Set-valued prediction is a well-known concept in multi-class classification. When a classifier is uncertain about the class label for a test instance, it can predict a set of classes instead of a single class. In this paper, we focus on hierarchical multi-class classification problems, where valid sets (typically) correspond to internal nodes of the hierarchy. We argue that this is a very strong restriction, and we propose a relaxation by introducing the notion of representation complexity for a predicted set. In combination with probabilistic classifiers, this leads to a challenging inference problem for which specific combinatorial optimization algorithms are needed. We propose three methods and evaluate them on benchmark datasets: a naïv...
Instance-based learning (IBL) algorithms have proved to be successful in many applications. However,...
Hierarchical multilabel classification (HMC) is an extension of binary classification where an insta...
This study presents a theoretical investigation of the rank-based multiple classifier decision probl...
In cases of uncertainty, a multi-class classifier preferably returns a set of candidate classes inst...
We consider multi-class classification where the predictor has a hierarchical structure that allows ...
Multi-class classification problem is among the most popular and well-studied statistical frameworks...
The major challenge in designing a discriminative learning algorithm for predicting structured data ...
International audienceWe propose a method for reliable prediction in multi-class classification, whe...
Recently the maximum margin criterion has been employed to learn a discriminative class hierarchical...
International audienceWe describe a new approach for dealing with hierarchical classification with a...
An algorithm detecting a classification model in the presence of a multiclass response is introduced...
Classification problems in machine learning involve assigning labels to various kinds of output type...
Abstract Hierarchical classification problems are multiclass supervised learning problems with a pre...
Abstract. Empirical hardness models predict a solver’s runtime for a given instance of an N P-hard p...
Abstract. We introduce a new method for building classification models when we have prior knowledge ...
Instance-based learning (IBL) algorithms have proved to be successful in many applications. However,...
Hierarchical multilabel classification (HMC) is an extension of binary classification where an insta...
This study presents a theoretical investigation of the rank-based multiple classifier decision probl...
In cases of uncertainty, a multi-class classifier preferably returns a set of candidate classes inst...
We consider multi-class classification where the predictor has a hierarchical structure that allows ...
Multi-class classification problem is among the most popular and well-studied statistical frameworks...
The major challenge in designing a discriminative learning algorithm for predicting structured data ...
International audienceWe propose a method for reliable prediction in multi-class classification, whe...
Recently the maximum margin criterion has been employed to learn a discriminative class hierarchical...
International audienceWe describe a new approach for dealing with hierarchical classification with a...
An algorithm detecting a classification model in the presence of a multiclass response is introduced...
Classification problems in machine learning involve assigning labels to various kinds of output type...
Abstract Hierarchical classification problems are multiclass supervised learning problems with a pre...
Abstract. Empirical hardness models predict a solver’s runtime for a given instance of an N P-hard p...
Abstract. We introduce a new method for building classification models when we have prior knowledge ...
Instance-based learning (IBL) algorithms have proved to be successful in many applications. However,...
Hierarchical multilabel classification (HMC) is an extension of binary classification where an insta...
This study presents a theoretical investigation of the rank-based multiple classifier decision probl...