MPI-Based Twi-extraction of Traffic State Evaluation Rules

Yingjie Xia, Yiwen Fang, Zhoumin Ye
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引用次数: 1

Abstract

Through converting transportation data into some conditional attributes and one decision attribute which constitute the decision table, we use Rough Set theory (RS) to extract rules for traffic state evaluation. This method, named twi-extraction, combines the first extraction by the confidence threshold and the second extraction on the eliminated rules by the matching accuracy. Since the computational intensity is mainly placed onto the attribute significance computation of twi-extraction, Message Passing Interface (MPI) is adopted to parallelize it for acceleration. The experimental results show that by comparing the twi-extraction with the first extraction and pseudo twi-extraction, our MPI-based implementation can achieve both higher matching accuracy and higher computing efficiency.
基于mpi的交通状态评价规则双提取
通过将交通数据转换成若干条件属性和一个决策属性构成决策表,利用粗糙集理论提取交通状态评价规则。该方法将基于置信阈值的第一次规则提取和基于匹配精度的第二次规则提取相结合,称为双提取。由于计算强度主要集中在双提取的属性重要性计算上,因此采用消息传递接口(Message Passing Interface, MPI)对其进行并行化处理以加速。实验结果表明,通过与第一次提取和伪双提取的比较,基于mpi的实现可以获得更高的匹配精度和更高的计算效率。
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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