Hi all!
I'm working with Principal Component Analysis of spectral (FTIR) data. For that, I'm using the Functional Data Explorer Platform. I have a few questions about the results loaded after analysis:
1. What would be the criteria to identify which model is best? Diagnostic plots vs Eigenvalues
Before doing PCA, I'm fitting some models (B-spline, P-spline and direct functional PCA) to see which would be a better fit to my data.
As you know, the software launches diagnostic plots of the model and of the PCA. For P-spline, I believe I have slightly better diagnostic plots than direct PCA (kindly refer to the ppt file attached), but, my 2 Principal Components only explain 78% of the variation, whereas with direct PCA my 2 PC explain 99%. So, I'm doubtful on how to decide which is best?
2. Are shape functions the same as loading plots?
Direct PCA shape function:
P Spline shape function:
I'd like to check if my interpretation is correct. I believe shape functions are the loading plots for my PCA analysis, right? Is it ok to say that shape function 1 and 2 explain the wavenumbers that had the highest contribution on my PCA grouping?
And just for my curiosity.... is there any reason that shape functions for P spline look kinda "dented" whereas for B spline and direct PCA they look smooth?
Thank you!