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(p,q)-biclique Counting and Enumeration for Large Sparse Bipartite Graphs
Jianye Yang
, Yun Peng
*
, Wenjie Zhang
*
Corresponding author for this work
Department of Computer Science
Research output
:
Contribution to journal
›
Conference article
›
peer-review
30
Citations (Scopus)
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Computer Science
Case Time Complexity
100%
Subgraphs
100%
Baseline Method
100%
Bipartite Graph
100%
Graph Neural Network
100%
Experimental Result
50%
Case Study
50%
Search Space
50%
Computation Cost
50%
Frequent Subgraph
50%
Unbiased Estimator
50%
Information Aggregation
50%
Exponential Number
50%
Switching Circuit
50%
Branch-and-Bound Algorithm Design
50%
Keyphrases
Biclique
100%
Sparse Bipartite Graph
100%
Time Complexity
25%
Graph Neural Network
25%
Computational Efficiency
12%
Layered Structure
12%
Order of Magnitude
12%
Search Space
12%
L(R)
12%
Computation Cost
12%
Subgroup Analysis
12%
Complete Subgraph
12%
Vertex Labeling
12%
Network Information
12%
Information Aggregation
12%
Labeling Method
12%
Pruning Strategy
12%
Real-life Dataset
12%
Unbiased Estimator
12%
Integer Parameters
12%
2-hop
12%
Cost Model
12%
Frequent Subgraphs
12%
Cohesive Subgroups
12%
Depth-first
12%
Computational Framework
12%
Dense Subgraph Detection
12%
Exponential number
12%
Branch-and-bound
12%
Array Element
12%
Switching Operation
12%
Mathematics
Worst Case
100%
Bipartite Graph
100%
Neural Network
66%
Wide Range
33%
Integer
33%
Search Space
33%
Unbiased Estimator
33%
Real Life
33%
Switching Circuit
33%
Engineering
Bipartite Graph
100%
Experimental Result
50%
Search Space
50%
Real Life
50%
Information Network
50%
Array Element
50%