Effect of templateSV​M('Standar​dize',true​);

조회 수: 4 (최근 30일)
Mustafa Sami
Mustafa Sami 2020년 3월 30일
댓글: c 2020년 10월 2일
Dear all,
Is there any documentation that explains the advantage of using
t = templateSVM('Standardize',true)
when using
classifier = fitcecoc(featuresTrain,YTrain,'Learners',t);
Because in my case it provides a better classification result, but need to understand some basics on how it works.
Any comment is appreciated.
Meshoo
  댓글 수: 3
c
c 2020년 10월 2일
%% template = templateSVM('Standardize',true)
% 'BoxConstraint' — 1 (default)
% 'CacheSize' — 1000 (default)
% 'ClipAlphas' — true (default)
% 'DeltaGradientTolerance' — 0 if the solver is ISDA (for example, you set 'Solver','ISDA')
% 'GapTolerance' -0 (default)
% 'IterationLimit' — 1e6 (default)
% 'KernelFunction' — 'linear' Linear kernel, default for two-class learning
% 'KernelOffset' -0.1 if the solver is ISDA (that is, you set 'Solver','ISDA')
% 'KernelScale' — 1 (default)
% 'KKTTolerance' — Karush-Kuhn-Tucker complementarity conditions violation tolerance
% 1e-3 if the solver is ISDA (for example, you set 'Solver','ISDA')
% 'NumPrint' — 1000 (default)
% 'OutlierFraction' —0 (default)
% 'SaveSupportVectors' —true (default) Store support vectors, their labels, and the estimated α coefficients
% 'ShrinkagePeriod' — 0 (default)
% 'Solver' — The default value is 'ISDA'
% 'Standardize' — false (default)
% 'Verbose' — 0 (default)
c
c 2020년 10월 2일
template = templateSVM('Standardize',true)-->
it means using all the default values.

댓글을 달려면 로그인하십시오.

답변 (0개)

카테고리

Help CenterFile Exchange에서 Classification Ensembles에 대해 자세히 알아보기

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by