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Hidden Markov model interpretations of neural networks

Published online by Cambridge University Press:  30 August 2019

Ingmar Visser
Affiliation:
Developmental Psychology Institute of the University of Amsterdam, 1018 WB Amsterdam, The Netherlandsingmar@dds.nldevelop.psy.uva.nl/users/ingmar/op_visser@macmail.psy.uva.nl

Abstract

Page's manifesto makes a case for localist representations in neural networks, one of the advantages being ease of interpretation. However, even localist networks can be hard to interpret, especially when at some hidden layer of the network distributed representations are employed, as is often the case. Hidden Markov models can be used to provide useful interpretable representations.

Type
Brief Report
Copyright
2000 Cambridge University Press

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