DocumentCode :
692709
Title :
Performance of a hierarchical temporal memory network in noisy sequence learning
Author :
Padilla, Daniel E. ; Brinkworth, R. ; McDonnell, Mark D.
Author_Institution :
Inst. for Telecommun. Res., Univ. of South Australia, Adelaide, SA, Australia
fYear :
2013
fDate :
3-4 Dec. 2013
Firstpage :
45
Lastpage :
51
Abstract :
As neurobiological evidence points to the neocortex as the brain region mainly involved in high-level cognitive functions, an innovative model of neocortical information processing has been recently proposed. Based on a simplified model of a neocortical neuron, and inspired by experimental evidence of neocortical organisation, the Hierarchical Temporal Memory (HTM) model attempts at understanding intelligence, but also at building learning machines. This paper focuses on analysing HTM´s ability for online, adaptive learning of sequences. In particular, we seek to determine whether the approach is robust to noise in its inputs, and to compare and contrast its performance and attributes to an alternative Hidden Markov Model (HMM) approach. We reproduce a version of a HTM network and apply it to a visual pattern recognition task under various learning conditions. Our first set of experiments explore the HTM network´s capability to learn repetitive patterns and sequences of patterns within random data streams. Further experimentation involves assessing the network´s learning performance in terms of inference and prediction under different noise conditions. HTM results are compared with those of a HMM trained at the same tasks. Online learning performance results demonstrate the HTM´s capacity to make use of context in order to generate stronger predictions, whereas results on robustness to noise reveal an ability to deal with noisy environments. Our comparisons also, however, emphasise a manner in which HTM differs significantly from HMM, which is that HTM generates predicted observations rather than hidden states, and each observation is a sparse distributed representation.
Keywords :
hidden Markov models; learning (artificial intelligence); neural nets; pattern recognition; HMM approach; HTM model; hidden Markov model; hierarchical temporal memory network; high-level cognitive functions; learning conditions; learning machines; neocortical information processing; neocortical neuron model; neocortical organisation; neurobiological evidence; noisy sequence learning; pattern sequences; random data streams; repetitive patterns; sparse distributed representation; visual pattern recognition task; Accuracy; Biological system modeling; Brain modeling; Hidden Markov models; Neurons; Noise; Training;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computational Intelligence and Cybernetics (CYBERNETICSCOM), 2013 IEEE International Conference on
Conference_Location :
Yogyakarta
Type :
conf
DOI :
10.1109/CyberneticsCom.2013.6865779
Filename :
6865779
Link To Document :
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