首页> 外文会议>Proceedings of the ACM SIGMETRICS/PERFORMANCE joint international conference on measurement and modeling of computer systems >Beyond Random Walk and Metropolis-Hastings Samplers: Why You Should Not Backtrack for Unbiased Graph Sampling
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Beyond Random Walk and Metropolis-Hastings Samplers: Why You Should Not Backtrack for Unbiased Graph Sampling

机译:超越随机游走和都会区采样器:为什么不应该回溯无偏图采样

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Graph sampling via crawling has been actively considered as a generic and important tool for collecting uniform node samples so as to consistently estimate and uncover various characteristics of complex networks. The so-called simple random walk with re-weighting (SRW-rw) and Metropolis-Hastings (MH) algorithm have been popular in the literature for such unbiased graph sampling. However, an unavoidable downside of their core random walks- slow diffusion over the space, can cause poor estimation accuracy. In this paper, we propose non-backtracking random walk with re-weighting (NBRW-rw) and MH algorithm with delayed acceptance (MHDA) which are theoretically guaranteed to achieve, at almost no additional cost, not only unbiased graph sampling but also higher efficiency (smaller asymptotic variance of the resulting unbiased estimators) than the SRW-rw and the MH algorithm, respectively. In particular, a remarkable feature of the MHDA is its applicability for avy non-uniform node sampling like the MH algorithm, but ensuring better sampling efficiency than the MH algorithm. We also provide simulation results to confirm our theoretical findings.
机译:通过爬网进行的图采样已被积极地视为收集统一节点样本,以一致地估计和揭示复杂网络的各种特征的通用且重要的工具。所谓的带有重加权的简单随机游走(SRW-rw)和Metropolis-Hastings(MH)算法已在文献中广泛用于这种无偏图采样。但是,其核心随机游走不可避免的不利因素是空间上的缓慢扩散,可能会导致估算精度下降。在本文中,我们提出了具有重加权的非回溯随机游走(NBRW-rw)和具有延迟验收的MH算法(MHDA),这些在理论上保证几乎无需额外费用即可实现无偏图采样,而且可以获得更高的成本效率(产生的无偏估计量的渐近方差较小)分别比SRW-rw和MH算法高。尤其是,MHDA的显着特征是它适用于像MH算法这样的大量非均匀节点采样,但是确保了比MH算法更好的采样效率。我们还提供了仿真结果,以确认我们的理论发现。

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