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Identifying Ill-Behaved Nonlinear Processes Without Metrics: Use of Symbolic Dynamics

机译:识别没有度量标准的不良行为非线性过程:使用符号动力学

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摘要

Given ill-behaved psychological data that are unlikely to satisfy metric axioms, the use of encoding in symbolic dynamics, and hence leading into Markov analyses, is explored. Various measures of entropy are calculated. The tractability of entropic measures for categorizing the trajectories of nonlinear dynamics that may be present and chaotic is considered, with a focus on the case where there are two attractors and at least one heteroclinic orbit between them. Fast/slow dynamics are treated as a special case. The problem of identification is in other contexts the problem of diagnosis in time-varying pathologies. Some real data, selected for their psychological relevance in clinical, forensic and psychophysical processes, that are apparently edge-of-chaos and nonstationary, are for comparison analysed both as metric and discrete and in symbolic encoding.
机译:考虑到行为不当的心理数据不太可能满足度量公理,因此探索了在符号动力学中使用编码,从而进行马尔可夫分析。计算了熵的各种度量。考虑将可能存在和混沌的非线性动力学轨迹分类的熵度量的可处理性,重点是在两个吸引子和至少一个异质轨道之间的情况。快速/慢速动态被视为特例。在其他情况下,识别问题是时变病理学中的诊断问题。选择了一些在临床,法医和心理物理过程中因其心理相关性而选择的真实数据,这些数据显然是混乱且不稳定的,用于比较以公制,离散和符号编码方式进行分析。

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