{"title":"用于预测DSM多处理器体系结构的性能度量的可靠属性选择技术","authors":"E. I. M. Zayid, M. Akay","doi":"10.1109/ICCEEE.2013.6633934","DOIUrl":null,"url":null,"abstract":"In this study we develop a model for predicting the performance measures of a distributed shared memory (DSM) multiprocessor architecture by using a reliable attributes selection method. The structure of a DSM platform is interconnected by the Simultaneous Optical Multiprocessor Exchange Bus (SOME-Bus), which is a low latency high bandwidth fiber-optic interconnection network. OPNET Modeler is used to simulate the SOME-Bus multiprocessor architecture and to create the datasets. The input variables chosen for the prediction model include the ratio service time over packet transfer time (varies from 0.01 to 1), traffic patterns (uniform, hot region, bit reverse and perfect shuffle), DSM protocol type, node number (varies to 16, 32 and 64), thread number (varies from 1 to 6). The attributes selection method examined the models using different machine learning tools. These tools include: multilayer feed forward artificial neural network (MFANNs), support vector regression with radial basis function (SVR-RBF) and multiple linear regression (MLR). Cross validation (CV) technique is applied using 10 folds. The results show that MFANN-based model gives the best results (i.e. SEE=11.1 and R = 0.998587 for CWT; SEE=18.96 and R = 0.997 for NRT; SEE=60.46 and R=0.8638 for IWT; SEE=0.04795 and R = 0.9838 for PU; SEE=0.0348 and R=0.9990 for CU). Results of the constructed new selected subset are compared with the original feature space and the findings prove the accuracy and reliability of the model.","PeriodicalId":256793,"journal":{"name":"2013 INTERNATIONAL CONFERENCE ON COMPUTING, ELECTRICAL AND ELECTRONIC ENGINEERING (ICCEEE)","volume":"187 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2013-10-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"3","resultStr":"{\"title\":\"Reliable attributes selection technique for predicting the performance measures of a DSM multiprocessor architecture\",\"authors\":\"E. I. M. Zayid, M. Akay\",\"doi\":\"10.1109/ICCEEE.2013.6633934\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"In this study we develop a model for predicting the performance measures of a distributed shared memory (DSM) multiprocessor architecture by using a reliable attributes selection method. The structure of a DSM platform is interconnected by the Simultaneous Optical Multiprocessor Exchange Bus (SOME-Bus), which is a low latency high bandwidth fiber-optic interconnection network. OPNET Modeler is used to simulate the SOME-Bus multiprocessor architecture and to create the datasets. The input variables chosen for the prediction model include the ratio service time over packet transfer time (varies from 0.01 to 1), traffic patterns (uniform, hot region, bit reverse and perfect shuffle), DSM protocol type, node number (varies to 16, 32 and 64), thread number (varies from 1 to 6). The attributes selection method examined the models using different machine learning tools. These tools include: multilayer feed forward artificial neural network (MFANNs), support vector regression with radial basis function (SVR-RBF) and multiple linear regression (MLR). Cross validation (CV) technique is applied using 10 folds. The results show that MFANN-based model gives the best results (i.e. SEE=11.1 and R = 0.998587 for CWT; SEE=18.96 and R = 0.997 for NRT; SEE=60.46 and R=0.8638 for IWT; SEE=0.04795 and R = 0.9838 for PU; SEE=0.0348 and R=0.9990 for CU). 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引用次数: 3
摘要
在本研究中,我们开发了一个模型,通过使用可靠的属性选择方法来预测分布式共享内存(DSM)多处理器架构的性能指标。同时光多处理器交换总线(SOME-Bus)是一种低延迟、高带宽的光纤互连网络。使用OPNET Modeler来模拟SOME-Bus多处理器体系结构并创建数据集。为预测模型选择的输入变量包括服务时间与数据包传输时间之比(从0.01到1不等)、流量模式(均匀、热区、位反转和完全洗刷)、DSM协议类型、节点数(从16、32和64不等)、线程数(从1到6不等)。属性选择方法使用不同的机器学习工具检查模型。这些工具包括:多层前馈人工神经网络(mfann)、径向基函数支持向量回归(SVR-RBF)和多元线性回归(MLR)。交叉验证(CV)技术采用10倍。结果表明,基于mfann的CWT模型得到的结果最好,SEE=11.1, R = 0.998587;NRT的SEE=18.96, R = 0.997;IWT SEE=60.46, R=0.8638;PU SEE=0.04795, R = 0.9838;CU的SEE=0.0348, R=0.9990)。将构建的新选择子集的结果与原始特征空间进行比较,结果证明了模型的准确性和可靠性。
Reliable attributes selection technique for predicting the performance measures of a DSM multiprocessor architecture
In this study we develop a model for predicting the performance measures of a distributed shared memory (DSM) multiprocessor architecture by using a reliable attributes selection method. The structure of a DSM platform is interconnected by the Simultaneous Optical Multiprocessor Exchange Bus (SOME-Bus), which is a low latency high bandwidth fiber-optic interconnection network. OPNET Modeler is used to simulate the SOME-Bus multiprocessor architecture and to create the datasets. The input variables chosen for the prediction model include the ratio service time over packet transfer time (varies from 0.01 to 1), traffic patterns (uniform, hot region, bit reverse and perfect shuffle), DSM protocol type, node number (varies to 16, 32 and 64), thread number (varies from 1 to 6). The attributes selection method examined the models using different machine learning tools. These tools include: multilayer feed forward artificial neural network (MFANNs), support vector regression with radial basis function (SVR-RBF) and multiple linear regression (MLR). Cross validation (CV) technique is applied using 10 folds. The results show that MFANN-based model gives the best results (i.e. SEE=11.1 and R = 0.998587 for CWT; SEE=18.96 and R = 0.997 for NRT; SEE=60.46 and R=0.8638 for IWT; SEE=0.04795 and R = 0.9838 for PU; SEE=0.0348 and R=0.9990 for CU). Results of the constructed new selected subset are compared with the original feature space and the findings prove the accuracy and reliability of the model.