Cd. Brown et Pd. Wentzell, Hazards of digital smoothing filters as a preprocessing tool in multivariate calibration, J CHEMOMETR, 13(2), 1999, pp. 133-152
The efficacy of smoothing first-order data as a preprocessing method for mu
ltivariate calibration is discussed. In particular, the use of symmetric sm
oothing filters (such as Savitzky-Golay filters) is examined from the persp
ective of calibration performance, in contrast with past studies based on u
nivariate signal-to-noise improvement. It is shown mathematically that in t
he limit of a perfect calibration model (i.e. all the errors derive from th
e measurement uncertainty in the unknown sample), no gains in multivariate
calibration performance can be made by the application of symmetric smoothi
ng filters. The proof is corroborated by simulated multivariate calibration
procedures, namely principal component regression (PCR). Real experimental
data are also used, yielding similarly supportive evidence in favor of the
theoretical result. On occasion, marginal performance enhancements (less t
han a factor of two) are observed in both the simulated and real data. The
conditions under which these enhancements are likely to occur are discussed
. The recently introduced multivariate calibration technique of maximum lik
elihood PCR (MLPCR) is also applied using the measurement error covariance
information determined from the applied filter matrix. MLPCR is shown to be
invariant in calibration performance, even under extreme filtering conditi
ons. Copyright (C) 1999 John Wiley & Sons, Ltd.