We analyse synthetic galaxy spectra from the evolutionary models of
Bruzual&Charlot and Fioc&Rocca-Volmerange using the method of Principal
Component Analysis (PCA). We explore synthetic spectra with different ages,
star formation histories and metalicities, and identify the Principal
Components (PCs) of variance in the spectra due to these different model
parameters. The PCA provides a more objective and informative alternative to
diagnostics by individual spectral lines. We discuss how the PCs can be used to
estimate the input model parameters and explore the impact of noise in this
inverse problem. We also discuss how changing the sampling of the ages and
other model parameters affects the resulting PCs. Our first two synthetic PCs
agree with a similar analysis on observed spectra obtained by Kennicutt and the
2dF redshift survey. We conclude that with a good enough signal-to-noise (S/N>>
10) it is possible to derive age, star formation history and metallicity from
observed galaxy spectra using PCA.Comment: 11 pages, 17 figures, submitted to MNRA