Many real world phenomena are better represented by non-precise data rather than by single-valued data. In fact, non-precise data represent two sources of variability: the natural phenomena variability and the variability or uncertainty induced by measurement errors or determined by specific experimental conditions. The latter variability source is named imprecision. When there are information about the imprecision distribution the fuzzy data coding is used to represent the imprecision. However, in many cases imprecise data are natively defined only by the minimum and maximum values. Technical specifications, stock-market daily prices, survey data are some examples of such kind of data. In these cases, interval data represent a good data co...
International audienceOne feature of contemporary datasets is that instead of the single point value...
The analysis of field lifetime data is much more complicated than the analysis of the results of rel...
The statistical analysis of real world problems, is often affected by different type of errors as: m...
Many real world phenomena are better represented by non-precise data rather than by single-valued da...
In real life there are many kinds of phenomena that are better described by interval bounds than by...
In this paper some statistical properties of Interval Imputation are derived in the context of Prin...
Abstract. In the geodetic applications of the Global Positioning System (GPS) various types of data ...
International audienceThe available methods to handle missing values in principal component analysis...
International audienceWe propose a new method to impute missing values in mixed datasets. It is base...
In statistical analysis data are usually assumed to be numbers or vectors. But real measurement data...
Traditional statistical data processing techniques (such as Least Squares) assume that we know the p...
Principal Component Analysis (PCA) is a linear data analysis tool that aims to reduce the dimensiona...
Recent developments in Soft Computing and StatisticsInternational audienceProbability theory has bee...
Real world data analysis is often affected by different types of errors as: measurement errors, comp...
In many practical situations, we are interested in statistics characterizing a population of objects...
International audienceOne feature of contemporary datasets is that instead of the single point value...
The analysis of field lifetime data is much more complicated than the analysis of the results of rel...
The statistical analysis of real world problems, is often affected by different type of errors as: m...
Many real world phenomena are better represented by non-precise data rather than by single-valued da...
In real life there are many kinds of phenomena that are better described by interval bounds than by...
In this paper some statistical properties of Interval Imputation are derived in the context of Prin...
Abstract. In the geodetic applications of the Global Positioning System (GPS) various types of data ...
International audienceThe available methods to handle missing values in principal component analysis...
International audienceWe propose a new method to impute missing values in mixed datasets. It is base...
In statistical analysis data are usually assumed to be numbers or vectors. But real measurement data...
Traditional statistical data processing techniques (such as Least Squares) assume that we know the p...
Principal Component Analysis (PCA) is a linear data analysis tool that aims to reduce the dimensiona...
Recent developments in Soft Computing and StatisticsInternational audienceProbability theory has bee...
Real world data analysis is often affected by different types of errors as: measurement errors, comp...
In many practical situations, we are interested in statistics characterizing a population of objects...
International audienceOne feature of contemporary datasets is that instead of the single point value...
The analysis of field lifetime data is much more complicated than the analysis of the results of rel...
The statistical analysis of real world problems, is often affected by different type of errors as: m...