Search Results for author: Rémi Emonet

Found 14 papers, 6 papers with code

A Swiss Army Knife for Minimax Optimal Transport

1 code implementation ICML 2020 Sofien Dhouib, Ievgen Redko, Tanguy Kerdoncuff, Rémi Emonet, Marc Sebban

The Optimal transport (OT) problem and its associated Wasserstein distance have recently become a topic of great interest in the machine learning community.

Leveraging PAC-Bayes Theory and Gibbs Distributions for Generalization Bounds with Complexity Measures

1 code implementation19 Feb 2024 Paul Viallard, Rémi Emonet, Amaury Habrard, Emilie Morvant, Valentina Zantedeschi

In statistical learning theory, a generalization bound usually involves a complexity measure imposed by the considered theoretical framework.

Generalization Bounds Learning Theory

Fair Text Classification with Wasserstein Independence

1 code implementation21 Nov 2023 Thibaud Leteno, Antoine Gourru, Charlotte Laclau, Rémi Emonet, Christophe Gravier

This is more suitable for real-life scenarios compared to existing methods that require annotations of sensitive attributes at train time.

Attribute Fairness +2

An Adjusted Nearest Neighbor Algorithm Maximizing the F-Measure from Imbalanced Data

no code implementations2 Sep 2019 Rémi Viola, Rémi Emonet, Amaury Habrard, Guillaume Metzler, Sébastien Riou, Marc Sebban

In this paper, we address the challenging problem of learning from imbalanced data using a Nearest-Neighbor (NN) algorithm.

Fraud Detection

Learning Interpretable Shapelets for Time Series Classification through Adversarial Regularization

no code implementations3 Jun 2019 Yichang Wang, Rémi Emonet, Elisa Fromont, Simon Malinowski, Etienne Menager, Loïc Mosser, Romain Tavenard

Times series classification can be successfully tackled by jointly learning a shapelet-based representation of the series in the dataset and classifying the series according to this representation.

Classification General Classification +3

End-to-End Learned Early Classification of Time Series for In-Season Crop Type Mapping

2 code implementations30 Jan 2019 Marc Rußwurm, Nicolas Courty, Rémi Emonet, Sébastien Lefèvre, Devis Tuia, Romain Tavenard

In this work, we present an End-to-End Learned Early Classification of Time Series (ELECTS) model that estimates a classification score and a probability of whether sufficient data has been observed to come to an early and still accurate decision.

Classification Crop Classification +6

IoU is not submodular

no code implementations3 Sep 2018 Tanguy Kerdoncuff, Rémi Emonet

This short article aims at demonstrate that the Intersection over Union (or Jaccard index) is not a submodular function.

BIG-bench Machine Learning Segmentation +1

Residual Conv-Deconv Grid Network for Semantic Segmentation

1 code implementation25 Jul 2017 Damien Fourure, Rémi Emonet, Elisa Fromont, Damien Muselet, Alain Tremeau, Christian Wolf

However, for semantic image segmentation, where the task consists in providing a semantic class to each pixel of an image, feature maps reduction is harmful because it leads to a resolution loss in the output prediction.

Image Segmentation Segmentation +1

Improving Max-Sum through Decimation to Solve Loopy Distributed Constraint Optimization Problems

no code implementations7 Jun 2017 Jesús Cerquides, Rémi Emonet, Gauthier Picard, Juan A. Rodríguez-Aguilar

In the context of solving large distributed constraint optimization problems (DCOP), belief-propagation and approximate inference algorithms are candidates of choice.

L$^3$-SVMs: Landmarks-based Linear Local Support Vectors Machines

no code implementations1 Mar 2017 Valentina Zantedeschi, Rémi Emonet, Marc Sebban

For their ability to capture non-linearities in the data and to scale to large training sets, local Support Vector Machines (SVMs) have received a special attention during the past decade.

Dimensionality Reduction

beta-risk: a New Surrogate Risk for Learning from Weakly Labeled Data

no code implementations NeurIPS 2016 Valentina Zantedeschi, Rémi Emonet, Marc Sebban

During the past few years, the machine learning community has paid attention to developping new methods for learning from weakly labeled data.

Lipschitz Continuity of Mahalanobis Distances and Bilinear Forms

no code implementations4 Apr 2016 Valentina Zantedeschi, Rémi Emonet, Marc Sebban

Many theoretical results in the machine learning domain stand only for functions that are Lipschitz continuous.

BIG-bench Machine Learning

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