In general, recurrent neural networks have difficulties in learning long-term dependencies. The segmented-memory recurrent neural network (SMRNN) architecture together with the extended real-time recurrent learning (eRTRL) algorithm was proposed to circumvent this problem. Due to its computational complexity eRTRL becomes impractical with increasing network size. Therefore, we introduce the less complex extended backpropagation through time (eBPTT) for SMRNN together with a layer-local unsupervised pre-training procedure. A comparison on the information latching problem showed that eRTRL is better able to handle the latching of information over longer periods of time, even though eBPTT guaranteed a better generalisation when training was su...
Learning to solve sequential tasks with recurrent models requires the ability to memorize long seque...
Learning to solve sequential tasks with recurrent models requires the ability to memorize long seque...
Abstract: "We survey learning algorithms for recurrent neural networks with hidden units and attempt...
In general, recurrent neural networks have difficulties in learning long-term dependencies. The segm...
(SMRNNs) yet lacks the ability to reliably learn long-term dependencies. The alternative learning al...
Abstract- It has recently been shown that gradient-descent learning algorithms for recurrent neural ...
Learning long-term temporal dependencies with recurrent neural networks can be a difficult problem. ...
Backpropagation through time (BPTT) is the de facto standard for training recurrent neural networks ...
It has recently been shown that gradient descent learning algorithms for recurrent neural networks c...
Backpropagation through time (BPTT) is the de facto standard for training recurrent neural networks ...
In this chapter, we describe the basic concepts behind the functioning of recurrent neural networks ...
Learning to store information over extended time intervals via recurrent backpropagation takes a ver...
The vanishing gradients problem inherent in Simple Recurrent Networks (SRN) trained with back-propag...
This paper reviews different approaches to improving the real time recurrent learning (RTRL) algorit...
Learning to solve sequential tasks with recurrent models requires the ability to memorize long seque...
Learning to solve sequential tasks with recurrent models requires the ability to memorize long seque...
Learning to solve sequential tasks with recurrent models requires the ability to memorize long seque...
Abstract: "We survey learning algorithms for recurrent neural networks with hidden units and attempt...
In general, recurrent neural networks have difficulties in learning long-term dependencies. The segm...
(SMRNNs) yet lacks the ability to reliably learn long-term dependencies. The alternative learning al...
Abstract- It has recently been shown that gradient-descent learning algorithms for recurrent neural ...
Learning long-term temporal dependencies with recurrent neural networks can be a difficult problem. ...
Backpropagation through time (BPTT) is the de facto standard for training recurrent neural networks ...
It has recently been shown that gradient descent learning algorithms for recurrent neural networks c...
Backpropagation through time (BPTT) is the de facto standard for training recurrent neural networks ...
In this chapter, we describe the basic concepts behind the functioning of recurrent neural networks ...
Learning to store information over extended time intervals via recurrent backpropagation takes a ver...
The vanishing gradients problem inherent in Simple Recurrent Networks (SRN) trained with back-propag...
This paper reviews different approaches to improving the real time recurrent learning (RTRL) algorit...
Learning to solve sequential tasks with recurrent models requires the ability to memorize long seque...
Learning to solve sequential tasks with recurrent models requires the ability to memorize long seque...
Learning to solve sequential tasks with recurrent models requires the ability to memorize long seque...
Abstract: "We survey learning algorithms for recurrent neural networks with hidden units and attempt...