Unsupervised inference of statistically significant synchronization and opposition links from bipartite systems

K. Baltakys
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Abstract

Many of the real-world data sets can be portrayed as bipartite networks. Such data sets are particularly abundant where human behavior is being recorded. Because typically direct observations of the relationships between different agents are lacking, they need to be inferred by converting bipartite networks to their mono-partite counterparts. While most bipartite networks contain only one type of a link, e.g., an agent attended an event, data sets exist where the links can represent different actions, say when voting, an agent supported, opposed, or abstained a proposition. This paper proposes a new unsupervised statistical method based on hypergeometric-binomial mixture distribution to identify the most significant synchronization and opposition ties between agents when they are recorded to take different actions. The method takes into account the heterogeneity of individual nodes in terms of how active they are and in terms of their preferred actions. The resulting binary or signed graphs can then be used to investigate the structure of co-behaviors between agents. We demonstrate the link validation using empirical investor trading and parliament member voting data. We find structurally balanced signed networks.
双部系统统计显著同步和对立环节的无监督推理
许多现实世界的数据集可以被描绘成二部网络。在记录人类行为的地方,这样的数据集尤其丰富。由于通常缺乏对不同代理之间关系的直接观察,它们需要通过将二部网络转换为单部网络来推断。虽然大多数双部网络只包含一种类型的链接,例如,一个代理参加了一个事件,但存在数据集,其中的链接可以代表不同的行为,例如,在投票时,代理支持、反对或弃权一个命题。本文提出了一种基于超几何-二项混合分布的无监督统计方法,用于识别被记录为不同行为的智能体之间最显著的同步和对立关系。该方法考虑了单个节点在活动程度和首选操作方面的异质性。生成的二值图或带符号图可用于研究代理之间的共同行为结构。我们使用经验投资者交易和议会成员投票数据来证明链接验证。我们发现结构平衡的签名网络。
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