A short survey of recent advances in graph matching
Graph matching, which refers to a class of computational problems of finding an optimal
correspondence between the vertices of graphs to minimize (maximize) their node and edge …
correspondence between the vertices of graphs to minimize (maximize) their node and edge …
Learning combinatorial embedding networks for deep graph matching
Graph matching refers to finding node correspondence between graphs, such that the
corresponding node and edge's affinity can be maximized. In addition with its NP …
corresponding node and edge's affinity can be maximized. In addition with its NP …
Metro passenger flow prediction via dynamic hypergraph convolution networks
Metro passenger flow prediction is a strategically necessary demand in an intelligent
transportation system to alleviate traffic pressure, coordinate operation schedules, and plan …
transportation system to alleviate traffic pressure, coordinate operation schedules, and plan …
Deep learning of graph matching
The problem of graph matching under node and pair-wise constraints is fundamental in
areas as diverse as combinatorial optimization, machine learning or computer vision, where …
areas as diverse as combinatorial optimization, machine learning or computer vision, where …
Neural graph matching network: Learning lawler's quadratic assignment problem with extension to hypergraph and multiple-graph matching
Graph matching involves combinatorial optimization based on edge-to-edge affinity matrix,
which can be generally formulated as Lawler's quadratic assignment problem (QAP). This …
which can be generally formulated as Lawler's quadratic assignment problem (QAP). This …
Combinatorial learning of robust deep graph matching: an embedding based approach
Graph matching aims to establish node correspondence between two graphs, which has
been a fundamental problem for its NP-hard nature. One practical consideration is the …
been a fundamental problem for its NP-hard nature. One practical consideration is the …
Multi-graph matching via affinity optimization with graduated consistency regularization
This paper addresses the problem of matching common node correspondences among
multiple graphs referring to an identical or related structure. This multi-graph matching …
multiple graphs referring to an identical or related structure. This multi-graph matching …
[PDF][PDF] Learning for graph matching and related combinatorial optimization problems
This survey gives a selective review of recent development of machine learning (ML) for
combinatorial optimization (CO), especially for graph matching. The synergy of these two …
combinatorial optimization (CO), especially for graph matching. The synergy of these two …
Hypergraph neural networks for hypergraph matching
Hypergraph matching is a useful tool to find feature correspondence by considering higher-
order structural information. Recently, the employment of deep learning has made great …
order structural information. Recently, the employment of deep learning has made great …
A literature survey of matrix methods for data science
M Stoll - GAMM‐Mitteilungen, 2020 - Wiley Online Library
Efficient numerical linear algebra is a core ingredient in many applications across almost all
scientific and industrial disciplines. With this survey we want to illustrate that numerical linear …
scientific and industrial disciplines. With this survey we want to illustrate that numerical linear …