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Manifold Matching using Shortest-Path Distance and Joint Neighborhood Selection

Abstract

In this paper we present a nonlinear manifold matching algorithm to match multiple data sets using shortest-path distance and joint neighborhood selection. This is effectively achieved by combining Isomap \cite{TenenbaumSilvaLangford2000} and the matching methods from \cite{PriebeMarchette2012}. Our approach exhibits superior and robust performance for matching data from disparate sources, compared to algorithms that do not use shortest-path distance or joint neighborhood selection.

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