reset
Syntax
Description
forest = reset(
returns the
incremental robust random cut forest (RRCF) model forest
)forest
with reset
learned parameters. If any hyperparameters of forest
are estimated
during incremental training, the reset
function resets these
hyperparameters as well. reset
always preserves the
forest.NumPredictors
property.
Examples
Reset Incremental RRCF Model
Create a default RRCF model for incremental anomaly detection. Specify to use 50 robust random cut trees and to standardize the predictor data. Reset the model after incremental training and see which parameters are reset.
IncrementalMdl = incrementalRobustRandomCutForest(NumLearners=50, ...
StandardizeData=true);
IncrementalMdl
is an incrementalRobustRandomCutForest
model object. All its properties are read-only. By default, the software sets the anomaly contamination fraction to 0 and the score threshold to 0.
IncrementalMdl
must be fit to data before you can use it to perform any other operations.
Load Data
Load the 1994 census data stored in census1994.mat
. The data set consists of demographic data from the US Census Bureau.
load census1994.mat
The fit
function of incrementalRobustRandomCutForest
does not use observations with missing values. Remove missing values and categorical variables in the data to reduce memory consumption and speed up training. Use only the first 5000 observations in the data for training and anomaly detection.
adultdata = rmmissing(adultdata); adultdata = removevars(adultdata,["workClass","education","marital_status", ... "occupation","relationship","race","sex","native_country","salary"]); adultdata = adultdata(1:5000,:); rng("default") % For reproducibility
Fit Incremental Model
Fit the incremental model IncrementalMdl
to the data by using the fit
function. To simulate a data stream, fit the model in chunks of 100 observations at a time. At each iteration:
Process 100 observations.
Overwrite the previous incremental model with a new one fitted to the incoming observations.
n = numel(adultdata(:,1)); numObsPerChunk = 100; nchunk = floor(n/numObsPerChunk); % Incremental fitting rng("default"); % For reproducibility for j = 1:nchunk ibegin = min(n,numObsPerChunk*(j-1) + 1); iend = min(n,numObsPerChunk*j); idx = ibegin:iend; IncrementalMdl = fit(IncrementalMdl,adultdata(idx,:)); end
Display all the properties of the trained model object IncrementalMdl
.
details(IncrementalMdl)
incrementalRobustRandomCutForest with properties: CollusiveDisplacement: 'maximal' NumLearners: 50 NumObservationsPerLearner: 256 ObservationRemoval: 'oldest' NumObservationsToKeep: 256 Mu: [37.9400 1.9217e+05 10.1980 567.7170 102.5340 40.7060] Sigma: [12.8905 1.0789e+05 2.5006 2.4309e+03 431.7485 11.7970] CategoricalPredictors: [] EstimationPeriod: 1000 IsWarm: 1 ContaminationFraction: 0 NumTrainingObservations: 4000 NumPredictors: 6 ScoreThreshold: 176.3187 ScoreWarmupPeriod: 0 PredictorNames: {'age' 'fnlwgt' 'education_num' 'capital_gain' 'capital_loss' 'hours_per_week'} ScoreWindowSize: 1000
Reset Incremental Model
Reset the learned parameters by using the reset
function, and compare them to the previous model to see which parameters are reset.
newMdl = reset(IncrementalMdl); details(newMdl)
incrementalRobustRandomCutForest with properties: CollusiveDisplacement: 'maximal' NumLearners: 50 NumObservationsPerLearner: 256 ObservationRemoval: 'oldest' NumObservationsToKeep: 256 Mu: [0 0 0 0 0 0] Sigma: [1 1 1 1 1 1] CategoricalPredictors: [] EstimationPeriod: 1000 IsWarm: 0 ContaminationFraction: 0 NumTrainingObservations: 0 NumPredictors: 6 ScoreThreshold: 0 ScoreWarmupPeriod: 0 PredictorNames: {'age' 'fnlwgt' 'education_num' 'capital_gain' 'capital_loss' 'hours_per_week'} ScoreWindowSize: 1000
The
reset
function resets the warm-up status of the model (IsWarm
= 0), the score threshold, the number of training observations, and the estimated hyperparameters (Mu
and Sigma
).
Input Arguments
forest
— Incremental RRCF model
incrementalRobustRandomCutForest
model object
Incremental RRCF model, specified as an
incrementalRobustRandomCutForest
model object. You can
create forest
directly or by converting a supported,
traditionally trained RRCF model using the incrementalLearner
function. For more details, see the incrementalRobustRandomCutForest
object page.
Version History
Introduced in R2023b
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