基于广义学习系统的客户细分分析

Zhenyu Wang, Y. Zuo, Tie-shan Li, C. L. P. Chen, K. Yada
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引用次数: 4

摘要

在零售业和市场营销领域,识别客户细分是最重要的任务之一。有意义的细分能够帮助管理者提高目标细分市场的产品和服务质量。传统方法大多使用POS数据将顾客忠诚度划分为“重”段,而其他方法则属于“轻”段。在前人研究的基础上,本文提出了三个改进方案。首先,除了顾客的购买行为,我们还包含了RFID(无线射频识别)数据,它可以准确地代表消费者的店内行为。其次,运用广义学习系统(BLS)对消费者细分进行分析。BLS是最先进的机器学习技术之一,对于分类任务来说非常高效。第三,本文所使用的顾客行为数据是来自日本一家真实的超市。我们还将客户细分视为基于POS数据和RFID数据的多标签分类问题。在实验中,将结果与其他流行的分类模型(如神经网络和支持向量机)进行了比较,发现BLS在保证准确率的同时大大减少了训练时间。
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Analysis of Customer Segmentation Based on Broad Learning System
In the field of retail industry and marketing, identifying customer segments is one of the most important tasks. A meaningful segmentation is able to help the managers to enhance the quality of products and services for the targeting segments. Most of traditional methods used POS data to classify the customer loyalty as “heavy” segment while others are belonging to “light” segment. Based on the previous studies, this paper presents three improvements. Firstly, in addition to customer purchasing behavior, we also include RFID (Radio Frequency IDentification) data, which can accurately represent the consumers' in-store behavior. Secondly, this paper uses broad learning system (BLS) to analyze the consumer segmentation. BLS is one of the most state-of-the-art machine learning techniques, and quite efficient and effective for classification tasks. Thirdly, the customer behavior data used in this paper are collected from a real-world supermarket in Japan. We also consider the customer segmentation as a multi-label classification problem based on both of POS data and RFID data. In the experiment, the results were compared with other popular classification models, such as neural network and support vector machine, and it was found that BLS greatly reduced training time while guaranteeing accuracy.
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