International audienceSequence metric learning is becoming a widely adopted approach for various applications dealing with sequential multi-variate data such as activity recognition or natural language processing. It is most of the time tackled with sequence alignment approaches or representation learning. In this paper, we propose to study this subject from the point of view of dynamical system theory by drawing the analogy between synchronized trajectories produced by dynamical systems and the distance between similar sequences processed by a siamese recurrent neural network. Indeed, a siamese recurrent network comprises two identical sub-networks, two identical dynamical systems which can theoretically achieve complete synchronization if...
This study investigated the use of state-trace analysis (Bamber, 1979) when applied to computational...
Much of the observational data that we see around is, is ordered in space or time. For instance, vid...
Established recurrent neural networks are well-suited to solve a wide variety of prediction tasks in...
International audienceSequence metric learning is becoming a widely adopted approach for various app...
Sequence processing involves several tasks such as clustering, classification, prediction, and trans...
Recurrent neural networks (RNNs) in combination with a pooling op-erator and the neighbourhood compo...
[[abstract]]A recurrent neural networks with context units that can handle temporal sequences is pro...
Abstract—Recurrent networks can generate spatio-temporal neural sequences of very large cycles, havi...
This thesis studies the introduction of a priori structure into the design of learning systems based...
This thesis has been realized thanks to a cifre between Orange labs Grenoble and the LIRIS at Lyon. ...
A novel variant of a familiar recurrent network learning algorithm is described. This algorithm is c...
The learning of sequences is a fundamental ability of biological networks. While there are many arti...
Learning a distance metric provides solutions to many problems where the data exists in a high dimen...
We explore a network architecture introduced by Elman (1988) for predicting successive elements of a...
Makarov VA, Song Y, Velarde MG, Hübner D, Cruse H. Elements for a general memory structure: properti...
This study investigated the use of state-trace analysis (Bamber, 1979) when applied to computational...
Much of the observational data that we see around is, is ordered in space or time. For instance, vid...
Established recurrent neural networks are well-suited to solve a wide variety of prediction tasks in...
International audienceSequence metric learning is becoming a widely adopted approach for various app...
Sequence processing involves several tasks such as clustering, classification, prediction, and trans...
Recurrent neural networks (RNNs) in combination with a pooling op-erator and the neighbourhood compo...
[[abstract]]A recurrent neural networks with context units that can handle temporal sequences is pro...
Abstract—Recurrent networks can generate spatio-temporal neural sequences of very large cycles, havi...
This thesis studies the introduction of a priori structure into the design of learning systems based...
This thesis has been realized thanks to a cifre between Orange labs Grenoble and the LIRIS at Lyon. ...
A novel variant of a familiar recurrent network learning algorithm is described. This algorithm is c...
The learning of sequences is a fundamental ability of biological networks. While there are many arti...
Learning a distance metric provides solutions to many problems where the data exists in a high dimen...
We explore a network architecture introduced by Elman (1988) for predicting successive elements of a...
Makarov VA, Song Y, Velarde MG, Hübner D, Cruse H. Elements for a general memory structure: properti...
This study investigated the use of state-trace analysis (Bamber, 1979) when applied to computational...
Much of the observational data that we see around is, is ordered in space or time. For instance, vid...
Established recurrent neural networks are well-suited to solve a wide variety of prediction tasks in...