International audienceIt is common to evaluate the performance of a machine learning model by measuring its predictive power on a test dataset. This approach favors complicated models that can smoothly fit complex functions and generalize well from training data points. Although essential components of intelligence, speed and data efficiency of this learning process are rarely reported or compared between different candidate models. In this paper, we introduce a benchmark of increasingly difficult tasks together with a data efficiency metric to measure how quickly machine learning models learn from training data. We compare the learning speed of some established sequential supervised models, such as RNNs, LSTMs, or Transformers, with relati...
Reservoir computing is a recently introduced brain-inspired machine learning paradigm capable of exc...
Reservoir Computing (RC) is a recent research axea, in which a untrained recurrent network of nodes ...
peer reviewedWith renewed global interest for Artificial Intelligence (AI) methods, the past decade ...
International audienceIt is common to evaluate the performance of a machine learning model by measur...
In recent years, artificial intelligence has been dominated by neural networks. These systems potent...
Reservoir computing is a machine learning method that solves tasks using the response of a dynamical...
Abstract Reservoir computers are powerful machine learning algorithms for predicting nonlinear syste...
The increasing role of Artificial Intelligence (AI) and Machine Learning (ML) in our lives brought a...
In recent years, machine learning (ML) and, more noticeably, deep learning (DL), have be- come incre...
In order to make predictions with high accuracy, conventional deep learning systems require large tr...
Physical reservoir computing approaches have gained increased attention in recent years due to their...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
Reservoir Computing Networks (RCNs) belong to a group of machine learning techniques that project th...
Computers are powerful tools which perform fast, accurate calculations over huge sets of data. Howev...
Reservoir computing provides a simpler paradigm of training recurrent networks by initialising and a...
Reservoir computing is a recently introduced brain-inspired machine learning paradigm capable of exc...
Reservoir Computing (RC) is a recent research axea, in which a untrained recurrent network of nodes ...
peer reviewedWith renewed global interest for Artificial Intelligence (AI) methods, the past decade ...
International audienceIt is common to evaluate the performance of a machine learning model by measur...
In recent years, artificial intelligence has been dominated by neural networks. These systems potent...
Reservoir computing is a machine learning method that solves tasks using the response of a dynamical...
Abstract Reservoir computers are powerful machine learning algorithms for predicting nonlinear syste...
The increasing role of Artificial Intelligence (AI) and Machine Learning (ML) in our lives brought a...
In recent years, machine learning (ML) and, more noticeably, deep learning (DL), have be- come incre...
In order to make predictions with high accuracy, conventional deep learning systems require large tr...
Physical reservoir computing approaches have gained increased attention in recent years due to their...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
Reservoir Computing Networks (RCNs) belong to a group of machine learning techniques that project th...
Computers are powerful tools which perform fast, accurate calculations over huge sets of data. Howev...
Reservoir computing provides a simpler paradigm of training recurrent networks by initialising and a...
Reservoir computing is a recently introduced brain-inspired machine learning paradigm capable of exc...
Reservoir Computing (RC) is a recent research axea, in which a untrained recurrent network of nodes ...
peer reviewedWith renewed global interest for Artificial Intelligence (AI) methods, the past decade ...