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Particle Swarm Optimization Algorithm as a Tool for Profile Optimization

机译:粒子群优化算法作为轮廓优化的工具

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摘要

Complex analytical environment is challenging environment for finding customer profiles. In situation where predictive modelexistslikeBayesiannetworkschallengebecameevenbiggerregardingcombinatoryexplosion. Complex analytical environment can be caused by multiple modality of output variable, fact that each node of Bayesian network can potetnitaly be target variable for profiling, as well as from big data environment, which cause data complexity in way of data quantity. As an illustration of presented concept particle swarm optimization algorithm will be used as a tool, which will find profiles from developed predictive model of Bayesian network. This paper will show how partical swarm optimization algorithm can bepowerfull tool for finding optimal customer profiles given target conditions as evidences within Bayesian networks.
机译:复杂的分析环境对于寻找客户资料具有挑战性。在预测模型存在的情况下,例如贝叶斯网络挑战就组合爆炸而言已经变成了七个更大的挑战。复杂的分析环境可能是由输出变量的多种形式引起的,事实是贝叶斯网络的每个节点都可能成为概要分析的目标变量,以及来自大数据环境的事实,这在数据量方面造成数据复杂性。作为提出概念的说明,将使用粒子群优化算法作为工具,该工具将从已开发的贝叶斯网络预测模型中找到配置文件。本文将展示局部群优化算法如何成为功能强大的工具,以给定目标条件作为贝叶斯网络中的证据来查找最佳客户资料。

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