A New Robust Partial $p$-Wasserstein-Based Metric for Comparing Distributions
Sharath Raghvendra, Pouyan Shirzadian, Kaiyi Zhang

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Abstract
The -Wasserstein distance is sensitive to minor geometric differences between distributions, making it a very powerful dissimilarity metric. However, due to this sensitivity, a small outlier mass can also cause a significant increase in the -Wasserstein distance between two similar distributions. Similarly, sampling discrepancy can cause the empirical -Wasserstein distance on samples in to converge to the true distance at a rate of , which is significantly slower than the rate of for -Wasserstein distance. We introduce a new family of distances parameterized by , called -RPW that is based on computing the partial -Wasserstein distance. We show that (1) -RPW satisfies the metric properties, (2) -RPW is robust to small outlier mass while retaining the sensitivity of -Wasserstein distance to minor geometric…
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TopicsImage and Signal Denoising Methods · Automated Road and Building Extraction · Statistical Methods and Inference
