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Relationship Estimation Metrics for Binary SoC Data

机译:二进制SOC数据的关系估计度量

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摘要

System-on-Chip (SoC) designs are used in every aspect of computing and their optimization is a difficult but essential task in today's competitive market. Data taken from SoCs to achieve this is often characterised by very long concurrent bit vectors which have unknown relationships to each other. This paper explains and empirically compares the accuracy of several methods used to detect the existence of these relationships in a wide range of systems. A probabilistic model is used to construct and test a large number of SoC-like systems with known relationships which are compared with the estimated relationships to give accuracy scores. The metrics Cov and Dep based on covariance and independence are demonstrated to be the most useful, whereas metrics based on the Hamming distance and geometric approaches are shown to be less useful for detecting the presence of relationships between SoC data.
机译:在计算的各个方面使用系统的片上(SOC)设计,并且它们的优化是当今竞争性市场中的困难而基本的任务。从SOC达到这一点的数据通常是由非常长的并发位向量的特征,它们彼此具有未知的关系。本文解释并凭经验地比较了用于检测各种系统中这些关系存在的若干方法的准确性。概率模型用于构造和测试具有已知关系的大量SOC样系统,该系统与估计的关系进行比较,以提供精度分数。基于协方差和独立性的指标COV和DEP是最有用的,而基于汉明距离和几何方法的度量被认为是对检测SOC数据之间的关系的存在不太有用。

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