基于深度特征选择技术的黄酒原料指标含量预测模型

Liang Peng, Kang Zhou, Wangyang Shen, Weiping Jin, Qing Zhao, Guangbin Li
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引用次数: 0

摘要

本文提出了深度特征选择技术。根据特征提取方法的不同特点,形成多层特征提取结构,并引入选择变量构建全局优化模型,从水平向垂直增强数据集的特征表达,从而实现整体预测模型的自适应特征选择。将实编码和谐搜索算法与BP、RNN和RBF神经网络相结合,对模型结构和参数进行优化。实验表明,与传统预测模型相比,该方法提高了黄酒产品对应原料各指标值的预测精度。模型确定系数提高了6.89%,均方误差降低了7.43%。食品加工企业可根据预测的原料指标值选择原料。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction Model of Yellow Rice Wine Raw Material Index Content Based on Depth Feature Selection Technology
In this paper, the depth feature selection technology is proposed. According to the different characteristics of feature extraction methods, a multi-layer feature extraction structure is formed, and selection variables are introduced to construct a global optimization model that enhances the feature expression of data sets from horizontal to vertical, so as to realize the adaptive feature selection of the prediction model as a whole. The real-coded harmony search algorithm was combined with BP, RNN and RBF neural network to optimize model structure and parameter. Experiments show that compared with the traditional prediction model, this method improves the prediction accuracy of each index value of raw materials corresponding to yellow rice wine products. The model determination coefficient is increased by 6.89%, and the mean square error is reduced by 7.43%. Food processing enterprises can select raw materials according to the predicted raw material index value.
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