普适计算应用中的模糊信任模型

J. Data Intell. Pub Date : 2021-06-01 DOI:10.26421/JDI2.2-1
Kostas Kolomvatsos, Maria Kalouda, Panagiota Papadopoulou, S. Hadjiefthymiades
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引用次数: 0

摘要

普及计算应用程序涉及执行复杂任务和产生知识的自治实体之间的交互。自治实体可以交互以交换数据和知识,以满足应用程序的需求。在各种设备中“激活”的智能代理(IAs)在表示这些实体时提供了很多优势,因为它们的自治性质使它们能够以分布式的方式执行所需的任务。然而,在这种开放和动态的环境中,IAs应该基于一种在交换数据时信任未知实体的有效机制。实体的信任级别应该基于有效的方法自动计算。每个实体对于其他实体的特征和意图都是不确定的。模糊逻辑(FL)似乎是处理这种不确定性的合适工具。在本文中,我们提出了一个基于FL原理的信任计算模型。我们的方案考虑了信任的社会维度以及实体在决定与IA交互之前的个人经历。所提出的模型是一个两级系统,涉及三个FL子系统,用于计算(a)社会信任(基于社区检索的经验),(b)个人信任(基于个人经验)和(c)最终信任。通过与其他模型的比较,我们给出了我们的结果,并揭示了它的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy Trust Modelling for Pervasive Computing Applications
Pervasive computing applications involve the interaction between autonomous entities for performing complex tasks and producing knowledge. Autonomous entities can interact to exchange data and knowledge to fulfil applications requirements. Intelligent Agents (IAs) ‘activated’ in various devices offer a lot of advantages when representing such entities due to their autonomous nature that enables them to perform the desired tasks in a distributed way. However, in such open and dynamic environments, IAs should be based on an efficient mechanism for trusting unknown entities when exchanging data. The trust level of an entity should be automatically calculated based on an efficient methodology. Each entity is uncertain for the characteristics and the intentions of the others. Fuzzy Logic (FL) seems to be the appropriate tool for handling such kind of uncertainty. In this paper, we present a model for trust calculation under the principles of FL. Our scheme takes into consideration the social dimension of trust as well as personal experiences of entities before they decide interactions with an IA. The proposed model is a two-level system involving three FL sub-systems to calculate (a) the social trust (based on experiences retrieved by the community), (b) the individual trust (based on personal experiences) and (c) the final trust. We present our results by evaluating the proposed system compared to other models and reveal its significance.
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