Supervised relational learning over labeled graphs, e.g. via recursive neural nets, received considerable attention from the connectionist community. Surprisingly, with the exception of recursive self organizing maps, unsupervised paradigms have been far less investigated. In particular, no algorithms for density estimation over graphs are found in the literature. This paper introduces first a formal notion of probability density function (pdf) over graphical spaces. It then proposes a maximum-likelihood pdf estimation technique, relying on the joint optimization of a recursive encoding network and a constrained radial basis functions-like net. Preliminary experiments on synthetically generated samples of labeled graphs are analyzed and tes...
A structured organization of information is typically required by symbolic processing. On the other ...
We present a novel framework for tree-structure embed-ded density estimation and its fast approximat...
We propose nonparametric methods to obtain the Probability Density Function (PDF) to assess the prop...
Supervised relational learning over labeled graphs, e.g. via recursive neural nets, received conside...
Structured data in the form of labeled graphs (with variable order and topology) may be thought of a...
The paper introduces a robust connectionist technique for the empirical nonparametric estimation of ...
International audienceIn this work we explore the Perturb and Combine idea, celebrated in supervised...
The classification of graphical patterns (i.e., data that are represented in the form of labeled gra...
This chapter introduces a probabilistic interpretation of artificial neural networks (ANNs), moving ...
Learning from structured data (i.e. graphs) is a topic that has recently received the attention of t...
The estimation of probability density functions (pdf) from unlabeled data samples is a relevant (and...
The chapter is a survey of probabilistic interpretations of artificial neural networks (ANN) along w...
The data arising in many important applications can be represented as networks. This network represe...
We present a novel framework for tree-structure embedded density estimation and its fast approximati...
A structured organization of information is typically required by symbolic processing. On the other ...
We present a novel framework for tree-structure embed-ded density estimation and its fast approximat...
We propose nonparametric methods to obtain the Probability Density Function (PDF) to assess the prop...
Supervised relational learning over labeled graphs, e.g. via recursive neural nets, received conside...
Structured data in the form of labeled graphs (with variable order and topology) may be thought of a...
The paper introduces a robust connectionist technique for the empirical nonparametric estimation of ...
International audienceIn this work we explore the Perturb and Combine idea, celebrated in supervised...
The classification of graphical patterns (i.e., data that are represented in the form of labeled gra...
This chapter introduces a probabilistic interpretation of artificial neural networks (ANNs), moving ...
Learning from structured data (i.e. graphs) is a topic that has recently received the attention of t...
The estimation of probability density functions (pdf) from unlabeled data samples is a relevant (and...
The chapter is a survey of probabilistic interpretations of artificial neural networks (ANN) along w...
The data arising in many important applications can be represented as networks. This network represe...
We present a novel framework for tree-structure embedded density estimation and its fast approximati...
A structured organization of information is typically required by symbolic processing. On the other ...
We present a novel framework for tree-structure embed-ded density estimation and its fast approximat...
We propose nonparametric methods to obtain the Probability Density Function (PDF) to assess the prop...