Model-Coupled Autoencoder for Time Series Visualisation

21 Jan 2016Nikolaos GianniotisSven D. KüglerPeter TiňoKai L. Polsterer

We present an approach for the visualisation of a set of time series that combines an echo state network with an autoencoder. For each time series in the dataset we train an echo state network, using a common and fixed reservoir of hidden neurons, and use the optimised readout weights as the new representation... (read more)

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