在社交网络中建立免疫力的系统

Heena Rathore, A. Samant
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引用次数: 7

摘要

社交网络容易受到恶意信息(通常被称为谣言)快速传播的影响。谣言往往通过网络迅速传播,如果不迅速遏制,可能是有害的。本文描述了一种识别社交网络中高度连接节点的方法,并利用这些节点建立对此类恶意信息的免疫力。为了描述这种方法,本文从生物学领域的两个成熟主题中汲取灵感;传染病在人群中的传播和人体如何建立对疾病的免疫力。在传染病的情况下,如果我们只考虑受感染的节点可以将其疾病传播给最近的邻居,那将是非常简单的。更现实地说,受感染的节点可能会与系统中的其他节点建立随机链接。传染病的传播是由这两个因素控制的。一个有能力拥有多个随机链接的受感染节点能够更快地在网络中传播疾病。我们假设社交网络中的某些节点表现出相似的行为,并且可以定义为网络中的高度连接节点。我们提出了基于我们的网络模拟的分析工具,以正确识别这些节点。一旦确定了这样的节点,我们就引入了权重函数的概念,权重函数可以附加到通过这些节点的消息上。本文描述了如何使用加权函数的概念,通过这种高度连接的节点组成的社区来控制恶意信息的传播。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A system for building immunity in social networks
Social networks are susceptible to rapid spread of malicious information, commonly referred to as rumors. Rumors often spread rapidly through the network and, if not contained quickly, can be harmful. This paper describes a method for identifying highly connected nodes in a social network and using these nodes to build immunity against such malicious information. To describe this method, this paper draws inspiration from two well established topics in the area of biology; spread of communicable diseases in human population and how human body builds immunity against diseases. In case of communicable diseases, it would be very simplistic if we only consider that an infected node can transmit its disease to its nearest neighbors. More realistically speaking, it is possible that an infected node can develop random links with other nodes in the system. The spread of communicable diseases is controlled by both these factors. An infected node with capability to have several random links is capable of spreading the disease through the network faster. We postulate that certain nodes in a social network exhibit similar behavior and can be defined as highly connected nodes in the network. We present analytical tools based on our network simulation, to correctly identify such nodes. Once such nodes are identified, we introduce the concept of weighting functions that can be attached to messages passing through such nodes. This paper describes how the spread of malicious information can be controlled by a community of such highly connected nodes, using the concept of weighted functions.
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