The intrinsic difficulty in adapting deep learning models to non-stationary environments limits the applicability of neural networks to real-world tasks. This issue is critical in practical supervised learning settings, such as the ones in which a pre-trained model computes projections toward a latent space where different task predictors are sequentially learned over time. As a matter of fact, incrementally fine-tuning the whole model to better adapt to new tasks usually results in catastrophic forgetting, with decreasing performance over the past experiences and losing valuable knowledge from the pretraining stage. In this paper, we propose a novel strategy to make the fine-tuning procedure more effective, by avoiding to update the pre-tr...
Continual Learning (CL) is the process of learning new things on top of what has already been learne...
Although deep learning models have achieved significant successes in various fields, most of them ha...
Part 1: Machine Learning (ML), Deep Learning (DL), Internet of Things (IoT)International audienceArt...
Learning and adapting to new distributions or learning new tasks sequentially without forgetting the...
Deep learning has enjoyed tremendous success over the last decade, but the training of practically u...
Learning and adapting to new distributions or learning new tasks sequentially without forgetting the...
In this short paper, we propose a baseline (off-the-shelf) for Continual Learning of Computer Vision...
Though modern deep learning based approaches have achieved remarkable progress in computer vision co...
Pre-trained models are nowadays a fundamental component of machine learning research. In continual l...
Though modern deep learning based approaches have achieved remarkable progress in computer vision co...
In Continual Learning (CL), a neural network is trained on a stream of data whose distribution chang...
In Continual Learning (CL), a neural network is trained on a stream of data whose distribution chang...
Continual Learning (CL) allows artificial neural networks to learn a sequence of tasks without catas...
Plastic neural networks have the ability to adapt to new tasks. However, in a continual learning set...
Continual learning is a crucial ability for learning systems that have to adapt to changing data dis...
Continual Learning (CL) is the process of learning new things on top of what has already been learne...
Although deep learning models have achieved significant successes in various fields, most of them ha...
Part 1: Machine Learning (ML), Deep Learning (DL), Internet of Things (IoT)International audienceArt...
Learning and adapting to new distributions or learning new tasks sequentially without forgetting the...
Deep learning has enjoyed tremendous success over the last decade, but the training of practically u...
Learning and adapting to new distributions or learning new tasks sequentially without forgetting the...
In this short paper, we propose a baseline (off-the-shelf) for Continual Learning of Computer Vision...
Though modern deep learning based approaches have achieved remarkable progress in computer vision co...
Pre-trained models are nowadays a fundamental component of machine learning research. In continual l...
Though modern deep learning based approaches have achieved remarkable progress in computer vision co...
In Continual Learning (CL), a neural network is trained on a stream of data whose distribution chang...
In Continual Learning (CL), a neural network is trained on a stream of data whose distribution chang...
Continual Learning (CL) allows artificial neural networks to learn a sequence of tasks without catas...
Plastic neural networks have the ability to adapt to new tasks. However, in a continual learning set...
Continual learning is a crucial ability for learning systems that have to adapt to changing data dis...
Continual Learning (CL) is the process of learning new things on top of what has already been learne...
Although deep learning models have achieved significant successes in various fields, most of them ha...
Part 1: Machine Learning (ML), Deep Learning (DL), Internet of Things (IoT)International audienceArt...