他们可能会抱怨网络钓鱼或垃圾邮件吗?预测模型

S. Al-Hussaini, Dena Al-Thani, Y. Yang
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引用次数: 0

摘要

客户是企业的核心。特别是电信公司,客户满意度被认为是商业上的必需品,因此是优先考虑的问题。高客户满意度提高了留存率和吸引力。因此,电信公司一直在寻求新的手段来实现这些目标。在一个典型的呼叫中心,每天都会接到大量来自客户的电话,抱怨网络钓鱼或垃圾邮件攻击。很难手动识别呼叫的目的。在这项工作中,我们扩展了以前的工作,更多地关注受影响的电话垃圾邮件或网络钓鱼消费者。这项研究集中在电话和短信这两种通讯媒介上。使用了客户投诉数据集的历史样本,并应用了几种机器学习分类算法来分析呼叫。这些是逻辑回归,XGBoost,梯度增强,随机森林,CatBoost, KNN和SVM。预测模型可以识别个人是否可能抱怨垃圾邮件或网络钓鱼攻击。基于CatBoost的基线分类器的性能达到了63.4%的准确率。此外,该模型确定了消费者的人口统计特征。研究结果显示,45岁的人更容易抱怨,而男性则不太可能抱怨。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Are They Likely to Complain on Phish or Spam? A Prediction Model
Customers are the core of businesses. Specifically, telecommunication companies, customer satisfaction is considered to be a commercial necessity and therefore a priority. High rates of customer satisfaction increase both retention and attraction rates. As a result, telecommunication companies are always seeking new means to achieve these objectives. A large volume of calls is received in a typical call center from customers complaining about phishing or spam attacks daily. It is difficult to identify the purpose of the call manually. In this work, we expand on previous efforts to focus more on impacted phone spam or phish consumers. The study focuses on both mediums of communication, phone calls and messages. A historical sample of customers' complaints dataset was used, and several machine learning classification algorithms were applied to analyze the calls. These are Logistic Regression, XGBoost, Gradient Boosting, Random Forest, CatBoost, KNN, and SVM. The predictive model can identify whether an individual is likely to complain about a spam or phish attack. The performance of the baseline classifier achieves an accuracy of 63.4 % that is based on CatBoost. Moreover, the model identifies consumers' demographics. The findings show that people of age 45 are more likely to complain and that males are less likely to complain.
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