优质牛肉消费者购买意愿分类算法的实验比较

Nattaphon Rangsaritvorakarn, Suthep Nimsai, Korawit Fakkhong, C. Jongsureyapart
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引用次数: 0

摘要

本研究旨在探索和比较机器学习的性能,以预测顾客在高档牛肉店的购买决策。抽样地点是泰国。研究中使用的人口包括来自5家优质牛肉店的436名有效回复。数据采用性别、年龄、产品三题、价格一题、地点一题、外观三题组成的问卷。该研究采用了k近邻、决策树、随机森林和xgboost模型四种分类器算法。将模型进行比较,以找到优质牛肉客户行为数据集的最高准确性。随机森林算法被评估为在预测泰国优质牛肉购买决策方面具有最佳性能。该模型的准确率为88.62%,精密度为88.46%,召回率为85.19%,f1为86.79%,AUC为95%。影响购买决策的两个重要因素是价格和产品年龄。最准确的算法可以用来预测消费者的产品购买,并理解影响购买决策的要素的原则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Experimental Comparison of Classification Algorithms for Premium Beef Customer Buying Intention
This study aimed to explore and compare machine learning performance to predict the customer purchasing decision within premium beef shops. The sampling locations were Thailand. The population used in the study consisted of 436 valid responses from 5 premium beef shops. The data was obtained by using questionnaires consisting of gender, age, three questions of product, one question for the price, one question for the place, and three questions for appearances. The study was used four classifier’s algorithms: k- nearest neighbors, decision tree, random forest, and xgboost model. The models were compared to find the highest accuracy for premium beef customer behavior data set. Random forest algorithms were evaluated to have the best performance in predicting premium beef purchasing decisions in Thailand. The model has an accuracy of 88.62 percent, precision of 88.46 percent, recall of 85.19 percent, f1 of 86.79 percent, and AUC of 95 percent. The two important elements that influence purchasing decisions are price and product age. The most accurate algorithms can be used to forecast consumer product purchases and comprehend the principles of elements that influence buying decisions.
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