The first chapter introduces an approach to machine learning (ML) were data is understood as a network of connected entities. This strategy seeks inter-entity information for knowledge discovery, in contrast with traditional intra-entity approaches based on instances and their features. We discuss the importance of this connectivist ML (which we refer to as graph mining) in the current context where large, topology-based data sets have been made available. Chapter ends by introducing the Link Prediction (LP) problem, together with its current computational and performance limitations. The second chapter discusses early contributions to graph mining, and introduces problems frequently tackled through this paradigm. Later the chapter focuses...
We carry out a systematic study of classification problems on networked data, presenting novel techn...
Humans utilize information about relationships or interactions between objects for orientation in va...
Ces dernières années, les réseaux sont devenus une source importante d’informations dans différents ...
The first chapter introduces an approach to machine learning (ML) were data is understood as a netwo...
An ever-increasing amount of the humanity's information is being stored in large graphs. The world w...
A graph is a mathematical object that makes it possible to represent relationships (called edges) be...
In this work, we are interested to tackle the problem of link prediction in complex networks. In par...
Nous nous intéressons dans ce travail au problème de prévision de nouveaux liens dans des grands gra...
Abstract. Link prediction is a link mining task that tries to find new edges within a given graph. A...
15 pagesNational audienceThis paper deals with the analysis and the visualization of large graphs. O...
Link prediction is a link mining task that tries to find new edges within a given graph. Among the t...
Graphs are at the essence of many data representations. The visual analytics over graphs is usually ...
Graphs have increasingly become a crucial way of representing large, complex and disparate datasets ...
Exploiting network data (i.e., graphs) is a rather particular case of data mining. The size and rele...
Els grafs són estructures de dades abstractes que s'utilitzen per a modelar problemes reals amb dues...
We carry out a systematic study of classification problems on networked data, presenting novel techn...
Humans utilize information about relationships or interactions between objects for orientation in va...
Ces dernières années, les réseaux sont devenus une source importante d’informations dans différents ...
The first chapter introduces an approach to machine learning (ML) were data is understood as a netwo...
An ever-increasing amount of the humanity's information is being stored in large graphs. The world w...
A graph is a mathematical object that makes it possible to represent relationships (called edges) be...
In this work, we are interested to tackle the problem of link prediction in complex networks. In par...
Nous nous intéressons dans ce travail au problème de prévision de nouveaux liens dans des grands gra...
Abstract. Link prediction is a link mining task that tries to find new edges within a given graph. A...
15 pagesNational audienceThis paper deals with the analysis and the visualization of large graphs. O...
Link prediction is a link mining task that tries to find new edges within a given graph. Among the t...
Graphs are at the essence of many data representations. The visual analytics over graphs is usually ...
Graphs have increasingly become a crucial way of representing large, complex and disparate datasets ...
Exploiting network data (i.e., graphs) is a rather particular case of data mining. The size and rele...
Els grafs són estructures de dades abstractes que s'utilitzen per a modelar problemes reals amb dues...
We carry out a systematic study of classification problems on networked data, presenting novel techn...
Humans utilize information about relationships or interactions between objects for orientation in va...
Ces dernières années, les réseaux sont devenus une source importante d’informations dans différents ...