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Self-organization of feature detectors in time sequences (SOFT)-a neural network approach to multidimensional signal analysis

机译:时间序列特征检测器的自组织(SOFT)-一种用于多维信号分析的神经网络方法

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We present a neural network algorithm for self-organization of feature detectors in time sequences (SOFT) based on the mathematical concept of transient attractors. It evaluates local phase space volume contraction as an indicator for good short-term predictability. SOFT supports category formation and event detection in multidimensional time sequences by linking together neural function approximation and principal component analysis. Possible extensions of the algorithm including iteration and vector quantization procedures for further data analysis are discussed.
机译:我们基于瞬态吸引子的数学概念,提出了一种神经网络算法,用于按时间序列自动排列特征检测器(SOFT)。它评估局部相空间体积的收缩,以作为良好的短期可预测性的指标。 SOFT通过将神经函数逼近和主成分分析联系在一起,支持多维时间序列中的类别形成和事件检测。讨论了算法的可能扩展,包括用于进一步数据分析的迭代和矢量量化过程。

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