R Fischer 2004 New J. Phys. 6 25 doi:10.1088/1367-2630/6/1/025
R Fischer
Show affiliationsA ubiquitous goal in plasma-enhanced chemical vapour deposition (PECVD) is to describe the correlation between film properties and categorical and quantitative input variables. The correlations within the high-dimensional parameter space are described using a multivariate model. Bayesian group analysis is employed to assess the grouping structures of the set of data vectors. This allows to identify sub-groups or meta-groups of predefined groups of data sets, e.g. with respect to source gases. Outliers can be identified by the necessity to form a separate group. The Bayesian approach consistently allows the handling of missing data. The grouping probabilities were compared with classical approaches such as likelihood ratio tests, the Akaike information criterion and a Bayesian variant called Bayesian information criterion. The method was applied to PECVD data of rare-earth oxide film deposition and hydrocarbon film deposition to study the evidence of grouping structures attributed to categorical quantities such as rare-earth components or source gases and quantitative variates such as bias voltage.
81.15.Gh Chemical vapor deposition (including plasma-enhanced CVD, MOCVD, etc.)
68.55.A- Nucleation and growth
02.50.-r Probability theory, stochastic processes, and statistics
Issue 1 (February 2004)
Received 17 December 2003
Published 19 February 2004
R Fischer 2004 New J. Phys. 6 25
P F Góra 2005 New J. Phys. 7 36
D Kim and R I Joseph 1974 J. Phys. C: Solid State Phys. 7 L167
C Schmid et al 2007 New J. Phys. 9 236
Susan Liao et al 2007 Bioinspir. Biomim. 2 37
G D Barrera et al 2005 J. Phys.: Condens. Matter 17 R217
H Debéda et al 1997 Meas. Sci. Technol. 8 99
M Perkin et al 1999 Metrologia 36 160
A S Carstea 2000 Nonlinearity 13 1645
Herbert G Winful 2006 New J. Phys. 8 101