A Randomized Algorithm to Reduce the Support of Discrete Measures
Neural Information Processing Systems (NeurIPS), 2020
Abstract
Given a discrete probability measure supported on atoms and a set of real-valued functions, there exists a probability measure that is supported on a subset of of the original atoms and has the same mean when integrated against each of the functions. If $ N \gg n$ this results in a huge reduction of complexity. We give a simple geometric characterization of barycenters via negative cones and derive a randomized algorithm that computes this new measure by ``greedy geometric sampling''. We then study its properties, and benchmark it on synthetic and real-world data to show that it can be very beneficial in the regime.
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