In this work, basic theory and some proposed developments to localised principal components and curves are introduced. In addition, some areas of application for local principal curves are explored. Only relatively recently, localised principal components utilising kernel-type weights have found their way into the statistical literature. In this study, the asymptotic behaviour of the method is investigated and extended to the context of local principal curves, where the characteristics of the points at which the curve stops at the edges are identified. This is used to develop a method that lets the curve `delay' convergence if desired, gaining more access to boundary regions of the data. Also, a method for automatic choice of the starting p...
When confronted with massive data streams, summarizing data with dimension reduction methods such as...
We deal with the problem of curve fitting in more than one dimension. This is progressively becoming...
Often the relation between the variables constituting amultivariate data space might be characterize...
In this work, basic theory and some proposed developments to localised principal components and curv...
Principal components are a well established tool in dimension reduction. The extension to principal ...
Principal components are a well established tool in dimension reduction. The extension to principal ...
The subjects of this thesis are unsupervised learning in general, and principal curves in particular...
AbstractÐPrincipal curves have been defined as ªself-consistentº smooth curves which pass through th...
Principal curves have been defined as “self consistent ” smooth curves which pass through the “middl...
Frequently the predictor space of a multivariate regression problem of the type y = m(x_1, …, x_p ) ...
© 2011 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Principal curves are curves which pass throught the 'mid dle ' of a data cloud. They are s...
Abstract – Principal curves are nonlinear generalizations of the notion of first principal component...
AbstractPrincipal curves have been defined as smooth curves passing through the “middle” of a multid...
peer reviewedWe propose an incremental method to find principal curves. Line segments are fitted and...
When confronted with massive data streams, summarizing data with dimension reduction methods such as...
We deal with the problem of curve fitting in more than one dimension. This is progressively becoming...
Often the relation between the variables constituting amultivariate data space might be characterize...
In this work, basic theory and some proposed developments to localised principal components and curv...
Principal components are a well established tool in dimension reduction. The extension to principal ...
Principal components are a well established tool in dimension reduction. The extension to principal ...
The subjects of this thesis are unsupervised learning in general, and principal curves in particular...
AbstractÐPrincipal curves have been defined as ªself-consistentº smooth curves which pass through th...
Principal curves have been defined as “self consistent ” smooth curves which pass through the “middl...
Frequently the predictor space of a multivariate regression problem of the type y = m(x_1, …, x_p ) ...
© 2011 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Principal curves are curves which pass throught the 'mid dle ' of a data cloud. They are s...
Abstract – Principal curves are nonlinear generalizations of the notion of first principal component...
AbstractPrincipal curves have been defined as smooth curves passing through the “middle” of a multid...
peer reviewedWe propose an incremental method to find principal curves. Line segments are fitted and...
When confronted with massive data streams, summarizing data with dimension reduction methods such as...
We deal with the problem of curve fitting in more than one dimension. This is progressively becoming...
Often the relation between the variables constituting amultivariate data space might be characterize...