Hmac: Difference between revisions
Line 9: | Line 9: | ||
===Synopsis=== | ===Synopsis=== | ||
: | : hmacInstance = Hmac(); | ||
: | : hmacInstance = hmacInstance.setX(x); | ||
: | : hmacInstance = hmacInstance.setY(y); | ||
: | : options = hmacInstance.getOptions; | ||
: | : hmacInstance = hmacInstance.setOptions(options); | ||
: | : hmacInstance = hmacInstance.calibrate; | ||
: modelselectorgui(hmacInstance.model); | : modelselectorgui(hmacInstance.model); | ||
Revision as of 08:19, 6 January 2023
Purpose
Hierarchical Model Automatic Classifier. Creates a decision tree of PLSDA models calibrated on classification data following the AHIMBU method (Marchi et al., 2022).
See more about Modelselector models Modelselector. Build Modelselector models in our Hierarchical Model Builder interface.
See Automatic Hierarchical Model Classification to use Hmac in the Hierarchical Model Builder interface.
Synopsis
- hmacInstance = Hmac();
- hmacInstance = hmacInstance.setX(x);
- hmacInstance = hmacInstance.setY(y);
- options = hmacInstance.getOptions;
- hmacInstance = hmacInstance.setOptions(options);
- hmacInstance = hmacInstance.calibrate;
- modelselectorgui(hmacInstance.model);
Description
Build a Modelselector model from input dataset X, or input X and Y if classes are not already supplied in the X dataset. Each node in the resulting Modelselector model will be a PLSDA model that was calibrated on all or, most likely, a subset of classes. This works by peeling off one or a few classes at a time and creating a PLSDA model for each split. The algorithm is completed when all classes are accounted for or there is perfect classification.
Inputs
- x = X-block (predictor block) class "double" or "dataset", containing numeric values,
- y = Y-block (optional) class "double" sample class values,
- options = an optional input options structure (see below)
Outputs
- hmac = an object of class Hmac, contains 'model' field which is the resulting Modelselector model.
Cross-validation
Cross-validation can be applied to each PLSDA node model. The CV settings are the same for each node, the default being Venetian Blinds, 10 splits, and 1 Sample per blind.
From the Hierarchical Model Builder interface, customize the CV settings by clicking on the Cross-Validation 'Set' button in the Hmac interface.
Preprocessing
Like the Cross-Validation options, the X-block preprocessing settings will be the same across all of the potential PLSDA models in the final Modelselector model.
Options
options = a structure array with the following fields:
- classset : [ {1} ], Indicates which class set in x to use when no y-block is provided,
- maxlvs: [ {6} ] Maximum number of latent variables to use in crossval (see crossval),
- cvopts : struct of cross-validation options, including preprocessing at each node in the modelselector model. See here for all available options,
- cvi : [{'vet' 10 1}] Standard cross-validation cell (see crossval) defining a split method, number of splits, and number of iterations. This cross-validation is for splitting each class or subclasses in the ahimbu algorithm.
See Also
Modelselector, Hierarchical Model Builder, analysis, crossval, preprocess, EVRIModel_Objects