Spectral feature variable selection and optimization method based on stacking integration framework
A variable selection and spectral feature technology, applied in the field of spectral feature variable selection and optimization based on the Stacking integration framework, to avoid premature convergence, good stability, and easy to fall into local optimum.
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[0059] Such as figure 1 As shown, the spectral feature variable selection and optimization method based on the Stacking integration framework includes the following steps,
[0060] Step 1: Configure multiple ethanol samples with a predetermined concentration range, and obtain each sample with a thickness of 12000-4000 cm -1 Near-infrared spectral information in the wavenumber range, the sample is divided into a training sample set and a test sample set in proportion;
[0061] Step 2: Select representative SiPLS, UVE, and PSO from the categories of variable interval selection method, variable information selection method, and variable optimization selection method;
[0062] Step 3: Use the feature variable selection method selected in step 2 to construct three base learners, and use the Stacking integration framework to integrate the base learners to build a meta-learner. The meta-learner uses a non-linear support vector regression method to learn the basic The output of the ...
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