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When Hashes Met Wedges: A Distributed Algorithm for Finding High
  Similarity Vectors

When Hashes Met Wedges: A Distributed Algorithm for Finding High Similarity Vectors

3 March 2017
Aneesh Sharma
C. Seshadhri
Ashish Goel
ArXiv (abs)PDFHTML

Papers citing "When Hashes Met Wedges: A Distributed Algorithm for Finding High Similarity Vectors"

3 / 3 papers shown
Title
Classic Graph Structural Features Outperform Factorization-Based Graph
  Embedding Methods on Community Labeling
Classic Graph Structural Features Outperform Factorization-Based Graph Embedding Methods on Community Labeling
Andrew Stolman
Caleb C. Levy
C. Seshadhri
Aneesh Sharma
GNN
56
12
0
20 Jan 2022
Simplicial Closure and higher-order link prediction
Simplicial Closure and higher-order link prediction
Austin R. Benson
Rediet Abebe
Michael T. Schaub
Ali Jadbabaie
Jon M. Kleinberg
AI4CE
97
498
0
20 Feb 2018
FLASH: Randomized Algorithms Accelerated over CPU-GPU for Ultra-High
  Dimensional Similarity Search
FLASH: Randomized Algorithms Accelerated over CPU-GPU for Ultra-High Dimensional Similarity Search
Yiqiu Wang
Anshumali Shrivastava
Jonathan Wang
Junghee Ryu
FedML
55
28
0
04 Sep 2017
1