International audienceData uncertainty arises in several real world domains, including machine learning and pattern recognition applications. In classification problems, we could very well wind up with uncertain attribute values that are caused by sensor failures, measurements approximations or even subjective expert assessments, etc. Despite their seriousness, these kinds of data are not well covered till now. In this paper, we propose to develop a machine learning model for handling such kinds of imperfection. More precisely, we suggest to develop a new version of the well known k-nearest neighbors classifier to handle the uncertainty that occurs in the attribute values within the belief function framework
Many real applications consume data that is intrinsically uncertain, noisy and error-prone. In this ...
In many classification problems, data are inherently uncertain. The available training data might be...
Abstract—This paper presents a learning procedure for opti-mizing the parameters in the evidence-the...
The classifications of uncertain data become one of the tedious processes in the data-mining domain....
International audienceInformation fusion technique like evidence theory has been widely applied in t...
International audienceData uncertainty is seen as one of the main issues of several real world appli...
International audienceActive learning is a subfield of machine learning which allows to reduce the a...
Abstract—Neighborhood based classifiers are commonly used in the applications of pattern classificat...
This work deals with the problem of classifying uncertain data. With this aim the Uncertain Nearest ...
International audienceThe process of combining an ensemble of classifiers has been deemed to be an e...
International audienceDecision trees are regarded as convenient machine learning techniques for solv...
Part 7: AlgorithmsInternational audienceUncertainty of the input data is a common issue in machine l...
The k-nearest neighbors method (kNN) is a nonparametric, instance-based method used for regression a...
International audienceThe Evidential K-Nearest-Neighbor (EK-NN) method provided a global treatment o...
Many real applications consume data that is intrinsically uncertain, noisy and error-prone. In this ...
Many real applications consume data that is intrinsically uncertain, noisy and error-prone. In this ...
In many classification problems, data are inherently uncertain. The available training data might be...
Abstract—This paper presents a learning procedure for opti-mizing the parameters in the evidence-the...
The classifications of uncertain data become one of the tedious processes in the data-mining domain....
International audienceInformation fusion technique like evidence theory has been widely applied in t...
International audienceData uncertainty is seen as one of the main issues of several real world appli...
International audienceActive learning is a subfield of machine learning which allows to reduce the a...
Abstract—Neighborhood based classifiers are commonly used in the applications of pattern classificat...
This work deals with the problem of classifying uncertain data. With this aim the Uncertain Nearest ...
International audienceThe process of combining an ensemble of classifiers has been deemed to be an e...
International audienceDecision trees are regarded as convenient machine learning techniques for solv...
Part 7: AlgorithmsInternational audienceUncertainty of the input data is a common issue in machine l...
The k-nearest neighbors method (kNN) is a nonparametric, instance-based method used for regression a...
International audienceThe Evidential K-Nearest-Neighbor (EK-NN) method provided a global treatment o...
Many real applications consume data that is intrinsically uncertain, noisy and error-prone. In this ...
Many real applications consume data that is intrinsically uncertain, noisy and error-prone. In this ...
In many classification problems, data are inherently uncertain. The available training data might be...
Abstract—This paper presents a learning procedure for opti-mizing the parameters in the evidence-the...