The interconnectedness and interdependence of modern graphs are growing ever more complex, causing enormous resources for processing, storage, communication, and decision-making of these graphs. In this work, we focus on the task of graph sparsification: an edge-reduced graph of a similar structure to the original graph is produced while various user-defined graph metrics are largely preserved. Existing graph sparsification methods are mostly sampling-based, which introduce high computation complexity in general and lack of flexibility for a different reduction objective. We present SparRL, the first generic and effective graph sparsification framework enabled by deep reinforcement learning. SparRL can easily adapt to different reduction go...
Graph clustering is a fundamental problem that partitions vertices of a graph into clusters with an ...
In many learning tasks with structural properties, struc-tural sparsity methods help induce sparse m...
A sparsifier of a graph G (Benczúr and Karger; Spielman and Teng) is a sparse weighted subgraph G th...
We present a general framework for constructing cut sparsifiers in undirected graphs --- weighted su...
Pruning on deep neuron networks can reduce the computation cost and memory use. Graph Sparsificatio...
Analyzing large dynamic networks is an important problem with applications in a wide range of discip...
Given a graph, a \emph{sparsification} is a smaller graph which approximates or preserves some prope...
Graph mining tasks arise from many different application domains, ranging from social networks, tran...
Abstract The general method of graph coarsening or graph reduction has been a remarkabl...
We present a general framework for constructing cut sparsifiers in undirected graphs- weighted subgr...
We present a novel method for graph partitioning, based on reinforcement learning and graph convolut...
The growing energy and performance costs of deep learning have driven the community to reduce the si...
International audienceThe representation and learning benefits of methods based on graph Laplacians,...
Downsampling produces coarsened, multi-resolution representations of data and it is used, for exampl...
A significant portion of the data today, e.g, social networks, web connections, etc., can be modeled...
Graph clustering is a fundamental problem that partitions vertices of a graph into clusters with an ...
In many learning tasks with structural properties, struc-tural sparsity methods help induce sparse m...
A sparsifier of a graph G (Benczúr and Karger; Spielman and Teng) is a sparse weighted subgraph G th...
We present a general framework for constructing cut sparsifiers in undirected graphs --- weighted su...
Pruning on deep neuron networks can reduce the computation cost and memory use. Graph Sparsificatio...
Analyzing large dynamic networks is an important problem with applications in a wide range of discip...
Given a graph, a \emph{sparsification} is a smaller graph which approximates or preserves some prope...
Graph mining tasks arise from many different application domains, ranging from social networks, tran...
Abstract The general method of graph coarsening or graph reduction has been a remarkabl...
We present a general framework for constructing cut sparsifiers in undirected graphs- weighted subgr...
We present a novel method for graph partitioning, based on reinforcement learning and graph convolut...
The growing energy and performance costs of deep learning have driven the community to reduce the si...
International audienceThe representation and learning benefits of methods based on graph Laplacians,...
Downsampling produces coarsened, multi-resolution representations of data and it is used, for exampl...
A significant portion of the data today, e.g, social networks, web connections, etc., can be modeled...
Graph clustering is a fundamental problem that partitions vertices of a graph into clusters with an ...
In many learning tasks with structural properties, struc-tural sparsity methods help induce sparse m...
A sparsifier of a graph G (Benczúr and Karger; Spielman and Teng) is a sparse weighted subgraph G th...