It is well known that the eigenvalue analyses such as the method of principal components and the Karhunen-Loève expansion are coordinate dependent. This paper deals with a development of a coordinate-free theory of eigenvalue analysis with observation noise taken into consideration. Results obtained are stated with no reliance on a particular coordinate system. When data and observation noise are normally distributed, the results are derived using the average mutual information between the data and the measurements. From this new point of view, it will be seen that in the traditional theories of principal components and the Karhunen-Loève expansion, the noise covariance matrix is presupposed to be of a special form implicitly
The problem of extracting sinusoid signals from noisy observations made at equally spaced times is c...
An estimator of the covariance matrix in signal processing is derived when the noise covariance matr...
Introduction The Karhunen-Lo`eve basis functions, more frequently referred to as principal componen...
It is well known that the eigenvalue analyses such as the method of principal components and the Kar...
This paper demonstrates the effect of independent noise in principal components of k normally distri...
This paper uses the coordinate-free approach to linear algebra to simplify and unify the explanation...
ArticleCopyright © 2000 IEEE. Personal use of this material is permitted. Permission from IEEE must ...
The main objective of this thesis is to develop procedures for making inferences about the eigenvalu...
A common method for extracting true correlations from large data sets is to look for variables with ...
Statistically independent features can be extracted by finding a fac-torial representation of a sign...
The identification of a reduced dimensional representation of the data is among the main issues of e...
Linear vector space theory is used to develop a general representation of a set of data vectors or r...
Summary form only given as follows. In this paper the term system identification addresses the proce...
International audienceIn this talk, we show that, in principal component analysis (PCA) and in multi...
AbstractIn this article, we propose a new estimation methodology to deal with PCA for high-dimension...
The problem of extracting sinusoid signals from noisy observations made at equally spaced times is c...
An estimator of the covariance matrix in signal processing is derived when the noise covariance matr...
Introduction The Karhunen-Lo`eve basis functions, more frequently referred to as principal componen...
It is well known that the eigenvalue analyses such as the method of principal components and the Kar...
This paper demonstrates the effect of independent noise in principal components of k normally distri...
This paper uses the coordinate-free approach to linear algebra to simplify and unify the explanation...
ArticleCopyright © 2000 IEEE. Personal use of this material is permitted. Permission from IEEE must ...
The main objective of this thesis is to develop procedures for making inferences about the eigenvalu...
A common method for extracting true correlations from large data sets is to look for variables with ...
Statistically independent features can be extracted by finding a fac-torial representation of a sign...
The identification of a reduced dimensional representation of the data is among the main issues of e...
Linear vector space theory is used to develop a general representation of a set of data vectors or r...
Summary form only given as follows. In this paper the term system identification addresses the proce...
International audienceIn this talk, we show that, in principal component analysis (PCA) and in multi...
AbstractIn this article, we propose a new estimation methodology to deal with PCA for high-dimension...
The problem of extracting sinusoid signals from noisy observations made at equally spaced times is c...
An estimator of the covariance matrix in signal processing is derived when the noise covariance matr...
Introduction The Karhunen-Lo`eve basis functions, more frequently referred to as principal componen...