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arxiv: 1001.1122 · v2 · submitted 2010-01-07 · 💻 cs.NE · cs.AI

Principal manifolds and graphs in practice: from molecular biology to dynamical systems

classification 💻 cs.NE cs.AI
keywords principaldatanon-linearanalysisbiologydynamicalexamplesgraphs
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We present several applications of non-linear data modeling, using principal manifolds and principal graphs constructed using the metaphor of elasticity (elastic principal graph approach). These approaches are generalizations of the Kohonen's self-organizing maps, a class of artificial neural networks. On several examples we show advantages of using non-linear objects for data approximation in comparison to the linear ones. We propose four numerical criteria for comparing linear and non-linear mappings of datasets into the spaces of lower dimension. The examples are taken from comparative political science, from analysis of high-throughput data in molecular biology, from analysis of dynamical systems.

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