Online Shopper Intention Analysis Using Conventional Machine Learning And Deep Neural Network Classification Algorithm

Cucu Ika Agustyaningrum, Muhammad Haris, Riska Aryanti, T. Misriati
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引用次数: 6

Abstract

The use of e-commerce throughout the world in recent years is very rapid. The continuous increase in sales shows that e-commerce has huge market potential. Store profits are derived from the process of assessing data to identify and classify online shopper intentions. The process of assessing the data uses conventional machine learning algorithms and deep neural networks. Comparison of algorithms in this study using the python programming language by knowing the value of Accuracy, F1-Score, Precision, Recall, and ROC AUC. The test results show that the accuracy of the deep neural network algorithm is 98.48%, the F1 score is 95.06%, precision is 97.36%, recall is 96.81% and AUC is 96.81%. So, based on this research, deep neural network data mining techniques can be an effective algorithm for online shopper intention data sets with cross-validation folds of 10, six hidden layer decoder-encoder variations, relu-sigmoid activation function, adagrad optimizer, and learning rate of 0.01 and no dropout. The value of this deep neural network algorithm is quite dominant compared to conventional machine learning algorithms and related research.
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基于传统机器学习和深度神经网络分类算法的网购意向分析
近年来,电子商务在世界范围内的应用非常迅速。销售额的持续增长表明电子商务具有巨大的市场潜力。商店的利润来源于评估数据的过程,以识别和分类在线购物者的意图。评估数据的过程使用传统的机器学习算法和深度神经网络。通过了解Accuracy、F1-Score、Precision、Recall和ROC AUC的值,比较本研究中使用python编程语言的算法。测试结果表明,深度神经网络算法的准确率为98.48%,F1分数为95.06%,准确率为97.36%,召回率为96.81%,AUC为96.81%。因此,基于本研究,深度神经网络数据挖掘技术可以作为一种有效的算法,用于交叉验证折叠次数为10的在线购物者意图数据集,6个隐藏层解码器-编码器变量,relu-sigmoid激活函数,adagrad优化器,学习率为0.01且无dropout。与传统的机器学习算法和相关研究相比,这种深度神经网络算法的价值具有相当大的优势。
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