下一波电子商务:使用机器学习预测移动客户流失

Asif Yaseen
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引用次数: 5

摘要

随着个人数字助理、智能手机和平板电脑等移动设备的迅速增加,移动商务被广泛认为是下一波电子商务的推动力。移动商务的力量主要是由于随时随地的连接和移动技术的使用,这为吸引和吸引客户创造了巨大的机会。许多人认为,在移动商务时代,特别是在电信业务中,留住客户是一个巨大的挑战。面对竞争极其激烈的电信行业,获得新客户的价值比保留现有客户的价值要昂贵得多。因此,为了在充满活力的服务提供商组成的市场中保持稳定,必须重视留住现有客户。在当前的市场中,许多流行的客户流失管理统计技术被更多的机器学习和预测分析技术所取代。在本研究中,我们采用特征选择技术来识别影响客户流失预测的最重要因素。我们采用基于包装的特征选择方法,其中粒子群优化(PSO)用于搜索目的,不同的分类器如决策树(DT), Naïve贝叶斯,k-NN和逻辑回归用于评估目的,以评估对最佳采样和精简数据集的制定。最后,通过模拟可以看到,我们建议的方法在预测流失者方面相当成功,因此可能有利于电信行业以指数方式增加竞争。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Next-Wave of E-commerce: Mobile Customers Churn Prediction using Machine Learning
With the swift increase of mobile devices such as personal digital assistants, smartphones and tablets, mobile commerce is broadly considered to be a driving force for the next wave of ecommerce. The power of mobile commerce is primarily due to the anytime-anywhere connectivity and the use of mobile technology, which creates enormous opportunities to attract and engage customers. Many believe that in an era of m-commerce especially in the telecommunication business retaining customers is a big challenge. In the face of an extremely competitive telecommunication industry, the value of acquiring new customers is very much expensive than retaining the existing customer. Therefore, it has become imperative to pay much attention to retaining the existing customers in order to get stabilized in a market comprised of vibrant service providers. In the current market, a number of prevailing statistical techniques for customer churn management are replaced by more machine learning and predictive analysis techniques. In this study, we employed the feature selection technique to identify the most influencing factors in customer churn prediction. We adopt the wrapper-based feature selection approach where Particle Swarm Optimization (PSO) is used for search purposes and different classifiers like Decision Tree (DT), Naïve Bayes, k-NN and Logistic regression is used for evaluation purposes to assess the enactment on optimally sampled and abridged dataset. Lastly, it is witnessed through simulations that our suggested method accomplishes fairly thriving for forecasting churners and hence could be advantageous for exponentially increasing competition in the telecommunication sector.
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