Learning structure in temporally-extended sequences is a difficult com-putational problem because only a fraction of the relevant information is available at any instant. Although variants of back propagation can in principle be used to find structure in sequences, in practice they are not sufficiently powerful to discover arbitrary contingencies, especially those spanning long temporal intervals or involving high order statistics. For example, in designing a connectionist network for music composition, we have encountered the problem that the net is able to learn musical struc-ture that occurs locally in time-e.g., relations among notes within a mu-sical phrase-but not structure that occurs over longer time periods--e.g., relations among p...
In this article, we report a simulation result of unsupervised learning characterized as temporally ...
Is knowledge acquired implicitly abstract or based on memory for exemplars? This question is at the ...
In classical machine learning, hand-designed features are used for learning a mapping from raw data....
We explore a network architecture introduced by Elman (1988) for predicting successive elements of a...
Do you want your neural net algorithm to learn sequences? Do not lim-it yourself to conventional gra...
Human brains can deal with sequences with temporal dependencies on a broad range of timescales, many...
Time underlies many interesting human behaviors. Thus, the question of how to represent time in conn...
236 pagesSequence data, which consists of values organized in a certain order, is one of the most co...
A neural model for temporal pattern generation is used and analyzed for training with multiple compl...
Abstract. Temporal networks are commonly used to represent systems where connections between element...
<p>The analysis of time series and sequences has been challenging in both statistics and machine lea...
Sequence learning, prediction and generation has been proposed to be the universal computation perfo...
Learning causal structure among event types on multi-type event sequences is an important but challe...
We introduce a generalization of temporal-difference (TD) learning to networks of interrelated predi...
Sequence learning, prediction and replay have been proposed to constitute the universal computations...
In this article, we report a simulation result of unsupervised learning characterized as temporally ...
Is knowledge acquired implicitly abstract or based on memory for exemplars? This question is at the ...
In classical machine learning, hand-designed features are used for learning a mapping from raw data....
We explore a network architecture introduced by Elman (1988) for predicting successive elements of a...
Do you want your neural net algorithm to learn sequences? Do not lim-it yourself to conventional gra...
Human brains can deal with sequences with temporal dependencies on a broad range of timescales, many...
Time underlies many interesting human behaviors. Thus, the question of how to represent time in conn...
236 pagesSequence data, which consists of values organized in a certain order, is one of the most co...
A neural model for temporal pattern generation is used and analyzed for training with multiple compl...
Abstract. Temporal networks are commonly used to represent systems where connections between element...
<p>The analysis of time series and sequences has been challenging in both statistics and machine lea...
Sequence learning, prediction and generation has been proposed to be the universal computation perfo...
Learning causal structure among event types on multi-type event sequences is an important but challe...
We introduce a generalization of temporal-difference (TD) learning to networks of interrelated predi...
Sequence learning, prediction and replay have been proposed to constitute the universal computations...
In this article, we report a simulation result of unsupervised learning characterized as temporally ...
Is knowledge acquired implicitly abstract or based on memory for exemplars? This question is at the ...
In classical machine learning, hand-designed features are used for learning a mapping from raw data....