Master's thesis in Computer scienceCollected data from the sensors monitoring the environment in oil industry are various and raw, multivariate statistical analysis can turn these data into meaningful information. This paper would introduce some typical multivariate analysis methods, and investigate the data gathered in the Biota Guard exposed experiment by the means of some appropriate multivariate statistical analysis. Principal component analysis produces the principal components to represent the information of the multivariate in a reduced dimensional space; clustering analysis can group the observations of the multivariate into clusters in different ways; discriminant analysis can classifies new observations to existed clusters based o...
A practical guide for multivariate statistical techniques-- now updated and revised In recent years...
This book offers a concise and well-organized introduction to multivariate statistical analysis meth...
Summarization: As science progresses, the need for analyzing multivariate data sets is growing by th...
Master's thesis in Computer scienceCollected data from the sensors monitoring the environment in oil...
The present introductory course of lectures summarizes the principles and algorithms of several wide...
Multivariate analysis methods have been studied for the purpose of improving condition monitoring of...
Nuclear physics deals more and more with experiments involving a large number of parameters. The ana...
The information age has resulted in masses of data in every field. Techniques to analyse this data a...
Factor analysis is a multivariate statistical method for data reduction that originated in psychomet...
This work is on the development of an observation reduction technique based on the principal compone...
This work is on the development of an observation reduction technique based on the principal compone...
This paper illustrates the utility of multivariate statistical techniques for analysis and interp...
The multivariate approach based on Principal Component Analysis (PCA) for anomaly detection received...
Multivariate analysis deals with the statistical analysis of observations where there are multiple r...
In this paper we describe the characteristics and the applications of the multivariate methods for ...
A practical guide for multivariate statistical techniques-- now updated and revised In recent years...
This book offers a concise and well-organized introduction to multivariate statistical analysis meth...
Summarization: As science progresses, the need for analyzing multivariate data sets is growing by th...
Master's thesis in Computer scienceCollected data from the sensors monitoring the environment in oil...
The present introductory course of lectures summarizes the principles and algorithms of several wide...
Multivariate analysis methods have been studied for the purpose of improving condition monitoring of...
Nuclear physics deals more and more with experiments involving a large number of parameters. The ana...
The information age has resulted in masses of data in every field. Techniques to analyse this data a...
Factor analysis is a multivariate statistical method for data reduction that originated in psychomet...
This work is on the development of an observation reduction technique based on the principal compone...
This work is on the development of an observation reduction technique based on the principal compone...
This paper illustrates the utility of multivariate statistical techniques for analysis and interp...
The multivariate approach based on Principal Component Analysis (PCA) for anomaly detection received...
Multivariate analysis deals with the statistical analysis of observations where there are multiple r...
In this paper we describe the characteristics and the applications of the multivariate methods for ...
A practical guide for multivariate statistical techniques-- now updated and revised In recent years...
This book offers a concise and well-organized introduction to multivariate statistical analysis meth...
Summarization: As science progresses, the need for analyzing multivariate data sets is growing by th...