Discrepancy, Coresets, and Sketches in Machine Learning
June 11, 2019 ยท Declared Dead ยท ๐ Annual Conference Computational Learning Theory
"No code URL or promise found in abstract"
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Authors
Zohar Karnin, Edo Liberty
arXiv ID
1906.04845
Category
cs.LG: Machine Learning
Cross-listed
cs.DS,
stat.ML
Citations
51
Venue
Annual Conference Computational Learning Theory
Last Checked
3 months ago
Abstract
This paper defines the notion of class discrepancy for families of functions. It shows that low discrepancy classes admit small offline and streaming coresets. We provide general techniques for bounding the class discrepancy of machine learning problems. As corollaries of the general technique we bound the discrepancy (and therefore coreset complexity) of logistic regression, sigmoid activation loss, matrix covariance, kernel density and any analytic function of the dot product or the squared distance. Our results prove the existence of epsilon-approximation O(sqrt{d}/epsilon) sized coresets for the above problems. This resolves the long-standing open problem regarding the coreset complexity of Gaussian kernel density estimation. We provide two more related but independent results. First, an exponential improvement of the widely used merge-and-reduce trick which gives improved streaming sketches for any low discrepancy problem. Second, an extremely simple deterministic algorithm for finding low discrepancy sequences (and therefore coresets) for any positive semi-definite kernel. This paper establishes some explicit connections between class discrepancy, coreset complexity, learnability, and streaming algorithms.
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