This thesis investigates new clustering paradigms and algorithms based on the principle of the shared nearest-neighbors (SNN. As most other graph-based clustering approaches, SNN methods are actually well suited to overcome data complexity, heterogeneity and high-dimensionality.The first contribution of the thesis is to revisit existing shared neighbors methods in two points. We first introduce a new SNN formalism based on the theory of a contrario decision. This allows us to derive more reliable connectivity scores of candidate clusters and a more intuitive interpretation of locally optimum neighborhoods. We also propose a new factorization algorithm for speeding-up the intensive computation of the required sharedneighbors matrices.The sec...
This paper deals with graph clustering algorithm which partitions a set of vertices in graphs into s...
The technological advancements of recent years led to a pervasion of all life areas with information...
Networks allow the representation of interactions between objects. Their structures are often comple...
This thesis investigates new clustering paradigms and algorithms based on the principle of the share...
Shared Nearest Neighbours (SNN) techniques are well known to overcome several shortcomings of tradit...
Due to the constant technological advances and massive use of electronic devices, the amount of data...
Data clustering is a fundamental machine learning problem. Community structure is common in social a...
We study clustering over multiple graphs- each encoding a distinct set of similarity relationships (...
Graph-structured datasets arise naturally in many fields including biology with protein-to-protein i...
AbstractWe study clustering algorithms based on neighborhood graphs on a random sample of data point...
We study clustering algorithms based on neighborhood graphs on a random sample of data points. The q...
The k-Nearest Neighbour approach (k-NN) has been extensively used as a powerful non-parametric techn...
We study clustering algorithms based on neighborhood graphs on a random sample of data points. The q...
Several clustering algorithms have been extensively used to analyze vast amounts of spatial data. On...
When some 'entities' are related by the 'features' they share they are amenable to a bipartite netwo...
This paper deals with graph clustering algorithm which partitions a set of vertices in graphs into s...
The technological advancements of recent years led to a pervasion of all life areas with information...
Networks allow the representation of interactions between objects. Their structures are often comple...
This thesis investigates new clustering paradigms and algorithms based on the principle of the share...
Shared Nearest Neighbours (SNN) techniques are well known to overcome several shortcomings of tradit...
Due to the constant technological advances and massive use of electronic devices, the amount of data...
Data clustering is a fundamental machine learning problem. Community structure is common in social a...
We study clustering over multiple graphs- each encoding a distinct set of similarity relationships (...
Graph-structured datasets arise naturally in many fields including biology with protein-to-protein i...
AbstractWe study clustering algorithms based on neighborhood graphs on a random sample of data point...
We study clustering algorithms based on neighborhood graphs on a random sample of data points. The q...
The k-Nearest Neighbour approach (k-NN) has been extensively used as a powerful non-parametric techn...
We study clustering algorithms based on neighborhood graphs on a random sample of data points. The q...
Several clustering algorithms have been extensively used to analyze vast amounts of spatial data. On...
When some 'entities' are related by the 'features' they share they are amenable to a bipartite netwo...
This paper deals with graph clustering algorithm which partitions a set of vertices in graphs into s...
The technological advancements of recent years led to a pervasion of all life areas with information...
Networks allow the representation of interactions between objects. Their structures are often comple...