ReconstructionICA
Feature extraction by reconstruction ICA
Description
ReconstructionICA applies reconstruction
            independent component analysis (RICA) to learn a transformation that maps input
            predictors to new predictors.
Creation
Create a ReconstructionICA object by using the
                rica function.
Properties
This property is read-only.
Fitting history, returned as a structure with two fields:
- Iteration— Iteration numbers from 0 through the final iteration.
- Objective— Objective function value at each corresponding iteration. Iteration 0 corresponds to the initial values, before any fitting.
Data Types: struct
This property is read-only.
Initial feature transformation weights, returned as a
                p-by-q matrix, where p is the number of predictors passed in X and
                q is the number of features that you want. These weights are the
            initial weights passed to the creation function. The data type is single when the
            training data X is single.
Data Types: single | double
This property is read-only.
Parameters for training the model, returned as a structure. The structure
                        contains a subset of the fields that correspond to the rica name-value pairs that were
                        in effect during model creation:
- IterationLimit
- VerbosityLevel
- Lambda
- Standardize
- ContrastFcn
- GradientTolerance
- StepTolerance
For details, see the rica
                        Name,Value pairs.
Data Types: struct
This property is read-only.
Predictor means when standardizing, returned as a
                p-by-1 vector. This property is nonempty when
            the Standardize name-value pair is
                true at model creation. The value is the vector of predictor
            means in the training data. The data type is single when the training data
                X is single.
Data Types: single | double
This property is read-only.
Non-Gaussianity of sources, returned as a length-q
                        vector of ±1.
- NonGaussianityIndicator(k) = 1means- ricamodels the- kth source as sub-Gaussian.
- NonGaussianityIndicator(k) = -1means- ricamodels the- kth source as super-Gaussian, with a sharp peak at 0.
Data Types: double
This property is read-only.
Number of output features, returned as a positive integer. This value is
                        the q argument passed to
                        the creation function, which is the requested number of features to
                        learn.
Data Types: double
This property is read-only.
Number of input predictors, returned as a positive integer. This value is
                        the number of predictors passed in X to the creation
                        function.
Data Types: double
This property is read-only.
Predictor standard deviations when standardizing, returned as a
                p-by-1 vector. This property is nonempty when
            the Standardize name-value pair is
                true at model creation. The value is the vector of predictor
            standard deviations in the training data. The data type is single when the training data
                X is single.
Data Types: single | double
This property is read-only.
Feature transformation weights, returned as a
                p-by-q matrix, where p is the number of predictors passed in X and
                q is the number of features that you want. The data type is
            single when the training data X is single.
Data Types: single | double
Object Functions
| transform | Transform predictors into extracted features | 
Examples
Create a ReconstructionICA object by using the rica function.
Load the SampleImagePatches image patches.
data = load('SampleImagePatches');
size(data.X)ans = 1×2
        5000         363
There are 5,000 image patches, each containing 363 features.
Extract 100 features from the data.
rng default % For reproducibility q = 100; Mdl = rica(data.X,q,'IterationLimit',100)
Warning: Solver LBFGS was not able to converge to a solution.
Mdl = 
  ReconstructionICA
            ModelParameters: [1×1 struct]
              NumPredictors: 363
         NumLearnedFeatures: 100
                         Mu: []
                      Sigma: []
                    FitInfo: [1×1 struct]
           TransformWeights: [363×100 double]
    InitialTransformWeights: []
    NonGaussianityIndicator: [100×1 double]
  Properties, Methods
rica issues a warning because it stopped due to reaching the iteration limit, instead of reaching a step-size limit or a gradient-size limit. You can still use the learned features in the returned object by calling the transform function.
Version History
Introduced in R2017a
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