Estimating Social Influence from Observational Data

CLEaR Pub Date : 2022-03-24 DOI:10.48550/arXiv.2204.01633
Dhanya Sridhar, C. D. Bacco, D. Blei
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引用次数: 3

Abstract

We consider the problem of estimating social influence, the effect that a person's behavior has on the future behavior of their peers. The key challenge is that shared behavior between friends could be equally explained by influence or by two other confounding factors: 1) latent traits that caused people to both become friends and engage in the behavior, and 2) latent preferences for the behavior. This paper addresses the challenges of estimating social influence with three contributions. First, we formalize social influence as a causal effect, one which requires inferences about hypothetical interventions. Second, we develop Poisson Influence Factorization (PIF), a method for estimating social influence from observational data. PIF fits probabilistic factor models to networks and behavior data to infer variables that serve as substitutes for the confounding latent traits. Third, we develop assumptions under which PIF recovers estimates of social influence. We empirically study PIF with semi-synthetic and real data from Last.fm, and conduct a sensitivity analysis. We find that PIF estimates social influence most accurately compared to related methods and remains robust under some violations of its assumptions.
从观测数据估计社会影响
我们考虑评估社会影响的问题,即一个人的行为对其同伴未来行为的影响。关键的挑战在于,朋友之间的共同行为可以同样地由影响或其他两个混淆因素来解释:1)导致人们成为朋友并参与这种行为的潜在特征;2)对这种行为的潜在偏好。本文通过三个贡献解决了评估社会影响的挑战。首先,我们将社会影响形式化为因果效应,这需要对假设干预进行推论。其次,我们发展了泊松影响分解(PIF),一种从观测数据估计社会影响的方法。PIF将概率因子模型拟合到网络和行为数据中,以推断作为混杂潜在特征替代品的变量。第三,我们提出了PIF恢复社会影响估计的假设。我们用Last的半合成数据和真实数据对PIF进行了实证研究。Fm,并进行敏感性分析。我们发现,与相关方法相比,PIF最准确地估计了社会影响,并且在某些违反其假设的情况下保持稳健。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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