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 251300 of 338 papers

TitleStatusHype
Adaptive Concentration Inequalities for Sequential Decision Problems0
Reasoning with Memory Augmented Neural Networks for Language Comprehension0
Two-sample testing in non-sparse high-dimensional linear models0
Learning in Implicit Generative Models0
Linear Hypothesis Testing in Dense High-Dimensional Linear Models0
Towards the Design of Prospect-Theory based Human Decision Rules for Hypothesis Testing0
Information Theoretic Structure Learning with Confidence0
Size-Consistent Statistics for Anomaly Detection in Dynamic Networks0
A review of Gaussian Markov models for conditional independence0
Kernel Mean Embedding of Distributions: A Review and Beyond0
Efficient Nonparametric Smoothness EstimationCode0
Information Recovery in Shuffled Graphs via Graph Matching0
Max-Information, Differential Privacy, and Post-Selection Hypothesis Testing0
A U-statistic Approach to Hypothesis Testing for Structure Discovery in Undirected Graphical ModelsCode0
Interpretability of Multivariate Brain Maps in Brain Decoding: Definition and QuantificationCode0
Online Rules for Control of False Discovery Rate and False Discovery Exceedance0
Classical Statistics and Statistical Learning in Imaging Neuroscience0
Distributed Information-Theoretic Clustering0
Selective Inference Approach for Statistically Sound Predictive Pattern Mining0
Toward Optimal Feature Selection in Naive Bayes for Text Categorization0
Classification accuracy as a proxy for two sample testing0
Minimax Lower Bounds for Linear Independence Testing0
Proactive Message Passing on Memory Factor Networks0
Sharp Computational-Statistical Phase Transitions via Oracle Computational Model0
Unsupervised Feature Construction for Improving Data Representation and Semantics0
The p-filter: multi-layer FDR control for grouped hypotheses0
Statistical Topological Data Analysis - A Kernel Perspective0
Bayesian hypothesis testing for one bit compressed sensing with sensing matrix perturbation0
Private False Discovery Rate Control0
A Sparse Linear Model and Significance Test for Individual Consumption Prediction0
Rapid Online Analysis of Local Feature Detectors and Their Complementarity0
How to Formulate and Solve Statistical Recognition and Learning Problems0
Markov Boundary Discovery with Ridge Regularized Linear Models0
On Wasserstein Two Sample Testing and Related Families of Nonparametric TestsCode0
Iterative hypothesis testing for multi-object tracking in presence of features with variable reliability0
Wald-Kernel: Learning to Aggregate Information for Sequential Inference0
Bayesian Hypothesis Testing for Block Sparse Signal Recovery0
Adaptivity and Computation-Statistics Tradeoffs for Kernel and Distance based High Dimensional Two Sample Testing0
Fast Two-Sample Testing with Analytic Representations of Probability MeasuresCode0
Sequential Nonparametric Testing with the Law of the Iterated LogarithmCode0
Equitability, interval estimation, and statistical power0
Local Variation as a Statistical Hypothesis Test0
A Meta-Analysis of the Anomaly Detection ProblemCode0
Phase Transitions for High Dimensional Clustering and Related Problems0
Improved Sum-of-Squares Lower Bounds for Hidden Clique and Hidden Submatrix Problems0
Detection of Planted Solutions for Flat Satisfiability Problems0
Fast and Memory-Efficient Significant Pattern Mining via Permutation Testing0
Speeding up Permutation Testing in Neuroimaging0
Reconstruction in the Labeled Stochastic Block Model0
Generative Moment Matching NetworksCode0
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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