2019
DOI: 10.48550/arxiv.1912.02283
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Sub-linear RACE Sketches for Approximate Kernel Density Estimation on Streaming Data

Abstract: Kernel density estimation is a simple and effective method that lies at the heart of many important machine learning applications. Unfortunately, kernel methods scale poorly for large, high dimensional datasets. Approximate kernel density estimation has a prohibitively high memory and computation cost, especially in the streaming setting. Recent sampling algorithms for high dimensional densities can reduce the computation cost but cannot operate online, while streaming algorithms cannot handle high dimensional… Show more

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