Search Results for author: Pierre Latouche

Found 13 papers, 2 papers with code

The Deep Latent Position Topic Model for Clustering and Representation of Networks with Textual Edges

no code implementations14 Apr 2023 Rémi Boutin, Pierre Latouche, Charles Bouveyron

To understand those heterogeneous and complex data structures, clustering nodes into homogeneous groups as well as rendering a comprehensible visualisation of the data is mandatory.

Clustering Model Selection +2

Motif-based tests for bipartite networks

no code implementations27 Jan 2021 Sarah Ouadah, Pierre Latouche, Stéphane Robin

Based on these results, we define a goodness-of-fit test for the B-EDD model and propose a family of tests for network comparisons.

Statistics Theory Statistics Theory

DeepLTRS: A Deep Latent Recommender System based on User Ratings and Reviews

no code implementations1 Jan 2021 Dingge LIANG, Marco Corneli, Pierre Latouche, Charles Bouveyron

The underlying motivation is that, when a user scores only a few products, the texts used in the reviews represent a significant source of information.

Recommendation Systems

A Bayesian Fisher-EM algorithm for discriminative Gaussian subspace clustering

no code implementations8 Dec 2020 Nicolas Jouvin, Charles Bouveyron, Pierre Latouche

High-dimensional data clustering has become and remains a challenging task for modern statistics and machine learning, with a wide range of applications.

Image Denoising Methodology

Cluster-Specific Predictions with Multi-Task Gaussian Processes

1 code implementation16 Nov 2020 Arthur Leroy, Pierre Latouche, Benjamin Guedj, Servane Gey

A variational EM algorithm is derived for dealing with the optimisation of the hyper-parameters along with the hyper-posteriors' estimation of latent variables and processes.

Clustering Gaussian Processes +1

MAGMA: Inference and Prediction with Multi-Task Gaussian Processes

1 code implementation21 Jul 2020 Arthur Leroy, Pierre Latouche, Benjamin Guedj, Servane Gey

A novel multi-task Gaussian process (GP) framework is proposed, by using a common mean process for sharing information across tasks.

Gaussian Processes Time Series +1

Block modelling in dynamic networks with non-homogeneous Poisson processes and exact ICL

no code implementations10 Jul 2017 Marco Corneli, Pierre Latouche, Fabrice Rossi

We develop a model in which interactions between nodes of a dynamic network are counted by non homogeneous Poisson processes.

Exact Dimensionality Selection for Bayesian PCA

no code implementations8 Mar 2017 Charles Bouveyron, Pierre Latouche, Pierre-Alexandre Mattei

We present a Bayesian model selection approach to estimate the intrinsic dimensionality of a high-dimensional dataset.

Model Selection

Bayesian Variable Selection for Globally Sparse Probabilistic PCA

no code implementations19 May 2016 Charles Bouveyron, Pierre Latouche, Pierre-Alexandre Mattei

To this end, using Roweis' probabilistic interpretation of PCA and a Gaussian prior on the loading matrix, we provide the first exact computation of the marginal likelihood of a Bayesian PCA model.

Model Selection Variable Selection

Exact ICL maximization in a non-stationary temporal extension of the stochastic block model for dynamic networks

no code implementations9 May 2016 Marco Corneli, Pierre Latouche, Fabrice Rossi

The stochastic block model (SBM) is a flexible probabilistic tool that can be used to model interactions between clusters of nodes in a network.

Stochastic Block Model

Modelling time evolving interactions in networks through a non stationary extension of stochastic block models

no code implementations8 Sep 2015 Marco Corneli, Pierre Latouche, Fabrice Rossi

To overcome this limitation, we propose a partition of the whole time horizon, in which interactions are observed, and develop a non stationary extension of the SBM, allowing to simultaneously cluster the nodes in a network along with fixed time intervals in which the interactions take place.

Clustering Stochastic Block Model

Graphs in machine learning: an introduction

no code implementations23 Jun 2015 Pierre Latouche, Fabrice Rossi

In this paper, we give an introduction to some methods relying on graphs for learning.

BIG-bench Machine Learning Clustering +2

Exact ICL maximization in a non-stationary time extension of the latent block model for dynamic networks

no code implementations12 Jun 2015 Marco Corneli, Pierre Latouche, Fabrice Rossi

The latent block model (LBM) is a flexible probabilistic tool to describe interactions between node sets in bipartite networks, but it does not account for interactions of time varying intensity between nodes in unknown classes.

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