Geographical origin identification of dendrobium officinale based on NNRW-stacking ensembles

Yinsheng Zhang , Chen Chen , Fangjie Guo , Haiyan Wang
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Abstract

Dendrobium officinale is a well-recognized functional food material. Considering its therapeutic effect and price vary among different geographical origins, this paper proposed an origin identification method based on Raman spectroscopy and NNRW (neural network with random weights)-stacking ensemble model. In a case study of dendrobium officinale samples from three different geographical origins, we compare both single estimators, i.e., KNN (k-nearest neighbors), MLP (multi-layer perceptron), DTC (decision tree classifier), and NNRW, and their stacking ensemble counterparts. The results showed that the NNRW-stacking ensemble has the best test accuracy (96.3%) and an impressive fitting speed (the fastest among all ensembles). In conclusion, the NNRW-stacking ensemble model combined with Raman spectroscopy can be a promising method for herb geographical original identification. The proposed model has demonstrated the speed advantage of NNRW (no need for gradient-based iterations) and the generalization power of stacking ensembles (reduce single-estimator bias).

Abstract Image

基于 NNRW 叠加集合的铁皮石斛地理产地鉴定
铁皮石斛是一种公认的功能性食品原料。考虑到不同产地铁皮石斛的疗效和价格不同,本文提出了一种基于拉曼光谱和 NNRW(随机加权神经网络)-堆积集合模型的产地识别方法。通过对来自三个不同产地的铁皮石斛样品的案例研究,我们比较了 KNN(k-近邻)、MLP(多层感知器)、DTC(决策树分类器)和 NNRW 等单一估计器及其堆叠集合模型。结果表明,NNRW-堆叠集合的测试准确率最高(96.3%),拟合速度惊人(在所有集合中最快)。总之,NNRW-堆积集合模型与拉曼光谱相结合,是一种很有前途的草本地理原始识别方法。所提出的模型展示了 NNRW 的速度优势(无需基于梯度的迭代)和堆叠集合的泛化能力(减少单一估计器偏差)。
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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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