利用 Sybil 网络进行加权回归

Nihar Shah
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引用次数: 0

摘要

在许多在线领域,Sybil 网络(或单个用户假冒多个身份的情况)是一个普遍存在的特征。这使得实验变得复杂,因为现成的回归估计器至少假定网络拓扑结构是已知的(如果不是完全独立的观察结果),而实际上假冒网络拓扑结构往往是未知的。文献只关注检测假网络的技术,导致许多实验者在估计治疗效果之前不得不完全排除可疑网络。我提出了一种更有效的解决方案:加权回归框架,根据观测数据集受单个行为者控制的概率进行加权。我在文中指出,MSE 最小化的解决方案是将权重矩阵设置为预期网络拓扑结构的倒数。我在模拟数据上演示了这一方法,然后将该技术应用于在 Sui 区块链上运行的疑似 Sybil 网络竞赛,结果显示估计值的标准误差减少了 6 - 24%。
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Weighted Regression with Sybil Networks
In many online domains, Sybil networks -- or cases where a single user assumes multiple identities -- is a pervasive feature. This complicates experiments, as off-the-shelf regression estimators at least assume known network topologies (if not fully independent observations) when Sybil network topologies in practice are often unknown. The literature has exclusively focused on techniques to detect Sybil networks, leading many experimenters to subsequently exclude suspected networks entirely before estimating treatment effects. I present a more efficient solution in the presence of these suspected Sybil networks: a weighted regression framework that applies weights based on the probabilities that sets of observations are controlled by single actors. I show in the paper that the MSE-minimizing solution is to set the weight matrix equal to the inverse of the expected network topology. I demonstrate the methodology on simulated data, and then I apply the technique to a competition with suspected Sybil networks run on the Sui blockchain and show reductions in the standard error of the estimate by 6 - 24%.
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