ε - WGX: Adaptive Edge Probing for Enhancing Incomplete Networks

S. Soundarajan, Tina Eliassi-Rad, Brian Gallagher, Ali Pinar
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引用次数: 13

Abstract

No matter how meticulously constructed, network datasets are often partially observed and incomplete. For example, most of the publicly available data from online social networking services (such as Facebook and Twitter) are collected via apps, users who make their accounts public, and/or the resources available to the researcher/practitioner. Such incompleteness can lead to inaccurate findings. We introduce the Adaptive Edge Probing problem. Suppose that one has observed a networked phenomenon via some form of sampling and has a budget to enhance the incomplete network by asking for additional information about specific nodes, with the ultimate goal of obtaining the most valuable information about the network as a whole. Which nodes should be further explored? We present ε-WGX, a network-based explore-exploit algorithm for identifying which nodes in the incomplete network to probe. Aggregated over multiple datasets and a wide range of probing budgets, we find that ε-WGX outperforms other explore-exploit strategies and baseline probing strategies. For example, for the task of adding as many nodes as possible, over incomplete networks observed via four popular sampling methods, ε-WGX outperforms the best comparison strategy by 12%-23% on average.
ε - WGX:增强不完全网络的自适应边缘探测
无论如何精心构建,网络数据集往往是部分观察和不完整的。例如,大多数来自在线社交网络服务(如Facebook和Twitter)的公开数据都是通过应用程序、公开账户的用户和/或研究人员/从业者可用的资源收集的。这种不完整性可能导致不准确的发现。介绍了自适应边缘探测问题。假设一个人通过某种形式的抽样观察到一个网络现象,并且有预算通过询问有关特定节点的额外信息来增强不完整网络,其最终目标是获得关于整个网络的最有价值的信息。哪些节点需要进一步探索?我们提出了ε-WGX,一种基于网络的探索-利用算法,用于识别不完整网络中需要探测的节点。综合多个数据集和广泛的探测预算,我们发现ε-WGX优于其他探索-利用策略和基线探测策略。例如,对于添加尽可能多的节点的任务,通过四种流行的采样方法观察到的不完整网络,ε-WGX比最佳比较策略平均高出12%-23%。
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