Principal Component Analysis (PCA) is a well known technique the aim of which is to synthesize huge amounts of numerical data by means of a low number of unobserved variables, called components. In this paper, an extension of PCA to deal with interval valued data is proposed. The method, called Midpoint Radius Principal Component Analysis (MR-PCA) recovers the underlying structure of interval valued data by using both the midpoints (or centers) and the radii (a measure of the interval width) information. In order to analyze how MR-PCA works, the results of a simulation study and two applications on chemical data are proposed.Principal Component Analysis, Least squares approach, Interval valued data, Chemical data
The present paper deals with the study of continuous interval data by means of suitable Principal Co...
Principal components analysis (PCA) is a multivariate data analysis technique whose main purpose is ...
Observed data often belong to some specific intervals of values (for instance in case of percentages...
In real life there are many kinds of phenomena that are better described by interval bounds than by...
Principal Component Analysis (PCA) is a linear data analysis tool that aims to reduce the dimensiona...
Real world data analysis is often affected by different types of errors as: measurement errors, comp...
International audienceOne feature of contemporary datasets is that instead of the single point value...
Vertices Principal Component Analysis (V-PCA) and Centers Principal Component Analysis (C-PCA) are v...
Vertices Principal Component Analysis (V-PCA), and Centers Principal Component Analysis (C-PCA) gene...
Vertices Principal Component Analysis (V-PCA) and Centers Principal Component Analysis (C-PCA) are v...
Principle Component Analysis (PCA) is a powerful tool used in the field of statistics. In a given or...
One feature of contemporary datasets is that instead of the single point value in the p-dimensional ...
Principal Component Analysis (PCA from now on) is a multivariate data analysis technique used for ma...
The present paper deals with the study of continuous interval data by means of suitable Principal Co...
Principal components analysis (PCA) is a multivariate data analysis technique whose main purpose is ...
Observed data often belong to some specific intervals of values (for instance in case of percentages...
In real life there are many kinds of phenomena that are better described by interval bounds than by...
Principal Component Analysis (PCA) is a linear data analysis tool that aims to reduce the dimensiona...
Real world data analysis is often affected by different types of errors as: measurement errors, comp...
International audienceOne feature of contemporary datasets is that instead of the single point value...
Vertices Principal Component Analysis (V-PCA) and Centers Principal Component Analysis (C-PCA) are v...
Vertices Principal Component Analysis (V-PCA), and Centers Principal Component Analysis (C-PCA) gene...
Vertices Principal Component Analysis (V-PCA) and Centers Principal Component Analysis (C-PCA) are v...
Principle Component Analysis (PCA) is a powerful tool used in the field of statistics. In a given or...
One feature of contemporary datasets is that instead of the single point value in the p-dimensional ...
Principal Component Analysis (PCA from now on) is a multivariate data analysis technique used for ma...
The present paper deals with the study of continuous interval data by means of suitable Principal Co...
Principal components analysis (PCA) is a multivariate data analysis technique whose main purpose is ...
Observed data often belong to some specific intervals of values (for instance in case of percentages...