Classification and Discriminant Analysis: Difference between revisions

From Eigenvector Research Documentation Wiki
Jump to navigation Jump to search
 
Line 4: Line 4:
:[[analysis]] - Graphical user interface for data analysis.
:[[analysis]] - Graphical user interface for data analysis.
:[[knn]] - K-nearest neighbor classifier.
:[[knn]] - K-nearest neighbor classifier.
:[[lada]] - Linear Discriminant Analysis.  
:[[lda]] - Linear Discriminant Analysis.  
:[[plsda]] - Partial least squares discriminant analysis.
:[[plsda]] - Partial least squares discriminant analysis.
:[[lregda]] - Predictions based on Logistic Regression (LREGDA) classification models.
:[[lregda]] - Predictions based on Logistic Regression (LREGDA) classification models.

Latest revision as of 09:17, 8 December 2023

These methods help separate samples into classes and develop models which can be used to predict which class a new sample belongs to.

Top-Level Classification / Discriminant Analysis Tools

analysis - Graphical user interface for data analysis.
knn - K-nearest neighbor classifier.
lda - Linear Discriminant Analysis.
plsda - Partial least squares discriminant analysis.
lregda - Predictions based on Logistic Regression (LREGDA) classification models.
simca - Soft Independent Method of Class Analogy.
svmda - SVM Support Vector Machine for classification.

Model Analysis and Calculation Utilities

confusionmatrix - Create a confusion matrix.
confusiontable - Create a confusion table.
class2logical - Create a PLSDA logical block from class assignments.
discrimprob - Discriminate probabilities for continuous predicted values.
plsdaroc - Calculate and display ROC curves for PLSDA model.
plsdthres - Bayesian threshold determination for PLS Discriminate Analysis.


(Sub topic of PLS_Toolbox_Topics)