AbstractNaive Bayes classifiers provide an efficient and scalable approach to supervised classification problems. When some entries in the training set are missing, methods exist to learn these classifiers under some assumptions about the pattern of missing data. Unfortunately, reliable information about the pattern of missing data may be not readily available and recent experimental results show that the enforcement of an incorrect assumption about the pattern of missing data produces a dramatic decrease in accuracy of the classifier. This paper introduces a Robust Bayes Classifier (rbc) able to handle incomplete databases with no assumption about the pattern of missing data. In order to avoid assumptions, the rbc bounds all the possible p...
Real-life data is often affected by noise. To cope with this issue, classification techniques robust...
Some results related to statistical classification in the presence of missing covariates are present...
In this dissertation, the Combined Bayes Test (CBT) and its average probability of error, P(e), are ...
AbstractNaive Bayes classifiers provide an efficient and scalable approach to supervised classificat...
Some expected features of sample patterns in a classification system may be missing, immeasurable, o...
Traditional classification algorithms require a large number of labelled examples from all the prede...
Traditional classification algorithms require a large number of labelled examples from all the prede...
Traditional classification algorithms require a large number of labelled examples from all the prede...
As machine learning is increasingly used to make real-world decisions, recent research efforts aim t...
Bayes’ rule is introduced as a coherent strategy for multiple recomputations of classifier system ou...
AbstractWe focus on a well-known classification task with expert systems based on Bayesian networks:...
The naïve Bayes classifier is a simple form of Bayesian classifiers which assumes all the features a...
We present new algorithms for learning Bayesian networks from data with missing values using a data ...
The Bayes error rate gives a statistical lower bound on the error achievable for a given classificat...
Real-life data is often affected by noise. To cope with this issue, classification techniques robust...
Real-life data is often affected by noise. To cope with this issue, classification techniques robust...
Some results related to statistical classification in the presence of missing covariates are present...
In this dissertation, the Combined Bayes Test (CBT) and its average probability of error, P(e), are ...
AbstractNaive Bayes classifiers provide an efficient and scalable approach to supervised classificat...
Some expected features of sample patterns in a classification system may be missing, immeasurable, o...
Traditional classification algorithms require a large number of labelled examples from all the prede...
Traditional classification algorithms require a large number of labelled examples from all the prede...
Traditional classification algorithms require a large number of labelled examples from all the prede...
As machine learning is increasingly used to make real-world decisions, recent research efforts aim t...
Bayes’ rule is introduced as a coherent strategy for multiple recomputations of classifier system ou...
AbstractWe focus on a well-known classification task with expert systems based on Bayesian networks:...
The naïve Bayes classifier is a simple form of Bayesian classifiers which assumes all the features a...
We present new algorithms for learning Bayesian networks from data with missing values using a data ...
The Bayes error rate gives a statistical lower bound on the error achievable for a given classificat...
Real-life data is often affected by noise. To cope with this issue, classification techniques robust...
Real-life data is often affected by noise. To cope with this issue, classification techniques robust...
Some results related to statistical classification in the presence of missing covariates are present...
In this dissertation, the Combined Bayes Test (CBT) and its average probability of error, P(e), are ...