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Time Dependent Classification of Features with a Nonlinear, Dynamic Network

机译:具有非线性动态网络的特征的时间依赖分类

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A review of results and methods presented in previous publications is presented.The publications are reprinted. Temporally varying classification by a dynamic classifier network is introduced. The dynamic classifier network consists of several independent nonlinear classifiers in parallel. The subclassifiers adapt to the measurements with a variety of adaptation rates. The output of the classifier network can be calculated as a weighted sum of the outputs of each subclassifier. Two methods to optimize the weighting are given. However, even a simple weighting function gives reasonable results. The network might be considered as a temporal associative memory. Because of nonlinearities and the ensuring chaos the behavior of the network can be very complicated. Algorithms to calculate the fractal and correlation dimension are given. With these dimensions the algorithms can estimate how complicated the behavior of a system is and how many parameters are needed to describe its behavior. An extension of geodesic distance transform called distance transform in curved space, is presented. This transform can for example, be used to model dynamic decision manifolds. Some new properties of fractals are presented. These properties can be utilized efficiently when defining the Lyapunov exponents and the basins of attraction for maps. The methods presented have several application areas.

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