基于多规则的manet信任和声誉模型增强动态推荐选择

A. Shabut, K. Dahal, I. Awan
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引用次数: 7

摘要

信任和声誉模型被一些研究人员用作manet安全机制中的一个重要因素,用于处理自私和行为不端的节点,并确保数据包从源到目的的传输。然而,在存在新的攻击的情况下,重要的是建立一个信任模型来抵抗与不诚实推荐传播和聚合相关的对策,这些对策很容易降低在恶意环境(如manet)中使用信任模型的有效性。然而,在manet中处理不诚实推荐攻击仍然是一个开放和具有挑战性的研究领域。在这项工作中,我们提出了一种动态选择算法来过滤推荐,以抵抗某些现有的攻击,如诽谤和填塞选票。选择算法基于三种不同的规则:(i)基于多数规则,(ii)基于个人经验,(iii)基于服务声誉。基于这三个规则对推荐进行聚类、过滤和选择,以使信任和声誉模型在动态和可变的maneten环境中具有更高的鲁棒性和准确性。
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Enhancing Dynamic Recommender Selection Using Multiple Rules for Trust and Reputation Models in MANETs
Trust and reputation models are utilised by several researchers as one vital factor in the security mechanisms in MANETs to deal with selfish and misbehaving nodes and ensure packet delivery from source to destination. However, in the presence of new attacks, it is important to build a trust model to resist countermeasures related to propagation of dishonest recommendations, and aggregation which may easily degrade the effectiveness of using trust models in a hostile environment such as MANETs. However, dealing with dishonest recommendation attacks in MANETs remains an open and challenging area of research. In this work, we propose a dynamic selection algorithm to filter out recommendations in order to achieve resistance against certain existing attacks such as bad-mouthing and ballot-stuffing. The selection algorithm is based on three different rules: (i)majority rule based, (ii) personal experience based, and (iii)service reputation based. Recommendations are clustered, filtered, and selected based on these three rules in order to givethe trust and reputation model greater robustness andaccuracy over the dynamic and changeable MANETenvironment.
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