Reservoir Computing Networks (RCNs) belong to a group of machine learning techniques that project the input space non-linearly into a high-dimensional feature space, where the underlying task can be solved linearly. Popular variants of RCNs are capable of solving complex tasks equivalently to widely used deep neural networks, but with a substantially simpler training paradigm based on linear regression. In this paper, we show how to uniformly describe RCNs with small and clearly defined building blocks, and we introduce the Python toolbox PyRCN (Python Reservoir Computing Networks) for optimizing, training and analyzing RCNs on arbitrarily large datasets. The tool is based on widely-used scientific packages and complies with the scikit-lear...
Abstract Reservoir computers are powerful machine learning algorithms for predicting nonlinear syste...
Reservoir Computing (RC) offers a computationally efficient and well performing technique for using the...
Machine Learning for graphs is nowadays a research topic of consolidated relevance. Common approache...
Reservoir Computing Networks (RCNs) belong to a group of machine learning techniques that project th...
International audienceReservoir Computing (RC) is a type of recurrent neural network (RNNs) where le...
International audienceReservoirPy is a simple user-friendly library based on Python scientific modul...
In recent years, artificial intelligence has been dominated by neural networks. These systems potent...
This paper presents reservoirpy, a Python library for Reservoir Computing (RC) models design and tra...
Reservoir computing (RC) studies the properties of large recurrent networks of artificial neurons, w...
Recurrent Neural Networks (RNNs) are amongst the most powerful Machine Learning models to deal with ...
It has been demonstrated that in the realm of complex systems not only exact predic-tions of multiva...
We introduce a novel class of Reservoir Computing (RC) models, a family of efficiently trainable Rec...
Abstract—In the last decade, a new computational paradigm was introduced in the field of Machine Lea...
My study is founded on recurrent neural networks but using RC method leads us to a faster process wi...
The study of learning models for direct processing complex data structures has gained an increasing ...
Abstract Reservoir computers are powerful machine learning algorithms for predicting nonlinear syste...
Reservoir Computing (RC) offers a computationally efficient and well performing technique for using the...
Machine Learning for graphs is nowadays a research topic of consolidated relevance. Common approache...
Reservoir Computing Networks (RCNs) belong to a group of machine learning techniques that project th...
International audienceReservoir Computing (RC) is a type of recurrent neural network (RNNs) where le...
International audienceReservoirPy is a simple user-friendly library based on Python scientific modul...
In recent years, artificial intelligence has been dominated by neural networks. These systems potent...
This paper presents reservoirpy, a Python library for Reservoir Computing (RC) models design and tra...
Reservoir computing (RC) studies the properties of large recurrent networks of artificial neurons, w...
Recurrent Neural Networks (RNNs) are amongst the most powerful Machine Learning models to deal with ...
It has been demonstrated that in the realm of complex systems not only exact predic-tions of multiva...
We introduce a novel class of Reservoir Computing (RC) models, a family of efficiently trainable Rec...
Abstract—In the last decade, a new computational paradigm was introduced in the field of Machine Lea...
My study is founded on recurrent neural networks but using RC method leads us to a faster process wi...
The study of learning models for direct processing complex data structures has gained an increasing ...
Abstract Reservoir computers are powerful machine learning algorithms for predicting nonlinear syste...
Reservoir Computing (RC) offers a computationally efficient and well performing technique for using the...
Machine Learning for graphs is nowadays a research topic of consolidated relevance. Common approache...