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Heat Kernel analysis of Syntactic Structures

2018-03-26Unverified0· sign in to hype

Andrew Ortegaray, Robert C. Berwick, Matilde Marcolli

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Abstract

We consider two different data sets of syntactic parameters and we discuss how to detect relations between parameters through a heat kernel method developed by Belkin-Niyogi, which produces low dimensional representations of the data, based on Laplace eigenfunctions, that preserve neighborhood information. We analyze the different connectivity and clustering structures that arise in the two datasets, and the regions of maximal variance in the two-parameter space of the Belkin-Niyogi construction, which identify preferable choices of independent variables. We compute clustering coefficients and their variance.

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