DocumentCode :
1133237
Title :
Segmented-Memory Recurrent Neural Networks
Author :
Chen, Jinmiao ; Chaudhari, Narendra S.
Volume :
20
Issue :
8
fYear :
2009
Firstpage :
1267
Lastpage :
1280
Abstract :
Conventional recurrent neural networks (RNNs) have difficulties in learning long-term dependencies. To tackle this problem, we propose an architecture called segmented-memory recurrent neural network (SMRNN). A symbolic sequence is broken into segments and then presented as inputs to the SMRNN one symbol per cycle. The SMRNN uses separate internal states to store symbol-level context, as well as segment-level context. The symbol-level context is updated for each symbol presented for input. The segment-level context is updated after each segment. The SMRNN is trained using an extended real-time recurrent learning algorithm. We test the performance of SMRNN on the information latching problem, the ldquotwo-sequence problemrdquo and the problem of protein secondary structure (PSS) prediction. Our implementation results indicate that SMRNN performs better on long-term dependency problems than conventional RNNs. Besides, we also theoretically analyze how the segmented memory of SMRNN helps learning long-term temporal dependencies and study the impact of the segment length.
Keywords :
learning (artificial intelligence); recurrent neural nets; RNN; extended real-time recurrent learning algorithm; information latching problem; long-term temporal dependency learning; protein secondary structure prediction; segment-level context; segmented-memory recurrent neural network training; symbol-level context; symbolic sequence; two-sequence problem; Gradient descent; information latching; long-term dependencies; recurrent neural networks (RNNs); segmented memory; vanishing gradient; Algorithms; Artificial Intelligence; Forecasting; Humans; Memory; Neural Networks (Computer); Protein Structure, Secondary; Proteins; Sequence Analysis, Protein;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/TNN.2009.2022980
Filename :
5164893
Link To Document :
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