Hidden Source Behavior Change Tracking and Detection

Eugene Santos, Qi Gu, Eunice E. Santos, John Korah
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引用次数: 1

Abstract

An important task of modeling complex social behaviors is to observe and understand individual/group beliefs and attitudes. These beliefs, however, are not stable and may change multiple times as people gain additional information/perceptions from various external sources, which in turn, may affect their subsequent behavior. To detect and track such influential sources is challenging, as they are often invisible to the public due to a variety of reasons -- private communications, what one randomly reads or hears, and implicit social hierarchies, to name a few. Existing approaches usually focus on detecting distribution variations in behavioral data, but overlook the underlying reason for the variation. In this paper, we present a novel approach that models the belief change over time caused by hidden sources, taking into consideration the evolution of their impact patterns. Specifically, a finite fusion model is defined to encode the latent parameters that characterize the distribution of the hidden sources and their impact weights. We compare our work with two general mixture models, namely Gaussian Mixture Model and Mixture Bayesian Network. Experiments on both synthetic data and a real-world scenario show that our approach is effective on detecting and tracking hidden sources and outperforms existing methods.
隐藏源行为改变跟踪和检测
对复杂社会行为进行建模的一个重要任务是观察和理解个人/群体的信念和态度。然而,这些信念并不稳定,当人们从各种外部来源获得额外的信息/感知时,这些信念可能会多次改变,而这些信息/感知反过来又可能影响他们的后续行为。探测和追踪这些有影响力的信息来源是具有挑战性的,因为由于各种原因——私人通信、随机阅读或听到的内容、隐含的社会等级等,它们通常对公众是不可见的。现有的方法通常侧重于检测行为数据的分布变化,但忽略了变化的潜在原因。在本文中,我们提出了一种新的方法来模拟由隐藏源引起的信念随时间的变化,考虑到它们的影响模式的演变。具体而言,定义了一个有限融合模型来编码表征隐藏源分布及其影响权重的潜在参数。我们将我们的工作与两种混合模型,即高斯混合模型和混合贝叶斯网络进行了比较。在合成数据和真实场景上的实验表明,我们的方法在检测和跟踪隐藏源方面是有效的,并且优于现有的方法。
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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