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首页> 外文期刊>ACM transactions on knowledge discovery from data >New Algorithms of Feature Selection and Big Data Assignment for CBR System Integrated by Bayesian Network
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New Algorithms of Feature Selection and Big Data Assignment for CBR System Integrated by Bayesian Network

机译:贝叶斯网络集成的CBR系统的特征选择和大数据分配新算法

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摘要

Under big data, the integrated system of case-based reasoning and Bayesian network has exhibited great advantage in implementing the intelligence of engineering application in many domains. To further improve the performance of the hybrid system, this article proposes Probability Change Measurement of Solution Parameters (PCMSP)-Half-Division-Cross (HDC) method, which includes two algorithms, namely PCMSP and HDC algorithm. PCMSP algorithm can select principal problem features according to their effects upon all solution features measured by calculating the weighted relative probability (RP) change of all solution features caused by each problem feature. PCMSP algorithm can perfectly work under big data no matter how complex the data types are and how huge the data size is. HDC algorithm is used to assign the computation task of big data to enhance the efficiency of the integrated system. HDC algorithm assigns big data by grouping all the problem parameters into many small sub-groups and then distributing the data which covers the same sub-group of problem parameters to a slave node. HDC algorithm can guarantee enough efficiency of the integrated system under big data no matter how large the number of problem parameters is. Finally, lots of experiments are executed to validate the proposed method.
机译:在大数据下,基于案例的推理与贝叶斯网络的集成系统在实现多领域工程应用智能方面具有很大的优势。为了进一步提高混合系统的性能,本文提出了解决方案参数的概率变化度量(PCMSP)-半除法-交叉(HDC)方法,其中包括两种算法,即PCMSP和HDC算法。 PCMSP算法可以根据主要问题特征对所有解决方案特征的影响来选择主要问题特征,方法是计算每个问题特征导致的所有解决方案特征的加权相对概率(RP)变化。不管数据类型有多复杂,数据大小有多大,PCMSP算法都可以完美地在大数据下工作。 HDC算法用于分配大数据的计算任务,以提高集成系统的效率。 HDC算法通过将所有问题参数分组为许多小的子组来分配大数据,然后将涵盖问题参数的同一子组的数据分配给从属节点。无论问题参数有多大,HDC算法都可以保证大数据下集成系统的足够效率。最后,进行了大量实验以验证所提出的方法。

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