We propose a robust probability classifier model to address classification problems with data uncertainty. A class-conditional probability distributional set is constructed based on the modified χ2-distance. Based on a “linear combination assumption” for the posterior class-conditional probabilities, we consider a classification criterion using the weighted sum of the posterior probabilities. An optimal robust minimax classifier is defined as the one with the minimal worst-case absolute error loss function value over all possible distributions belonging to the constructed distributional set. Based on the conic duality theorem, we show that the resulted optimization problem can be reformulated into a second order cone programming problem whi...
Despite their popularity, naive Bayesian classifiers are not well suited for real-world applications...
In classification problems, isotonic regression has been commonly used to map the prediction scores ...
We introduce a new class of distributionally robust optimization problems under decision-dependent a...
When constructing a classifier, the probability of correct classification of future data points shou...
This paper studies the problem of constructing robust classifiers when the training is plagued with ...
Abstract This paper studies the problem of constructing robust classifiers when the training is plag...
To provide stability of classification, a robust supervised minimum distance classifier based on the...
This paper presents a Chance-constraint Programming approach for constructing maximum-margin classif...
Assuming an ellipsoidal model of uncertainty a robust formulation for classifying noisy data is pres...
We study how closely the optimal Bayes error rate can be approximately reached using a classificatio...
Abstract A wide variety of machine learning algorithms such as support vector machine (SVM), minimax...
Markov decision process (MDP) is a decision making framework where a decision maker is interested in...
Naive Bayes is among the simplest probabilistic classifiers. It often performs surprisingly well in ...
Classifiers based on probability density estimates can be used to find posterior probabilities for t...
We consider the problem of choosing a linear classifier that minimizes misclassification probabiliti...
Despite their popularity, naive Bayesian classifiers are not well suited for real-world applications...
In classification problems, isotonic regression has been commonly used to map the prediction scores ...
We introduce a new class of distributionally robust optimization problems under decision-dependent a...
When constructing a classifier, the probability of correct classification of future data points shou...
This paper studies the problem of constructing robust classifiers when the training is plagued with ...
Abstract This paper studies the problem of constructing robust classifiers when the training is plag...
To provide stability of classification, a robust supervised minimum distance classifier based on the...
This paper presents a Chance-constraint Programming approach for constructing maximum-margin classif...
Assuming an ellipsoidal model of uncertainty a robust formulation for classifying noisy data is pres...
We study how closely the optimal Bayes error rate can be approximately reached using a classificatio...
Abstract A wide variety of machine learning algorithms such as support vector machine (SVM), minimax...
Markov decision process (MDP) is a decision making framework where a decision maker is interested in...
Naive Bayes is among the simplest probabilistic classifiers. It often performs surprisingly well in ...
Classifiers based on probability density estimates can be used to find posterior probabilities for t...
We consider the problem of choosing a linear classifier that minimizes misclassification probabiliti...
Despite their popularity, naive Bayesian classifiers are not well suited for real-world applications...
In classification problems, isotonic regression has been commonly used to map the prediction scores ...
We introduce a new class of distributionally robust optimization problems under decision-dependent a...