When confronted with massive data streams, summarizing data with dimension reduction methods such as PCA raises theoretical and algorithmic pitfalls. Principal curves act as a nonlinear generalization of PCA and the present paper proposes a novel algorithm to automatically and sequentially learn principal curves from data streams. We show that our procedure is supported by regret bounds with optimal sublinear remainder terms. A greedy local search implementation (called \texttt{slpc}, for Sequential Learning Principal Curves) that incorporates both sleeping experts and multi-armed bandit ingredients is presented, along with its regret computation and performance on synthetic and real-life data
Frequently the predictor space of a multivariate regression problem of the type y = m(x_1, …, x_p ) ...
© 2017 IEEE. Many scientific datasets are of high dimension, and the analysis usually requires retai...
Principal curves and manifolds provide a framework to formulate manifold learning within a statistic...
When confronted with massive data streams, summarizing data with dimension reduction methods such as...
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...
The subjects of this thesis are unsupervised learning in general, and principal curves in particular...
peer reviewedWe propose an incremental method to find principal curves. Line segments are fitted and...
Principal curves are nonlinear generalizations of the notion of first principal component. Roughly, ...
Principal curves are parameterized curves passing "through the middle" of a data cloud. These object...
© . This manuscript version is made available under the CC-BY-NC-ND 4.0 license http://creativecommo...
AbstractPrincipal curves have been defined as smooth curves passing through the “middle” of a multid...
Principal curves have been defined as “self consistent ” smooth curves which pass through the “middl...
Principal components are a well established tool in dimension reduction. The extension to principal ...
Abstract – Principal curves are nonlinear generalizations of the notion of first principal component...
Frequently the predictor space of a multivariate regression problem of the type y = m(x_1, …, x_p ) ...
© 2017 IEEE. Many scientific datasets are of high dimension, and the analysis usually requires retai...
Principal curves and manifolds provide a framework to formulate manifold learning within a statistic...
When confronted with massive data streams, summarizing data with dimension reduction methods such as...
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...
The subjects of this thesis are unsupervised learning in general, and principal curves in particular...
peer reviewedWe propose an incremental method to find principal curves. Line segments are fitted and...
Principal curves are nonlinear generalizations of the notion of first principal component. Roughly, ...
Principal curves are parameterized curves passing "through the middle" of a data cloud. These object...
© . This manuscript version is made available under the CC-BY-NC-ND 4.0 license http://creativecommo...
AbstractPrincipal curves have been defined as smooth curves passing through the “middle” of a multid...
Principal curves have been defined as “self consistent ” smooth curves which pass through the “middl...
Principal components are a well established tool in dimension reduction. The extension to principal ...
Abstract – Principal curves are nonlinear generalizations of the notion of first principal component...
Frequently the predictor space of a multivariate regression problem of the type y = m(x_1, …, x_p ) ...
© 2017 IEEE. Many scientific datasets are of high dimension, and the analysis usually requires retai...
Principal curves and manifolds provide a framework to formulate manifold learning within a statistic...