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False-Locality Attack Detection Using CNN in Named Data Networking

机译:使用CNN中的虚假局部攻击检测在命名数据网络中

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Named data networking(NDN) is a very promising architecture for future network, which can improve the network performance due to its in-network caching feature. However, the pervasive caching is vulnerable against False-Locality Attack (FLA), one kind of cache pollution attack, where attackers repeatedly request a specific set of non-popular contents to replace popular contents. Therefore, the cache hit of legal requests is reduced and the response delay is increased. To mitigate this attack and improve the network performance, we propose a detection scheme based on Convolutional Neural Network (CNN) by fully exploiting the regularity of past requests. The input data of CNN are related to the inherent characteristics of the cached contents including the request ratio, the standard deviation of repeated Interests, the variance of request interval and the change of cache hit ratio. The output of CNN indicates whether FLA has been launched. Simulations through multi-topologies are conducted to validate the performance of our scheme. Compared with other state-of-the-art schemes, it is more effective in detecting FLA with higher detecting ratio, higher cache hit and lower hop count.
机译:命名的数据网络(NDN)是一个非常有前途的架构,用于未来的网络,可以提高由于其在网络中的缓存功能而提高网络性能。然而,普遍存在缓存易受虚假地位攻击(FLA),一种高速缓存污染攻击,攻击者反复请求特定的非流行内容来替换流行内容。因此,减少了法律请求的缓存命中,并且增加了响应延迟。为了缓解此攻击并提高网络性能,我们通过充分利用过去请求的规律性,提出基于卷积神经网络(CNN)的检测方案。 CNN的输入数据与缓存内容的固有特性有关,包括请求比,重复兴趣的标准偏差,请求间隔的方差以及高速缓存命中率的变化。 CNN的输出表示是否已启动FLA。通过多拓扑模拟来验证我们的计划的性能。与其他最先进的方案相比,在检测较高检测比率,高速缓存命中和下跳计数中,更有效地检测FLA更有效。

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