EVRI-thing You Need to Know About Preprocessing
May 18, 2021
Preprocessing, what you do to data before it goes into a regression or machine learning model, is often the key to modeling success. In this webinar professor Rasmus Bro will demonstrate the great many types of preprocessing that you can do with Eigenvector’s MATLAB based PLS_Toolbox or stand-alone Solo software. You’ll learn how you can combine preprocessing methods in various ways to remove all sorts of artifacts from your data.
Table of Contents
00:00 – Introduction and Notes
04:45 – Reasons to use Preprocessing
07:34 – Preprocessing Example with Mean Centering
12:00 – Preprocessing Example with Autoscale
13:06 – Preprocessing Menu and Show function
19:11 – Preprocessing Example with chromatography data (Autoscale, Pareto, Poisson Scaling, Mean Centering
26:43 – Variable Alignment (COW, Peak Alignment)
29:41 – Preprocessing Example with Arithmetic Operations
34:17 – Preprocessing Example with NIR data and Standard Normal Variate (SNV) and Polynomial and Cross-term transformations
39:08 – iPLS variable selection
44:54 – Orthogonalization Filters and Clutter
46:59 – External Parameter Orthogonalization
48:00 – GLSW – Generalized Least Squares Weighting and OSC
49:30 – Preprocessing Example with Declutter settings
54:44 – Example with Raman Data and Baseline removal
57:10 – Scatter Correction Methods
1:07:00 – Conclusion and Online Resources