learning is needed for new applications such as home robots, user pers...
Continual learning is a crucial ability for learning systems that have to adapt to changing data dis...
Continual learning (CL) is widely regarded as crucial challenge for lifelong AI. However, existing C...
Online continual learning (CL) in image classification studies the problem of learning to classify i...
Continual learning (CL) is considered as one of the next big challenges in AI. However, the existing...
Learning continuously during all model lifetime is fundamental to deploy machine learning solutions ...
Continual Learning (CL) investigates how to train Deep Networks on a stream of tasks without incurri...
Continual Learning (CL) investigates how to train Deep Networks on a stream of tasks without incurri...
Continual Learning deals with Artificial Intelligent agents striving to learn from an ever-ending s...
Continual Learning (CL) allows artificial neural networks to learn a sequence of tasks without catas...
Continual learning requires the model to maintain the learned knowledge while learning from a non-i....
The ability of a model to learn continually can be empirically assessed in different continual learn...
The ability of a model to learn continually can be empirically assessed in different continual learn...
Recently, self-supervised representation learning gives further development in multimedia technology...
Deep neural networks have shown remarkable performance when trained on independent and identically d...
Real-time on-device continual learning is needed for new applications such as home robots, user pers...
Continual learning is a crucial ability for learning systems that have to adapt to changing data dis...
Continual learning (CL) is widely regarded as crucial challenge for lifelong AI. However, existing C...
Online continual learning (CL) in image classification studies the problem of learning to classify i...
Continual learning (CL) is considered as one of the next big challenges in AI. However, the existing...
Learning continuously during all model lifetime is fundamental to deploy machine learning solutions ...
Continual Learning (CL) investigates how to train Deep Networks on a stream of tasks without incurri...
Continual Learning (CL) investigates how to train Deep Networks on a stream of tasks without incurri...
Continual Learning deals with Artificial Intelligent agents striving to learn from an ever-ending s...
Continual Learning (CL) allows artificial neural networks to learn a sequence of tasks without catas...
Continual learning requires the model to maintain the learned knowledge while learning from a non-i....