Many bioinformatics algorithms can be understood as binary classifiers. They are usually compared using the area under the receiver operating characteristic (ROC) curve. On the other hand, choosing the best threshold for practical use is a complex task, due to uncertain and context-dependent skews in the abundance of positives in nature and in the yields/costs for correct/incorrect classification. We argue that considering a classifier as a player in a zero-sum game allows us to use the minimax principle from game theory to determine the optimal operating point. The proposed classifier threshold corresponds to the intersection between the ROC curve and the descending diagonal in ROC space and yields a minimax accuracy of 1-FPR. Our proposal...
The problem of learning correct decision rules to minimize the probability of misclassification is a...
In signal processing, the robust approach might be used when there are uncertainties on the observat...
n this paper we seek the minima of performance metrics for binary classification to facilitate compa...
Many bioinformatics algorithms can be understood as binary classifiers. They are usually compared us...
International audienceWe consider the problem of finding optimal classifiers in an adversarial setti...
One of the popular multi-class classification methods is to combine binary classifiers. As well as t...
We investigate the problem of designing optimal classifiers in the "strategic classification" settin...
Many multi-label classifiers provide a real-valued score for each class. A well known design approac...
Most binary classifiers work by processing the input to produce a scalar response and comparing it t...
This paper proposes a simple extension of the celebrated MINIMAX algorithm used in zero-sum two-play...
We consider single-class classification (SCC) as a two-person game between the learner and an advers...
This paper investigates the properties of the widely-utilized F1 metric as used to evaluate the perf...
This paper proposes a simple extension of the celebrated MINIMAX algorithm used in zero-sum two-play...
Binary classification problems are ubiquitous in health and social sciences. In many cases, one wish...
The problem of learning correct decision rules to minimize the probability of misclassification is a...
The problem of learning correct decision rules to minimize the probability of misclassification is a...
In signal processing, the robust approach might be used when there are uncertainties on the observat...
n this paper we seek the minima of performance metrics for binary classification to facilitate compa...
Many bioinformatics algorithms can be understood as binary classifiers. They are usually compared us...
International audienceWe consider the problem of finding optimal classifiers in an adversarial setti...
One of the popular multi-class classification methods is to combine binary classifiers. As well as t...
We investigate the problem of designing optimal classifiers in the "strategic classification" settin...
Many multi-label classifiers provide a real-valued score for each class. A well known design approac...
Most binary classifiers work by processing the input to produce a scalar response and comparing it t...
This paper proposes a simple extension of the celebrated MINIMAX algorithm used in zero-sum two-play...
We consider single-class classification (SCC) as a two-person game between the learner and an advers...
This paper investigates the properties of the widely-utilized F1 metric as used to evaluate the perf...
This paper proposes a simple extension of the celebrated MINIMAX algorithm used in zero-sum two-play...
Binary classification problems are ubiquitous in health and social sciences. In many cases, one wish...
The problem of learning correct decision rules to minimize the probability of misclassification is a...
The problem of learning correct decision rules to minimize the probability of misclassification is a...
In signal processing, the robust approach might be used when there are uncertainties on the observat...
n this paper we seek the minima of performance metrics for binary classification to facilitate compa...