Customer Online Shopping Feature Extraction based on Data Mining Algorithm

Chia-Chi Chen, T. Lin
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Abstract

Driven by the climax of the Internet, online shopping has brought people into a new shopping era and has also brought new impacts to enterprises. To improve the market competitiveness of enterprises, enterprises need to continuously mine customer behavior information. In the mining process, due to the high amount of customer behavior characteristics, the existing behavior mining processing has problems such as low acceleration and high error rate. Feature extraction customer behavior mining algorithm, this algorithm estimates the non-customer behavior and customer behavior in online shopping, iterates many times until convergence, and obtains the best mining result corresponding to the regression line and variance feature parameters, and completes the customer behavior mining. The simulation test proves that the proposed algorithm can improve the precision and recall rate, ensure the reliability and stability of customer behavior mining, and has certain use-value in practical applications.
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基于数据挖掘算法的顾客网上购物特征提取
在互联网高潮的推动下,网上购物将人们带入了一个新的购物时代,也给企业带来了新的冲击。为了提高企业的市场竞争力,企业需要不断挖掘客户行为信息。在挖掘过程中,由于客户行为特征量大,现有的行为挖掘处理存在着加速度低、错误率高的问题。特征提取顾客行为挖掘算法,该算法对网上购物中的非顾客行为和顾客行为进行估计,多次迭代直到收敛,得到回归线和方差特征参数对应的最佳挖掘结果,完成顾客行为挖掘。仿真实验证明,该算法能够提高客户行为挖掘的准确率和召回率,保证客户行为挖掘的可靠性和稳定性,在实际应用中具有一定的使用价值。
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