Recursive Ground Truth Estimator for Social Data Streams

Shuochao Yao, Md. Tanvir Al Amin, Lu Su, Shaohan Hu, Shen Li, Shiguang Wang, Yiran Zhao, T. Abdelzaher, Lance M. Kaplan, C. Aggarwal, A. Yener
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引用次数: 39

Abstract

The paper develops a recursive state estimator for social network data streams that allows exploitation of social networks, such as Twitter, as sensor networks to reliably observe physical events. Recent literature suggested using social networks as sensor networks leveraging the fact that much of the information upload on the former constitutes acts of sensing. A significant challenge identified in that context was that source reliability is often unknown, leading to uncertainty regarding the veracity of reported observations. Multiple truth finding systems were developed to solve this problem, generally geared towards batch analysis of offline datasets. This work complements the present batch approaches by developing an online recursive state estimator that recovers ground truth from streaming data. In this paper, we model physical world state by a set of binary signals (propositions, called assertions, about world state) and the social network as a noisy medium, where distortion, fabrication, omissions, and duplication are introduced. Our recursive state estimator is designed to recover the original binary signal (the true propositions) from the received noisy signal, essentially decoding the unreliable social network output to obtain the best estimate of ground truth in the physical world. Results show that the estimator is both effective and efficient at recovering the original signal with a high degree of accuracy. The estimator gives rise to a novel situation awareness tool that can be used for reliably following unfolding events in real time, using dynamically arriving social network data.
社会数据流的递归真值估计
本文为社交网络数据流开发了一个递归状态估计器,允许利用社交网络(如Twitter)作为传感器网络来可靠地观察物理事件。最近的文献建议使用社交网络作为传感器网络,利用在前者上上传的大部分信息构成感知行为这一事实。在这方面确定的一个重大挑战是,来源的可靠性往往是未知的,导致报告的观察结果的准确性不确定。为了解决这个问题,开发了多个真相发现系统,通常面向离线数据集的批量分析。这项工作通过开发一种在线递归状态估计器来补充当前的批处理方法,该方法可以从流数据中恢复地面真相。在本文中,我们通过一组关于世界状态的二进制信号(命题,称为断言)和社会网络作为噪声介质来建模物理世界状态,其中引入了失真,捏造,遗漏和复制。我们的递归状态估计器旨在从接收到的噪声信号中恢复原始二进制信号(真命题),本质上是解码不可靠的社会网络输出,以获得物理世界中ground truth的最佳估计。结果表明,该估计器在恢复原始信号方面是有效的,具有较高的精度。该估计器产生了一种新的态势感知工具,可以使用动态到达的社会网络数据,可靠地实时跟踪正在展开的事件。
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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