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Towards Accurate Predictions of Customer Purchasing Patterns

机译:为了准确预测客户购买模式

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A range of algorithms was used to classify online retail customers of a UK company using historical transaction data. The predictive capabilities of the classifiers were assessed using linear regression, Lasso and regression trees. Unlike most related studies, classifications were based upon specific and marketing focused customer behaviours. Prediction accuracy on untrained customers was generally better than 80%. The models implemented (and compared) for classification were: Logistic Regression, Quadratic Discriminant Analysis, Linear SVM, RBF SVM, Gaussian Process, Decision Tree, Random Forest and Multi-layer Perceptron (Neural Network). Postcode data was then used to classify solely on demographics derived from the UK Land Registry and similar public data sources. Prediction accuracy remained better than 60%.
机译:使用一系列算法用于使用历史事务数据对英国公司的在线零售客户进行分类。使用线性回归,套索和回归树进行分类器的预测能力。与大多数相关的研究不同,分类基于特定和营销的专注客户行为。未经训练客户的预测准确性通常优于80%。实施(和比较)进行分类的模型是:逻辑回归,二次判别分析,线性SVM,RBF SVM,高斯过程,决策树,随机森林和多层Perceptron(神经网络)。然后,邮政编码数据仅用于分类,仅针对来自英国土地注册表和类似公共数据来源的人口统计数据。预测精度保持优于60%。

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