We introduce an architecture based on deep hierarchical decompositions to learn effective representations of large graphs. Our framework extends classic R-decompositions used in kernel methods, enabling nested part-of-part relations. Unlike recursive neural networks, which unroll a template on input graphs directly, we unroll a neural network template over the decomposition hierarchy, allowing us to deal with the high degree variability that typically characterize social network graphs. Deep hierarchical decompositions are also amenable to domain compression, a technique that reduces both space and time complexity by exploiting symmetries. We show empirically that our approach is able to outperform current state-of-the-art graph classificat...
Dynamic networks raise new challenges for knowledge discovery. To efficiently handle this kind of da...
This electronic version was submitted by the student author. The certified thesis is available in th...
Graphs are natural data structures adopted to represent real-world data of complex relationships. In...
Real-world data often have a complex structure that can be naturally represented with graphs or logi...
We introduce an overview of methods for learning in structured domains covering foundational works d...
© 2019 IEEE. Graph decomposition has been widely used to analyze real-life networks from different p...
In recent years, deep learning has made a significant impact in various fields – helping to push the...
Articulo de publicacion SCOPUSCompressed representations have become effective to store and access l...
We present HARP, a novel method for learning low dimensional embeddings of a graph’s nodes which pre...
Real-world data often have a complex structure that can be naturally represented with graphs or logi...
Graph representation learning serves as the core of many important tasks on graphs, ranging from fri...
International audienceNatural graphs, such as social networks, email graphs, or instant messaging pa...
We continue the line of research on graph compression started with WebGraph, but we move our focus t...
Graphs, a natural and generic data structure, can be seen as the backbone of numerous systems becaus...
Graphs are a rich and versatile data structure. They are widely used in representing data like socia...
Dynamic networks raise new challenges for knowledge discovery. To efficiently handle this kind of da...
This electronic version was submitted by the student author. The certified thesis is available in th...
Graphs are natural data structures adopted to represent real-world data of complex relationships. In...
Real-world data often have a complex structure that can be naturally represented with graphs or logi...
We introduce an overview of methods for learning in structured domains covering foundational works d...
© 2019 IEEE. Graph decomposition has been widely used to analyze real-life networks from different p...
In recent years, deep learning has made a significant impact in various fields – helping to push the...
Articulo de publicacion SCOPUSCompressed representations have become effective to store and access l...
We present HARP, a novel method for learning low dimensional embeddings of a graph’s nodes which pre...
Real-world data often have a complex structure that can be naturally represented with graphs or logi...
Graph representation learning serves as the core of many important tasks on graphs, ranging from fri...
International audienceNatural graphs, such as social networks, email graphs, or instant messaging pa...
We continue the line of research on graph compression started with WebGraph, but we move our focus t...
Graphs, a natural and generic data structure, can be seen as the backbone of numerous systems becaus...
Graphs are a rich and versatile data structure. They are widely used in representing data like socia...
Dynamic networks raise new challenges for knowledge discovery. To efficiently handle this kind of da...
This electronic version was submitted by the student author. The certified thesis is available in th...
Graphs are natural data structures adopted to represent real-world data of complex relationships. In...