Scalable parallel algorithms for predictive modelling
Date
Authors
Christen, P.
Hegland, M.
Nielsen, O.
Roberts, S.
Altas, I.
Journal Title
Journal ISSN
Volume Title
Publisher
Access Statement
Abstract
Data Mining applications have to deal with increasingly large data sets and complexity. Only algorithms which scale linearly with data size are feasible. We present parallel regression algorithms which after a few initial scans of the data compute predictive models for data mining and do not require further access to the data. In addition, we describe various ways of dealing with the complexity (high dimensionality) of the data. Three methods are presented for three different ranges of attribute numbers. They use ideas from the finite element method and are based on penalised least squares fits using sparse grids and additive models for intermediate and very high dimensional data. Computational experiments confirm scalability both with respect to data size and number of processors.
Description
Keywords
Citation
Collections
Source
Management Information Systems
Type
Book Title
Entity type
Publication