Jaeger, Herbert
Efficient Estimation of OOMs
Jaeger, Herbert, Zhao, Mingjie, Kolling, Andreas
A standard method to obtain stochastic models for symbolic time series is to train state-emitting hidden Markov models (SE-HMMs) with the Baum-Welch algorithm. Based on observable operator models (OOMs), in the last few months a number of novel learning algorithms for similar purposes have been developed: (1,2) two versions of an "efficiency sharpening" (ES) algorithm, which iteratively improves the statistical efficiency of a sequence of OOM estimators, (3) a constrained gradient descent ML estimator for transition-emitting HMMs (TE-HMMs). We give an overview on these algorithms and compare them with SE-HMM/EM learning on synthetic and real-life data.
Efficient Estimation of OOMs
Jaeger, Herbert, Zhao, Mingjie, Kolling, Andreas
A standard method to obtain stochastic models for symbolic time series is to train state-emitting hidden Markov models (SE-HMMs) with the Baum-Welch algorithm. Based on observable operator models (OOMs), in the last few months a number of novel learning algorithms for similar purposeshave been developed: (1,2) two versions of an "efficiency sharpening" (ES) algorithm, which iteratively improves the statistical efficiency ofa sequence of OOM estimators, (3) a constrained gradient descent ML estimator for transition-emitting HMMs (TE-HMMs). We give an overview on these algorithms and compare them with SE-HMM/EM learning on synthetic and real-life data.
Adaptive Nonlinear System Identification with Echo State Networks
Jaeger, Herbert
Echo state networks (ESN) are a novel approach to recurrent neural network training. An ESN consists of a large, fixed, recurrent "reservoir" network, from which the desired output is obtained by training suitable output connection weights. Determination of optimal output weights becomes a linear, uniquely solvable task of MSE minimization. This article reviews the basic ideas and describes an online adaptation scheme based on the RLS algorithm known from adaptive linear systems. As an example, a 10th order NARMA system is adaptively identified.
Adaptive Nonlinear System Identification with Echo State Networks
Jaeger, Herbert
Echo state networks (ESN) are a novel approach to recurrent neural networktraining. An ESN consists of a large, fixed, recurrent "reservoir" network, from which the desired output is obtained by training suitable output connection weights. Determination of optimal outputweights becomes a linear, uniquely solvable task of MSE minimization. This article reviews the basic ideas and describes anonline adaptation scheme based on the RLS algorithm known from adaptive linear systems. As an example, a 10th order NARMAsystem is adaptively identified.