The problem of network inference can be solved as a constrained matrix factorization problem where some sparsity constraints are imposed on one of the matrix factors. The solution is unique up to a scaling factor when certain rank conditions are imposed on both the matrix factors. Two key issues in factorising a matrix of data from some netwrok are that of establishing simple identifiability conditions and decomposing a network into identifiable subnetworks. This paper solves both the problems by introducing the notion of an ordered matching in a bipartite graphs. Novel and simple graph theoretical conditions are developed which can replace the aforementioned computationally intensive rank conditions. A simple algorithm to reduce a bipartit...
Network based inference is almost ubiquitous in modern machine learning applications. In this disser...
An active area of research in computational science is the design of algorithms for solving the subg...
Networks are commonly used to model and study complex systems that arise in a variety of scientific ...
In this article, we propose a new type of square matrix associated with an undirected graph by tradi...
Graph pattern matching is typically defined in terms of sub-graph isomorphism, which makes it an np-...
We present an algorithm for decomposing a social network into an optimal number of structurally equi...
For applications involving graph-structured data, a natural problem is to identify subgraphs that ma...
Recently, tremendous advancements have been made in the solution of the set partitioning problem (SP...
Network embedding aims to learn the low-dimensional representations of nodes in networks. It preserv...
In this paper we consider supervised learning on large-scale graphs, which is highly demanding in te...
The purpose of this article is to introduce a new bipartite graph generation algorithm. Bipartite gr...
How to reveal corresponding identities of an individual in different complex systems is an ongoing p...
A bipartite graph G = (L,R;E) is said to be identifiable if for every vertex v ∈ L, the subgraph in...
The emerging field of network science deals with the tasks of modeling, comparing, and summarizing l...
In many applications, one may need to characterize a given network among a large set of base network...
Network based inference is almost ubiquitous in modern machine learning applications. In this disser...
An active area of research in computational science is the design of algorithms for solving the subg...
Networks are commonly used to model and study complex systems that arise in a variety of scientific ...
In this article, we propose a new type of square matrix associated with an undirected graph by tradi...
Graph pattern matching is typically defined in terms of sub-graph isomorphism, which makes it an np-...
We present an algorithm for decomposing a social network into an optimal number of structurally equi...
For applications involving graph-structured data, a natural problem is to identify subgraphs that ma...
Recently, tremendous advancements have been made in the solution of the set partitioning problem (SP...
Network embedding aims to learn the low-dimensional representations of nodes in networks. It preserv...
In this paper we consider supervised learning on large-scale graphs, which is highly demanding in te...
The purpose of this article is to introduce a new bipartite graph generation algorithm. Bipartite gr...
How to reveal corresponding identities of an individual in different complex systems is an ongoing p...
A bipartite graph G = (L,R;E) is said to be identifiable if for every vertex v ∈ L, the subgraph in...
The emerging field of network science deals with the tasks of modeling, comparing, and summarizing l...
In many applications, one may need to characterize a given network among a large set of base network...
Network based inference is almost ubiquitous in modern machine learning applications. In this disser...
An active area of research in computational science is the design of algorithms for solving the subg...
Networks are commonly used to model and study complex systems that arise in a variety of scientific ...