A recurrent probabilistic neural network with dimensionality reduction based on time-series discriminant component analysis

H Hayashi, T Shibanoki, K Shima…�- IEEE transactions on�…, 2015 - ieeexplore.ieee.org
IEEE transactions on neural networks and learning systems, 2015ieeexplore.ieee.org
This paper proposes a probabilistic neural network (NN) developed on the basis of time-
series discriminant component analysis (TSDCA) that can be used to classify high-
dimensional time-series patterns. TSDCA involves the compression of high-dimensional
time series into a lower dimensional space using a set of orthogonal transformations and the
calculation of posterior probabilities based on a continuous-density hidden Markov model
with a Gaussian mixture model expressed in the reduced-dimensional space. The analysis�…
This paper proposes a probabilistic neural network (NN) developed on the basis of time-series discriminant component analysis (TSDCA) that can be used to classify high-dimensional time-series patterns. TSDCA involves the compression of high-dimensional time series into a lower dimensional space using a set of orthogonal transformations and the calculation of posterior probabilities based on a continuous-density hidden Markov model with a Gaussian mixture model expressed in the reduced-dimensional space. The analysis can be incorporated into an NN, which is named a time-series discriminant component network (TSDCN), so that parameters of dimensionality reduction and classification can be obtained simultaneously as network coefficients according to a backpropagation through time-based learning algorithm with the Lagrange multiplier method. The TSDCN is considered to enable high-accuracy classification of high-dimensional time-series patterns and to reduce the computation time taken for network training. The validity of the TSDCN is demonstrated for high-dimensional artificial data and electroencephalogram signals in the experiments conducted during the study.
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