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Research on a Hybrid Prediction Model for Purchase Behavior Based on Logistic Regression and Support Vector Machine

机译:基于Logistic回归和支持向量机的购买行为混合预测模型研究。

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In recent years, online retail has maintained rapid growth, and websites are rich in user behavior data. The operation behaviors of users on the e-commerce platform can reflect user preferences. How to use user behaviors to mine user preferences has become the focus of academia and industry, and many research results have been achieved. In many cases, by fusion training two or more different algorithms, the generalization ability of the algorithm can be significantly improved to improve the prediction effect. This paper combines the fusion of logistic regression and support vector machine algorithms to construct a hybrid prediction model for user buying behavior, and conducts an empirical study on the effectiveness of the model. The empirical results show that the fusion model has better prediction effect than the single model.
机译:近年来,在线零售保持了快速增长,并且网站上拥有丰富的用户行为数据。用户在电子商务平台上的操作行为可以反映用户的偏好。如何利用用户行为挖掘用户偏好已成为学术界和业界关注的焦点,并取得了许多研究成果。在许多情况下,通过融合训练两种或多种不同的算法,可以显着提高算法的泛化能力,以提高预测效果。本文将逻辑回归和支持向量机算法的融合相结合,构建了针对用户购买行为的混合预测模型,并对模型的有效性进行了实证研究。实验结果表明,融合模型的预测效果优于单一模型。

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