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Kernel functions based on triplet comparisons
Published 28 Jul 2016 in stat.ML, cs.DS, and cs.LG | (1607.08456v2)
Abstract: Given only information in the form of similarity triplets "Object A is more similar to object B than to object C" about a data set, we propose two ways of defining a kernel function on the data set. While previous approaches construct a low-dimensional Euclidean embedding of the data set that reflects the given similarity triplets, we aim at defining kernel functions that correspond to high-dimensional embeddings. These kernel functions can subsequently be used to apply any kernel method to the data set.
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