基于增量粗糙集规则归纳的Agent模型:销售促进中的大数据分析

Yu-Neng Fan, Ching-Chin Chern
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引用次数: 5

摘要

基于粗糙集的规则归纳能够从数据库中生成决策规则,并具有处理数据中的噪声和不确定性的机制。这项技术有助于管理决策和战略制定。然而,基于rs的规则归纳过程复杂且计算量大。此外,运营数据库用于运行日常业务,因此大量数据在短时间内不断更新。分析如此大量数据所需的基础设施必须能够处理极端数据量,允许快速响应时间,并根据分析模型自动做出决策。本研究提出一种基于增量粗糙集的规则归纳智能体(IRSRIA)。规则归纳基于为主要建模过程创建代理。此外,还设计了一个增量架构,以解决大规模动态数据库问题。以某家庭购物公司为例,验证了该方法的有效性和有效性。实验结果表明,在保持规则质量不变的情况下,IRSRIA可以显著减少诱导决策规则的计算时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Agent Model for Incremental Rough Set-Based Rule Induction: A Big Data Analysis in Sales Promotion
Rough set-based rule induction is able to generate decision rules from a database and has mechanisms to handle noise and uncertainty in data. This technique facilitates managerial decision-making and strategy formulation. However, the process for RS-based rule induction is complex and computationally intensive. Moreover, operational databases that are used to run the day-to-day operations, thus large volumes of data are continually updated within a short period of time. The infrastructure required to analyze such large amounts of data must be able to handle extreme data volumes, to allow fast response times, and to automate decisions based on analytical models. This study proposes an Incremental Rough Set-based Rule Induction Agent (IRSRIA). Rule induction is based on creating agents for the main modeling processes. In addition, an incremental architecture is designed, to address large-scale dynamic database problems. A case study of a Home shopping company is used to show the validity and efficiency of this method. The results of experiments show that the IRSRIA can considerably reduce the computation time for inducing decision rules, while maintaining the same quality of rules.
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