The information age has resulted in masses of data in every field. Techniques to analyse this data are therefore becoming more and more important in all branches of engineering as well. Multivariate data analysis refers to a group of statistical and signal processing techniques and algorithms used to analyse data arising from more than one variable, i.e. it deals with the analysis of multivariable or multidimensional data. Common multivariate data analysis approach usually applied to multivariate data is data dimensionality reduction. The main aim of dimensionality reduction is to try and preserve as much of information present in the data whilst at the same time, reducing data dimensions of the original set. This usually makes the data se...
The proceedings contain 49 papers. The topics discussed include: principal component analysis for ca...
The analysis of high-dimensional data often begins with the identification of lower dimensional subs...
This work is on the development of an observation reduction technique based on the principal compone...
Real-world experiments are becoming increasingly more complex, needing techniques capable of trackin...
Master's thesis in Computer scienceCollected data from the sensors monitoring the environment in oil...
Principal Component Analysis (PCA) is one of the most popular techniques in multivariate statistica...
Nuclear physics deals more and more with experiments involving a large number of parameters. The ana...
Multivariate analysis methods have been studied for the purpose of improving condition monitoring of...
Recently statistical knowledge has become an important requirement and occupies a prominent position...
An important achievement in the analysis of complex data matrices lacking the appropriate conditions...
In the last few decades the accumulation of large amounts of in formation in numerous applications....
We consider the design of dimensional analysis experiments when there is more than a single response...
For over 30 years, this text has provided students with the information they need to understand and ...
With a useful index of notations at the beginning, this book explains and illustrates the theory and...
Multivariate data are difficult to handle due to the so-called curse of dimensionality. Researchers ...
The proceedings contain 49 papers. The topics discussed include: principal component analysis for ca...
The analysis of high-dimensional data often begins with the identification of lower dimensional subs...
This work is on the development of an observation reduction technique based on the principal compone...
Real-world experiments are becoming increasingly more complex, needing techniques capable of trackin...
Master's thesis in Computer scienceCollected data from the sensors monitoring the environment in oil...
Principal Component Analysis (PCA) is one of the most popular techniques in multivariate statistica...
Nuclear physics deals more and more with experiments involving a large number of parameters. The ana...
Multivariate analysis methods have been studied for the purpose of improving condition monitoring of...
Recently statistical knowledge has become an important requirement and occupies a prominent position...
An important achievement in the analysis of complex data matrices lacking the appropriate conditions...
In the last few decades the accumulation of large amounts of in formation in numerous applications....
We consider the design of dimensional analysis experiments when there is more than a single response...
For over 30 years, this text has provided students with the information they need to understand and ...
With a useful index of notations at the beginning, this book explains and illustrates the theory and...
Multivariate data are difficult to handle due to the so-called curse of dimensionality. Researchers ...
The proceedings contain 49 papers. The topics discussed include: principal component analysis for ca...
The analysis of high-dimensional data often begins with the identification of lower dimensional subs...
This work is on the development of an observation reduction technique based on the principal compone...