Papers on Model-Based Clustering, Spatial Point Patterns
and Image Segmentation
Note: The Technical Reports are from the Department of Statistics,
University of Washington, unless otherwise stated.
Review paper
Research papers
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The Mixture Transition Distribution (MTD) Model for High-Order Markov Chains and
Non-Gaussian Time Series.
Andre Berchtold and Adrian E. Raftery.
Technical Report no. 360. August 1999.
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Detecting Mines in Minefields with Linear Characteristics.
Daniel Walsh and Adrian E. Raftery.
Technical Report no. 359. August 1999.
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MCLUST: Software for Model-Based Cluster Analysis.
Chris Fraley and Adrian E. Raftery.
Technical Report no. 342. February 1998. A revised and shortened
version is to appear in the Journal of Classification
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Algorithms for Model-Based Gaussian Hierarchical Clustering.
Chris Fraley.
Technical Report no. 311. February 1998.
A later version appeared in the
SIAM Journal on Scientific Computing 20(1998):270-281.
- Model-Based Methods for Real-Time Textile Fault Detection.
J. G. Campbell, C. Fraley, D. Stanford, F. Murtagh and A. E. Raftery.
to appear in International Journal of Imaging Science and Technology.
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Three types of gamma-ray bursts.
Soma Mukherjee, Eric D. Feigelson, Gutti Jogesh Babu, Fionn Murtagh,
Chris Fraley, Adrian Raftery.
Working Paper, Department of Astronomy and Astrophysics, Penn State
University. February 1998. A later version appeared in the
Astrophysical Journal 508(1998):314-327.
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Bayesian Estimation and Segmentation of Spatial Point Processes using
Voronoi Tilings.
Simon D. Byers and Adrian E. Raftery.
Technical Report no. 326, December 1997.
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Bayesian morphology: Fast unsupervised Bayesian image analysis.
Florence Forbes and Adrian E. Raftery.
Technical Report no. 325, December 1997.
A later, shortened version is to appear in
Journal of the American Statistical Association, June 1999.
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Principal Curve Clustering with Noise.
Derek Stanford and Adrian E. Raftery.
Technical Report no. 317, February 1997. A later version is to appear in
IEEE Transactions on Pattern Analysis and Machine Intelligence.
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Non-parametric Maximum Likelihood Estimation of Features in Spatial Point
Processes Using Voronoi Tesselation (revised version).
Denis Allard and Chris Fraley.
Technical Report no. 293R, December 1996.
A revised version appeared in Journal of the American Statistical
Association 92(1997):1485-1493.
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Linear Flaw Detection in Woven Textiles using Model-Based Clustering.
John G. Campbell, Chris Fraley, Fionn Murtagh and Adrian E. Raftery.
Technical Report no. 314, July 1996.
A revised version appeared in Pattern Recognition Letters:
18(1997):1539-1548.
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Algorithms for Model-Based Gaussian Hierarchical Clustering.
Chris Fraley. Technical Report no. 311. October 1996.
A revised version will appear in SIAM Journal on Scientific Computing.
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Nearest Neighbor Clutter Removal for Estimating Features in
Spatial Point Processes.
Simon Byers and Adrian E. Raftery. Technical Report no. 305. April 1996.
A revised version appeared in Journal of the American Statistical
Association in June 1998.
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Detecting Features in Spatial Point Processes with Clutter via Model-Based
Clustering.
Abhijit Dasgupta and Adrian Raftery.
Technical Report no. 295, October 1995.
A revised version appeared in Journal of the American Statistical
Association 93(1998):294-302.
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Non-parametric Maximum Likelihood Estimation of Features in Spatial Point
Processes Using Voronoi Tesselation.
Denis Allard.
Technical Report no. 293, August 1995.
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Inference in Model-Based Cluster Analysis.
Halima Bensmail, Gilles Celeux, Adrian E. Raftery and Christian P. Robert.
Technical Report no. 285, March 1995.
A revised version appeared
in Statistics and Computing 7(1997):1-10.
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Regularized Gaussian Discriminant Analysis through Eigenvalue
Decomposition.
Halima Bensmail and Gilles Celeux.
Technical Report no. 278, August 1994. A revised version appeared in
Journal of the American Statistical Association, December 1996.
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