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“What Do Your Friends Think?”: Efficient Polling Methods for Networks Using Friendship Paradox

机译:“你的朋友们想什么?”:使用友谊悖论的网络有效的轮询方法

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This paper deals with randomized polling of a social network. In the case of forecasting the outcome of an election between two candidates A and B, classical intent polling asks randomly sampled individuals: who will you vote for? Expectation polling asks: who do you think will win? In this paper, we propose a novel neighborhood expectation polling (NEP) strategy that asks randomly sampled individuals: what is your estimate of the fraction of votes for A? Therefore, in NEP, sampled individuals will naturally look at their neighbors (defined by the underlying social network graph) when answering this question. Hence, the mean squared error (MSE) of NEP methods rely on selecting the optimal set of samples from the network. To this end, we propose two NEP algorithms for the following cases: (i) the social network graph is not known but, random walks (sequential exploration) can be performed on the graph, and (ii) the social network graph is unknown but, uniformly sampled nodes from the network are available. For both cases, algorithms based on a graph theoretic consequence called friendship paradox are proposed. Theoretical results on the dependence of the MSE of the algorithms on the properties of the network are established. Numerical results on real and synthetic data sets are provided to illustrate the performance of the algorithms.
机译:本文涉及社交网络随机投票。在预测两位候选人A和B之间选举结果的情况下,古典意向投票询问随机采样的人:您会投票给谁?期望投票问:你认为谁会赢?在本文中,我们提出了一种新的邻里期望投票(NEP)策略,要求随机采样的人:您对A的票数的估计是什么?因此,在NEP中,在回答这个问题时,采样的个人将自然地查看他们的邻居(由底层社交网络图定义)。因此,NEP方法的平均平方误差(MSE)依赖于从网络中选择最佳样本集。为此,我们提出了两个NEP算法的以下情况:(i)社交网络图是不知道的,但是可以在图表上执行随机散步(顺序探索),并且(ii)社交网络图是未知的,但是,来自网络的统一采样节点可用。对于这两种情况,提出了基于图形理论后果的算法,称为友谊悖论。建立了算法的依赖性的理论结果,建立了对网络的属性的影响。提供了实际和合成数据集的数值结果以说明算法的性能。

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