SOTAVerified

Two-sample testing

In statistical hypothesis testing, a two-sample test is a test performed on the data of two random samples, each independently obtained from a different given population. The purpose of the test is to determine whether the difference between these two populations is statistically significant. The statistics used in two-sample tests can be used to solve many machine learning problems, such as domain adaptation, covariate shift and generative adversarial networks.

Papers

Showing 125 of 338 papers

TitleStatusHype
Leveraging Optimal Transport for Distributed Two-Sample Testing: An Integrated Transportation Distance-based Framework0
Signature Maximum Mean Discrepancy Two-Sample Statistical Tests0
From Two Sample Testing to Singular Gaussian Discrimination0
Advanced Tutorial: Label-Efficient Two-Sample Tests0
Optimal Algorithms for Augmented Testing of Discrete Distributions0
A Unified Data Representation Learning for Non-parametric Two-sample Testing0
Minimax Optimal Two-Sample Testing under Local Differential PrivacyCode0
Model Equality Testing: Which Model Is This API Serving?Code1
General Frameworks for Conditional Two-Sample TestingCode0
Credal Two-Sample Tests of Epistemic UncertaintyCode0
Machine Learning for Two-Sample Testing under Right-Censored Data: A Simulation StudyCode0
Computational-Statistical Trade-off in Kernel Two-Sample Testing with Random Fourier FeaturesCode0
Network two-sample test for block models0
Statistical and Computational Guarantees of Kernel Max-Sliced Wasserstein Distances0
Collaborative non-parametric two-sample testing0
Variable Selection in Maximum Mean Discrepancy for Interpretable Distribution Comparison0
Deep anytime-valid hypothesis testingCode0
A framework for paired-sample hypothesis testing for high-dimensional data0
On the Exploration of Local Significant Differences For Two-Sample Test0
Kernel-Based Tests for Likelihood-Free Hypothesis TestingCode0
Adaptive learning of density ratios in RKHS0
MMD-FUSE: Learning and Combining Kernels for Two-Sample Testing Without Data SplittingCode0
The Representation Jensen-Shannon DivergenceCode0
Bootstrapped Edge Count Tests for Nonparametric Two-Sample Inference Under Heterogeneity0
Multimodal Multi-User Surface Recognition with the Kernel Two-Sample TestCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1MMD-DAvg accuracy98.5Unverified
#ModelMetricClaimedVerifiedStatus
1MMD-DAvg accuracy74.4Unverified
#ModelMetricClaimedVerifiedStatus
1MMD-DAvg accuracy65.9Unverified
#ModelMetricClaimedVerifiedStatus
1MMD-DAvg accuracy57.9Unverified
#ModelMetricClaimedVerifiedStatus
1MMD-DAvg accuracy91Unverified