Nonlinear Estimation and Classification [electronic resource] /

Researchers in many disciplines face the formidable task of analyzing massive amounts of high-dimensional and highly-structured data. This is due in part to recent advances in data collection and computing technologies. As a result, fundamental statistical research is being undertaken in a variety of different fields. Driven by the complexity of these new problems, and fueled by the explosion of available computer power, highly adaptive, non-linear procedures are now essential components of modern "data analysis," a term that we liberally interpret to include speech and pattern recognition, classification, data compression and signal processing. The development of new, flexible methods combines advances from many sources, including approximation theory, numerical analysis, machine learning, signal processing and statistics. The proposed workshop intends to bring together eminent experts from these fields in order to exchange ideas and forge directions for the future.

Saved in:
Bibliographic Details
Main Authors: Denison, David D. editor., Hansen, Mark H. editor., Holmes, Christopher C. editor., Mallick, Bani. editor., Yu, Bin. editor., SpringerLink (Online service)
Format: Texto biblioteca
Language:eng
Published: New York, NY : Springer New York : Imprint: Springer, 2003
Subjects:Statistics., Statistical Theory and Methods.,
Online Access:http://dx.doi.org/10.1007/978-0-387-21579-2
Tags: Add Tag
No Tags, Be the first to tag this record!
id KOHA-OAI-TEST:204164
record_format koha
institution COLPOS
collection Koha
country México
countrycode MX
component Bibliográfico
access En linea
En linea
databasecode cat-colpos
tag biblioteca
region America del Norte
libraryname Departamento de documentación y biblioteca de COLPOS
language eng
topic Statistics.
Statistics.
Statistical Theory and Methods.
Statistics.
Statistics.
Statistical Theory and Methods.
spellingShingle Statistics.
Statistics.
Statistical Theory and Methods.
Statistics.
Statistics.
Statistical Theory and Methods.
Denison, David D. editor.
Hansen, Mark H. editor.
Holmes, Christopher C. editor.
Mallick, Bani. editor.
Yu, Bin. editor.
SpringerLink (Online service)
Nonlinear Estimation and Classification [electronic resource] /
description Researchers in many disciplines face the formidable task of analyzing massive amounts of high-dimensional and highly-structured data. This is due in part to recent advances in data collection and computing technologies. As a result, fundamental statistical research is being undertaken in a variety of different fields. Driven by the complexity of these new problems, and fueled by the explosion of available computer power, highly adaptive, non-linear procedures are now essential components of modern "data analysis," a term that we liberally interpret to include speech and pattern recognition, classification, data compression and signal processing. The development of new, flexible methods combines advances from many sources, including approximation theory, numerical analysis, machine learning, signal processing and statistics. The proposed workshop intends to bring together eminent experts from these fields in order to exchange ideas and forge directions for the future.
format Texto
topic_facet Statistics.
Statistics.
Statistical Theory and Methods.
author Denison, David D. editor.
Hansen, Mark H. editor.
Holmes, Christopher C. editor.
Mallick, Bani. editor.
Yu, Bin. editor.
SpringerLink (Online service)
author_facet Denison, David D. editor.
Hansen, Mark H. editor.
Holmes, Christopher C. editor.
Mallick, Bani. editor.
Yu, Bin. editor.
SpringerLink (Online service)
author_sort Denison, David D. editor.
title Nonlinear Estimation and Classification [electronic resource] /
title_short Nonlinear Estimation and Classification [electronic resource] /
title_full Nonlinear Estimation and Classification [electronic resource] /
title_fullStr Nonlinear Estimation and Classification [electronic resource] /
title_full_unstemmed Nonlinear Estimation and Classification [electronic resource] /
title_sort nonlinear estimation and classification [electronic resource] /
publisher New York, NY : Springer New York : Imprint: Springer,
publishDate 2003
url http://dx.doi.org/10.1007/978-0-387-21579-2
work_keys_str_mv AT denisondaviddeditor nonlinearestimationandclassificationelectronicresource
AT hansenmarkheditor nonlinearestimationandclassificationelectronicresource
AT holmeschristopherceditor nonlinearestimationandclassificationelectronicresource
AT mallickbanieditor nonlinearestimationandclassificationelectronicresource
AT yubineditor nonlinearestimationandclassificationelectronicresource
AT springerlinkonlineservice nonlinearestimationandclassificationelectronicresource
_version_ 1756267937208991744
spelling KOHA-OAI-TEST:2041642018-07-30T23:32:48ZNonlinear Estimation and Classification [electronic resource] / Denison, David D. editor. Hansen, Mark H. editor. Holmes, Christopher C. editor. Mallick, Bani. editor. Yu, Bin. editor. SpringerLink (Online service) textNew York, NY : Springer New York : Imprint: Springer,2003.engResearchers in many disciplines face the formidable task of analyzing massive amounts of high-dimensional and highly-structured data. This is due in part to recent advances in data collection and computing technologies. As a result, fundamental statistical research is being undertaken in a variety of different fields. Driven by the complexity of these new problems, and fueled by the explosion of available computer power, highly adaptive, non-linear procedures are now essential components of modern "data analysis," a term that we liberally interpret to include speech and pattern recognition, classification, data compression and signal processing. The development of new, flexible methods combines advances from many sources, including approximation theory, numerical analysis, machine learning, signal processing and statistics. The proposed workshop intends to bring together eminent experts from these fields in order to exchange ideas and forge directions for the future.I Longer Papers -- 1 Wavelet Statistical Models and Besov Spaces -- 2 Coarse-to-Fine Classification and Scene Labeling -- 3 Environmental Monitoring Using a Time Series of Satellite Images and Other Spatial Data Sets -- 4 Traffic Flow on a Freeway Network -- 5 Internet Traffic Tends Toward Poisson and Independent as the Load Increases -- 6 Regression and Classification with Regularization -- 7 Optimal Properties and Adaptive Tuning of Standard and Nonstandard Support Vector Machines -- 8 The Boosting Approach to Machine Learning: An Overview -- 9 Improved Class Probability Estimates from Decision Tree Models -- 10 Gauss Mixture Quantization: Clustering Gauss Mixtures -- 11 Extended Linear Modeling with Splines -- II Shorter Papers -- 12 Adaptive Sparse Regression -- 13 Multiscale Statistical Models -- 14 Wavelet Thresholding on Non-Equispaced Data -- 15 Multi-Resolution Properties of Semi-Parametric Volatility Models -- 16 Confidence Intervals for Logspline Density Estimation -- 17 Mixed-Effects Multivariate Adaptive Splines Models -- 18 Statistical Inference for Simultaneous Clustering of Gene Expression Data -- 19 Statistical Inference for Clustering Microarrays -- 20 Logic Regression — Methods and Software -- 21 Adaptive Kernels for Support Vector Classification -- 22 Generalization Error Bounds for Aggregate Classifiers -- 23 Risk Bounds for CART Regression Trees -- 24 On Adaptive Estimation by Neural Net Type Estimators -- 25 Nonlinear Function Learning and Classification Using RBF Networks with Optimal Kernels -- 26 Instability in Nonlinear Estimation and Classification: Examples of a General Pattern -- 27 Model Complexity and Model Priors -- 28 A Strategy for Compression and Analysis of Very Large Remote Sensing Data Sets -- 29 Targeted Clustering of Nonlinearly Transformed Gaussians -- 30 Unsupervised Learning of Curved Manifolds -- 31 ANOVA DDP Models: A Review.Researchers in many disciplines face the formidable task of analyzing massive amounts of high-dimensional and highly-structured data. This is due in part to recent advances in data collection and computing technologies. As a result, fundamental statistical research is being undertaken in a variety of different fields. Driven by the complexity of these new problems, and fueled by the explosion of available computer power, highly adaptive, non-linear procedures are now essential components of modern "data analysis," a term that we liberally interpret to include speech and pattern recognition, classification, data compression and signal processing. The development of new, flexible methods combines advances from many sources, including approximation theory, numerical analysis, machine learning, signal processing and statistics. The proposed workshop intends to bring together eminent experts from these fields in order to exchange ideas and forge directions for the future.Statistics.Statistics.Statistical Theory and Methods.Springer eBookshttp://dx.doi.org/10.1007/978-0-387-21579-2URN:ISBN:9780387215792