David Peel
Hobart Corporation
72 Papers
518 Citations
David Peel is an academic researcher from Hobart Corporation. The author has contributed to research in topics: Mixture model & Breast cancer. The author has an hindex of 40, co-authored 71 publications. Previous affiliations of David Peel include University of California, Irvine & University of Queensland.
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Papers
•Book
Finite Mixture Models
Geoffrey J. McLachlan,David Peel +1 more
- 02 Oct 2000
TL;DR: The important role of finite mixture models in the statistical analysis of data is underscored by the ever-increasing rate at which articles on mixture applications appear in the mathematical and statistical literature.
9.3K
Finite mixture models: McLachlan/finite mixture models
Geoffrey J. McLachlan,David Peel +1 more
- 28 Jan 2005
TL;DR: The important role of finite mixture models in statistical analysis of data is underscored by the ever-increasing rate at which articles on mixture applications appear in the statistical and geospatial literature.
9.1K
NeEstimator v2: re-implementation of software for the estimation of contemporary effective population size (Ne ) from genetic data.
TL;DR: NeEstimator v2 includes three single‐sample estimators (updated versions of the linkage disequilibrium and heterozygote‐excess methods, and a new method based on molecular coancestry), as well as the two‐sample (moment‐based temporal) method.
1.9K
Robust mixture modelling using the t distribution
David Peel,Geoffrey J. McLachlan +1 more
TL;DR: The use of the ECM algorithm to fit this t mixture model is described and examples of its use are given in the context of clustering multivariate data in the presence of atypical observations in the form of background noise.
A mixture model-based approach to the clustering of microarray expression data
TL;DR: The usefulness of the EMMIX-GENE approach for the clustering of tissue samples is demonstrated on two well-known data sets on colon and leukaemia tissues, and relevant subsets of the genes are able to be selected that reveal interesting clusterings of the tissues that are either consistent with the external classified tissues or with background and biological knowledge of these sets.