保险代理人活动自动化管理的决策支持系统和商业智能算法的实现

A. Massaro, A. Panarese, M. Gargaro, Costantino Vitale, A. Galiano
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引用次数: 6

摘要

由于数据中包含的重要信息,数据处理在保险业中至关重要。商业智能(BI)使保险行业的公司能够更好地管理各种活动。基于决策支持系统(DSS)的商业智能可以通过根据代理的个人特征进行改进,从而提高决策和流程的效率。在这个方向上,关键绩效指标(KPI)是帮助保险公司了解当前市场和预测未来趋势的有效工具。本论文的目的是讨论一个案例研究,该研究是在“DSS/BI人力资源”研究项目中开发的,与智能平台的实现有关,该平台用于自动化管理代理人的活动。该平台包括BI、DSS和KPI。具体而言,该平台集成了用于代理评分的数据挖掘(DM)算法、用于客户聚类的K-means算法以及用于预测代理KPI的长短期记忆(LSTM)人工神经网络。LSTM模型通过人工记录(AR)方法进行了验证,该方法允许在数据不足的情况下提供训练数据集,就像在许多实际情况下使用人工智能(AI)算法一样。使用LSTM-AR方法,通过改变数据集中的记录数量来分析人工神经网络的性能。更准确地说,随着记录数量的增加,精度增加到0.9987。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of a Decision Support System and Business Intelligence Algorithms for the Automated Management of Insurance Agents Activities
Data processing is crucial in the insurance industry, due to the important information that is contained in the data. Business Intelligence (BI) allows to better manage the various activities as for companies working in the insurance sector. Business Intelligence based on the Decision Support System (DSS), makes it possible to improve the efficiency of decisions and processes, by improving them to the individual characteristics of the agents. In this direction, Key Performance Indicators (KPIs) are valid tools that help insurance companies to understand the current market and to anticipate future trends. The purpose of the present paper is to discuss a case study, which was developed within the research project "DSS / BI HUMAN RESOURCES", related to the implementation of an intelligent platform for the automated management of agents' activities. The platform includes BI, DSS, and KPIs. Specifically, the platform integrates Data Mining (DM) algorithms for agent scoring, K-means algorithms for customer clustering, and a Long Short-Term Memory (LSTM) artificial neural network for the prediction of agents KPIs. The LSTM model is validated by the Artificial Records (AR) approach, which allows to feed the training dataset in data-poor situations as in many practical cases using Artificial Intelligence (AI) algorithms. Using the LSTM-AR method, an analysis of the performance of the artificial neural network is carried out by changing the number of records in the dataset. More precisely, as the number of records increases, the accuracy increases up to a value equal to 0.9987.
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