One aim shared by multiple settings, such as continual learning or transfer learning, is to leverage previously acquired knowledge to converge faster on the current task. Usually this is done through fine-tuning, where an implicit assumption is that the network maintains its plasticity, meaning that the performance it can reach on any given task is not affected negatively by previously seen tasks. It has been observed recently that a pretrained model on data from the same distribution as the one it is fine-tuned on might not reach the same generalisation as a freshly initialised one. We build and extend this observation, providing a hypothesis for the mechanics behind it. We discuss the implication of losing plasticity for continual learnin...
One of the most important and ubiquitous building blocks of machine learning is gradient based optim...
Neumann K, Steil JJ. Optimizing Extreme Learning Machines via Ridge Regression and Batch Intrinsic P...
A major goal of bio-inspired artificial intelligence is to design artificial neural networks with ab...
Plasticity is the ability to adapt, the ability to shape a model. In order to better understand how ...
Plasticity, the ability of a neural network to quickly change its predictions in response to new inf...
Plastic neural networks have the ability to adapt to new tasks. However, in a continual learning set...
Deep neural networks have shown remarkable performance when trained on independent and identically d...
For decades research has pursued the ambitious goal of designing computer models that learn to solve...
[[abstract]]In non-batch learning systems, an index called plasticity is needed to indicate how easy...
Neural activity is often low dimensional and dominated by only a few prominent neural covariation pa...
Humans can learn to perform multiple tasks in succession over the lifespan ("continual" learning), w...
Continual learning (CL) is a setting in which an agent has to learn from an incoming stream of data ...
Neural networks struggle in continual learning settings from catastrophic forgetting: when trials ar...
The intrinsic difficulty in adapting deep learning models to non-stationary environments limits the ...
this paper (Parisi, Nolfi, & Cecconi, 1992). The performance of the elite did not improve when l...
One of the most important and ubiquitous building blocks of machine learning is gradient based optim...
Neumann K, Steil JJ. Optimizing Extreme Learning Machines via Ridge Regression and Batch Intrinsic P...
A major goal of bio-inspired artificial intelligence is to design artificial neural networks with ab...
Plasticity is the ability to adapt, the ability to shape a model. In order to better understand how ...
Plasticity, the ability of a neural network to quickly change its predictions in response to new inf...
Plastic neural networks have the ability to adapt to new tasks. However, in a continual learning set...
Deep neural networks have shown remarkable performance when trained on independent and identically d...
For decades research has pursued the ambitious goal of designing computer models that learn to solve...
[[abstract]]In non-batch learning systems, an index called plasticity is needed to indicate how easy...
Neural activity is often low dimensional and dominated by only a few prominent neural covariation pa...
Humans can learn to perform multiple tasks in succession over the lifespan ("continual" learning), w...
Continual learning (CL) is a setting in which an agent has to learn from an incoming stream of data ...
Neural networks struggle in continual learning settings from catastrophic forgetting: when trials ar...
The intrinsic difficulty in adapting deep learning models to non-stationary environments limits the ...
this paper (Parisi, Nolfi, & Cecconi, 1992). The performance of the elite did not improve when l...
One of the most important and ubiquitous building blocks of machine learning is gradient based optim...
Neumann K, Steil JJ. Optimizing Extreme Learning Machines via Ridge Regression and Batch Intrinsic P...
A major goal of bio-inspired artificial intelligence is to design artificial neural networks with ab...