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Predicting agricultural and livestock products purchases using the Internet search index and data mining techniques

机译:预测农业和牲畜产品使用互联网搜索索引和购买数据挖掘技术

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摘要

This study identifies whether the Internet search index can be used as effective enough data to identify agricultural and livestock product demand and compare the accuracy of the prediction of major agricultural and livestock products purchases between these prediction models using artificial neural network, linear regression and a decision tree. Design/methodology/approach: Artificial neural network, linear regression and decision tree algorithms were used in this study to compare the accuracy of the prediction of major agricultural and livestock products purchases. The analysis data were studied using 10-fold cross validation. Findings: First, the importance of the Internet search index among the 20 explanatory variables was found to be high for most items, so the Internet search index can be used as a variable to explain agricultural and livestock products purchases. Second, as a result of comparing the accuracy of the prediction of six agricultural and livestock purchases using three models, beef was the most predictable, followed by radishes, chicken, Chinese cabbage, garlic and dried peppers, and by model, a decision tree shows the highest accuracy of prediction, followed by linear regression and an artificial neural network. Originality/value: This study is meaningful in that it analyzes the purchase of agricultural and livestock products using data from actual consumers' purchases of agricultural and livestock products. In addition, the use of data mining techniques and Internet search index in the analysis of agricultural and livestock purchases contributes to improving the accuracy and efficiency of agricultural and livestock purchase predictions.
机译:本研究确定了互联网搜索指数可以作为有效的足够的数据确定农业和牲畜产品需求和预测的准确性进行比较主要农产品和畜牧产品这些预测模型之间的购买使用线性回归和人工神经网络一个决策树。线性回归和人工神经网络决策树算法被用于这项研究比较预测的准确性主要农产品和畜牧产品购买。10倍交叉验证。之间的互联网搜索指数的重要性20个解释变量被发现高大多数项目,所以互联网搜索索引作为一个变量来解释农业和牲畜产品购买。比较预测的准确性6个农业和牲畜购买使用三个模型,牛肉是最可预测的,其次是萝卜,鸡肉,白菜,大蒜和辣椒干,到模型中,决策树显示的最高精度预测,其次是线性回归和一个人工神经网络。这项研究是有意义的,它分析了农业和畜牧产品的购买使用数据从实际消费者的购买农业和畜牧产品。数据挖掘技术和互联网的使用分析农业和搜索索引购买牲畜有助于改善农业和准确性和效率牲畜购买预测。

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