In cases of uncertainty, a multi-class classifier preferably returns a set of candidate classes instead of predicting a single class label with little guarantee. More precisely, the classifier should strive for an optimal balance between the correctness (the true class is among the candidates) and the precision (the candidates are not too many) of its prediction. We formalize this problem within a general decision-theoretic framework that unifies most of the existing work in this area. In this framework, uncertainty is quantified in terms of conditional class probabilities, and the quality of a predicted set is measured in terms of a utility function. We then address the problem of finding the Bayes-optimal prediction, i.e., the subset of c...
We study a novel machine learning (ML) problem setting of sequentially allocating small subsets of t...
In this paper, we first explore an intrinsic problem that exists in the theories induced by learning...
In contrast to conventional (single-label) classification, the setting of multilabel classification ...
In cases of uncertainty, a multi-class classifier preferably returns a set of candidate classes inst...
International audienceWe propose a method for reliable prediction in multi-class classification, whe...
Set-valued prediction is a well-known concept in multi-class classification. When a classifier is un...
Multi-class classification problem is among the most popular and well-studied statistical frameworks...
In fields such as medicine and drug discovery, the ultimate goal of a classification is not to guess...
Multi-class classification is one of the most important tasks in machine learning. In this paper we ...
The usual formulas for gauging the quality of a classification method assume that we know the ground...
Decision trees estimate prediction certainty using the class distribution in the leaf responsible fo...
Many classification problems are solved by aggregating the output of a group of distinct predictors....
Via a unified view of probability estimation, classification, and prediction, we derive a uniformly-...
Multi-class classification methods that produce sets of probabilistic classifiers, such as ensemble ...
Multiple classifier systems (MCS) unite the answers of separately-trained powerful base-classifiers ...
We study a novel machine learning (ML) problem setting of sequentially allocating small subsets of t...
In this paper, we first explore an intrinsic problem that exists in the theories induced by learning...
In contrast to conventional (single-label) classification, the setting of multilabel classification ...
In cases of uncertainty, a multi-class classifier preferably returns a set of candidate classes inst...
International audienceWe propose a method for reliable prediction in multi-class classification, whe...
Set-valued prediction is a well-known concept in multi-class classification. When a classifier is un...
Multi-class classification problem is among the most popular and well-studied statistical frameworks...
In fields such as medicine and drug discovery, the ultimate goal of a classification is not to guess...
Multi-class classification is one of the most important tasks in machine learning. In this paper we ...
The usual formulas for gauging the quality of a classification method assume that we know the ground...
Decision trees estimate prediction certainty using the class distribution in the leaf responsible fo...
Many classification problems are solved by aggregating the output of a group of distinct predictors....
Via a unified view of probability estimation, classification, and prediction, we derive a uniformly-...
Multi-class classification methods that produce sets of probabilistic classifiers, such as ensemble ...
Multiple classifier systems (MCS) unite the answers of separately-trained powerful base-classifiers ...
We study a novel machine learning (ML) problem setting of sequentially allocating small subsets of t...
In this paper, we first explore an intrinsic problem that exists in the theories induced by learning...
In contrast to conventional (single-label) classification, the setting of multilabel classification ...