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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.

Active Publication Date: 2021-02-19
CHINA THREE GORGES UNIV
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  • Abstract
  • Description
  • Claims
  • Application Information

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Problems solved by technology

[0007] The purpose of the present invention is to solve the above problems, propose a spectral feature variable selection and optimization method based on the Stacking integration framework, overcome the defect of a single feature variable selection method, and improve prediction accuracy

Method used

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  • Spectral feature variable selection and optimization method based on stacking integration framework
  • Spectral feature variable selection and optimization method based on stacking integration framework
  • Spectral feature variable selection and optimization method based on stacking integration framework

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Embodiment Construction

[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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Abstract

The invention discloses a spectral characteristic variable selection and optimization method based on the Stacking integration framework, including constructing a sample set, dividing the sample set into a training sample set and a test sample set; in the variable interval selection method, the variable information selection method, and the variable optimization selection method Select a representative feature variable selection method from the large category; build multiple base learners, use the Stacking integration framework to integrate the base learners, build a meta-learner, and use the output of the base learner as the input of the meta-learner; use The sample set trains and tests the base learner and meta-learner of the Stacking integration framework; the spectrum information to be detected is input into the base learner, and the detection result of the spectrum to be detected is obtained according to the output of the meta-learner. The spectral characteristic variable selection and optimization method based on the Stacking integration framework of the present invention overcomes the defect of a single characteristic variable selection method, has high detection accuracy for test samples, and has good stability of detection results.

Description

technical field [0001] The invention belongs to the field of spectral analysis, and in particular relates to a method for selecting and optimizing spectral characteristic variables based on a Stacking integration framework. Background technique [0002] According to the definition of the American Society for Testing and Materials Testing, the NIR (Near Infrared) region of the near-infrared spectrum refers to electromagnetic waves with a wavelength in the range of 780-2526nm. It belongs to the double frequency and main frequency absorption spectrum of the molecular vibration spectrum, and the near-infrared spectrum is mainly generated when the molecular vibration transitions from the ground state to a high energy level due to the anharmonic nature of the molecular vibration. The near-infrared spectral region is consistent with the combined frequency of vibrations of hydrogen-containing groups (O-H, N-H, C-H) in organic molecules and the absorption regions of multiple levels o...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06N20/00G06N3/12G01N21/359G01N21/3577
CPCG01N21/3577G01N21/359G06N3/126G06N20/00
Inventor 任顺张畅任东徐守志杨信廷马凯张雄陆安祥
Owner CHINA THREE GORGES UNIV
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