近似干扰网络下社交平台的因果推理

Yiming Jiang, Lu Deng, Yong Wang, He Wang
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摘要

估算社交平台新功能的总治疗效果(TTE)对于了解其对用户行为的影响至关重要。然而,用户互动产生的网络干扰往往会使估算过程复杂化。实验人员通常在充分捕捉这种干扰的复杂结构方面面临挑战,从而导致估算结果不太可靠。为了解决这个问题,我们提出了一种利用代理网络和伪逆估算器的新方法:(1) 我们引入了代理网络框架,该框架模拟了实验者利用可观测数据建立真实干扰网络近似值的实际情况。(2) 我们研究了该框架下伪逆估计器的性能,揭示了代理网络引入的偏差-方差权衡。与之前的研究相比,我们证明了更严格的渐近方差约束,并提出了一种优于原始估计器的增强方差估计器。(3) 我们将伪反估计器应用于涉及 5000 多万用户的再实验,证明了它与均值差估计器相结合检测网络干扰的有效性。我们的研究旨在弥补理论文献与实际应用之间的差距,为在存在网络干扰和未知干扰结构的情况下估计 TTE 提供解决方案。
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Causal Inference in Social Platforms Under Approximate Interference Networks
Estimating the total treatment effect (TTE) of a new feature in social platforms is crucial for understanding its impact on user behavior. However, the presence of network interference, which arises from user interactions, often complicates this estimation process. Experimenters typically face challenges in fully capturing the intricate structure of this interference, leading to less reliable estimates. To address this issue, we propose a novel approach that leverages surrogate networks and the pseudo inverse estimator. Our contributions can be summarized as follows: (1) We introduce the surrogate network framework, which simulates the practical situation where experimenters build an approximation of the true interference network using observable data. (2) We investigate the performance of the pseudo inverse estimator within this framework, revealing a bias-variance trade-off introduced by the surrogate network. We demonstrate a tighter asymptotic variance bound compared to previous studies and propose an enhanced variance estimator outperforming the original estimator. (3) We apply the pseudo inverse estimator to a real experiment involving over 50 million users, demonstrating its effectiveness in detecting network interference when combined with the difference-in-means estimator. Our research aims to bridge the gap between theoretical literature and practical implementation, providing a solution for estimating TTE in the presence of network interference and unknown interference structures.
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