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APCN: A scalable architecture for balancing accountability and privacy in large-scale content-based networks

机译:APCN:可扩展架构,用于平衡基于大规模内容的网络中的责任和隐私

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Balancing accountability and privacy has become extremely important in cyberspace, and the Internet has evolved to be dominated by content transmission. Several research efforts have been devoted to contributing to either accountability or privacy protection, but none of them has managed to consider both factors in content-based networks. An efficient solution is therefore urgently demanded by service and content providers. However, proposing such a solution is very challenging, because the following questions need to be considered simultaneously: (1) How can the conflict between privacy and accountability be avoided? (2) How is content identified and accountability performed based on packets belonging to that content? (3) How can the scalability issue be alleviated on massive content accountability in large-scale networks? To address these questions, we propose the first scalable architecture for balancing Accountability and Privacy in large-scale Content-based Networks (APCN). In particular, an innovative method for identifying content is proposed to effectively distinguish the content issued by different senders and from different flows, enabling the accountability of a content based on any of its packets. Furthermore, a new idea with double-delegate (i.e., source and local delegates) is proposed to improve the performance and alleviate the scalability issue on content accountability in large-scale networks. Extensive NS-3 experiments with real trace are conducted to validate the efficiency of the proposed APCN. The results demonstrate that APCN outperforms existing related solutions in terms of lower round-trip time and higher cache hit rate under different network configurations. (C) 2019 Elsevier Inc. All rights reserved.
机译:平衡问责制和隐私在网络空间中变得非常重要,互联网已经发展为主导内容传输。已经致力于为责任或隐私保护作出若干研究努力,但他们都没有设法考虑基于内容的网络中的两个因素。因此,服务和内容提供商迫切需要有效的解决方案。但是,提出这种解决方案是非常具有挑战性的,因为需要同时考虑以下问题:(1)如何避免隐私和问责制之间的冲突? (2)如何基于属于该内容的数据包所确定的内容和问责制成? (3)如何在大型网络中大规模内容问责制所减轻可扩展性问题如何?为解决这些问题,我们提出了第一种可扩展的架构,用于平衡基于大规模内容的网络(APCN)的责任和隐私。特别地,提出了一种用于识别内容的创新方法,以有效地区分不同发件人和不同流发出的内容,从而基于其任何数据包来实现内容的问责性。此外,建议提出使用双委托(即源和本地代表)的新想法,以提高性能,并减轻大型网络中内容问责制的可扩展性问题。进行了具有实际迹线的广泛的NS-3实验,以验证提出的APCN的效率。结果表明,在不同网络配置下,APCN在较低的往返时间和更高的缓存命中率方面优于现有的相关解决方案。 (c)2019 Elsevier Inc.保留所有权利。

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