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Discovering and Deciphering Relationships Across Disparate Data
  Modalities
v1v2v3v4v5v6v7v8 (latest)

Discovering and Deciphering Relationships Across Disparate Data Modalities

16 September 2016
Joshua T. Vogelstein
Eric W. Bridgeford
Qing Wang
Carey E. Priebe
Mauro Maggioni
Cencheng Shen
ArXiv (abs)PDFHTML

Papers citing "Discovering and Deciphering Relationships Across Disparate Data Modalities"

5 / 5 papers shown
Title
Efficient Bayesian Optimization using Multiscale Graph Correlation
Efficient Bayesian Optimization using Multiscale Graph Correlation
T. Kanazawa
62
2
0
17 Mar 2021
High-Dimensional Independence Testing via Maximum and Average Distance Correlations
High-Dimensional Independence Testing via Maximum and Average Distance Correlations
Cencheng Shen
Yuexiao Dong
104
8
0
04 Jan 2020
The Chi-Square Test of Distance Correlation
The Chi-Square Test of Distance Correlation
Cencheng Shen
Sambit Panda
Joshua T. Vogelstein
98
63
0
27 Dec 2019
The Exact Equivalence of Distance and Kernel Methods for Hypothesis
  Testing
The Exact Equivalence of Distance and Kernel Methods for Hypothesis Testing
Cencheng Shen
Joshua T. Vogelstein
105
44
0
14 Jun 2018
From Distance Correlation to Multiscale Graph Correlation
From Distance Correlation to Multiscale Graph Correlation
Cencheng Shen
Carey E. Priebe
Joshua T. Vogelstein
67
64
0
26 Oct 2017
1