Can we use machine learning to compress graph data? The absence of ordering in graphs poses a significant challenge to conventional compression algorithms, limiting their attainable gains as well as their ability to discover relevant patterns. On the other hand, most graph compression approaches rely on domain-dependent handcrafted representations and cannot adapt to different underlying graph distributions. This work aims to establish the necessary principles a lossless graph compression method should follow to approach the entropy storage lower bound. Instead of making rigid assumptions about the graph distribution, we formulate the compressor as a probabilistic model that can be learned from data and generalise to unseen instances. Our "...
Representing patterns as labeled graphs is becoming increasingly common in the broad field of comput...
Representing patterns by complex relational structures, such as labeled graphs, is becoming an incre...
Consider the setting of sparse graphs on N vertices, where the vertices have distinct “names”, which...
We investigate the use of compression-based learning on graph data. General purpose compressors oper...
Motivated by the prevalent data science applications of processing and mining large-scale graph data...
In today’s world, compression is a fundamental technique to let our computers deal in an efficient m...
Abstract Massive graphs are ubiquitous and at the heart of many real-world problems and applications...
In this paper, we study the problem of graph compression with side information at the decoder. The f...
We first consider the problem of partitioning the edges of a graph G into bipartite cliques such tha...
We improve the state-of-the-art method for the compression of web and other similar graphs by introd...
Zuckerli is a scalable compression system meant for large real-world graphs. Graphs are notoriously ...
1 I n t roduct ion This extended abstract summarizes a new result for the graph compression problem,...
AbstractWe first consider the problem of partitioning the edges of a graph G into bipartite cliques ...
Currently, most graph compression algorithms focus on in-memory compression (such as for web graphs)...
To compress a graph, some methods rely on finding highly compressible structures, such as very dense...
Representing patterns as labeled graphs is becoming increasingly common in the broad field of comput...
Representing patterns by complex relational structures, such as labeled graphs, is becoming an incre...
Consider the setting of sparse graphs on N vertices, where the vertices have distinct “names”, which...
We investigate the use of compression-based learning on graph data. General purpose compressors oper...
Motivated by the prevalent data science applications of processing and mining large-scale graph data...
In today’s world, compression is a fundamental technique to let our computers deal in an efficient m...
Abstract Massive graphs are ubiquitous and at the heart of many real-world problems and applications...
In this paper, we study the problem of graph compression with side information at the decoder. The f...
We first consider the problem of partitioning the edges of a graph G into bipartite cliques such tha...
We improve the state-of-the-art method for the compression of web and other similar graphs by introd...
Zuckerli is a scalable compression system meant for large real-world graphs. Graphs are notoriously ...
1 I n t roduct ion This extended abstract summarizes a new result for the graph compression problem,...
AbstractWe first consider the problem of partitioning the edges of a graph G into bipartite cliques ...
Currently, most graph compression algorithms focus on in-memory compression (such as for web graphs)...
To compress a graph, some methods rely on finding highly compressible structures, such as very dense...
Representing patterns as labeled graphs is becoming increasingly common in the broad field of comput...
Representing patterns by complex relational structures, such as labeled graphs, is becoming an incre...
Consider the setting of sparse graphs on N vertices, where the vertices have distinct “names”, which...