Evaluation of Customer Value of Securities and Investments Companies Using Quantitative Analysis

Abdus Salam, Mamoon Ur Rashid
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Abstract

This article focuses on user evaluation procedures for Chinese investment companies. It uses a clustering process to identify different categories of users and uses regression to evaluate and provide a score. These two factors serve as the basis for this organization to develop unique tactics for its various clients, which benefit both the company and its users. This project aims to serve existing customers better and reduce the risk of losing critical new customers. Clean the data to remove inactive accounts and outliers, and use logarithmic processing to limit the impact of high monetary values. This is due to the significant relationship between variables. Running algorithms on raw data is difficult. So, to condense many data dimensions, we use component analysis to define the three dimensions (amount, transaction amount, profit) that reflect consumer information. For clustering, we use the commonly known K-means clustering algorithm. Customers are classified into four categories using an angled approach. The four groups formed include the high trading frequency group, the large and profit group, the large and loss group, and the majority trading contract group. Use a regression Tree to perform regression based on reduced dimensions and their contributions. This model achieves 97% accuracy, indicating that the financial characteristics of the users are fundamental to the business. Additional discussion validates the clustering results using classification and regression methods on several contributing variables to provide further insight into each dimension.
证券投资公司客户价值的定量评价
本文主要研究中国投资公司的用户评价程序。它使用聚类过程来识别不同类别的用户,并使用回归来评估并提供分数。这两个因素是该组织为其各种客户开发独特策略的基础,这对公司和用户都有利。该项目旨在更好地服务现有客户,降低失去关键新客户的风险。清理数据以删除不活跃的帐户和异常值,并使用对数处理来限制高货币值的影响。这是由于变量之间的显著关系。在原始数据上运行算法是困难的。因此,为了简化多个数据维度,我们使用组件分析来定义反映消费者信息的三个维度(金额、交易金额、利润)。对于聚类,我们使用众所周知的K-means聚类算法。使用角度方法将客户分为四类。形成了高交易频率组、大而盈利组、大而亏损组和多数交易合约组。使用回归树来执行基于降维及其贡献的回归。该模型的准确率达到97%,表明用户的财务特征是业务的基础。其他讨论使用分类和回归方法对几个贡献变量验证聚类结果,以进一步了解每个维度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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