首页> 外文会议>Proceedings of 2011 International Conference on Machine Learning and Cybernetics >iDetect: An immunity based algorithm to detect harmful content shared in Peer-to-Peer networks
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iDetect: An immunity based algorithm to detect harmful content shared in Peer-to-Peer networks

机译:iDetect:一种基于抗扰性的算法,可检测对等网络中共享的有害内容

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A huge amount of harmful and illegal contents such as child pornography and abuse video are shared in Peer-to-Peer (P2P) network and have brought some serious social problems. Traditional detection algorithms monitor and analyze the content of the P2P traffic by deploying centralized powerful servers. The immense amount of sharing, transferring and frequently updating files content in P2P network makes these techniques quite cost-expensive and inefficient to detect the harmful elements in time. We develop the iDetect, a distributed harmful content detection algorithm inspired by the Clonal Selection mechanism of the immune system. Analogous to the B-lymphocytes secreting antibodies against antigens in human bodies, the clients in the P2P network deployed with the iDetect cooperate to detect the harmful content in a distributed and self-organized manner. Experiments show that the algorithm is efficient, effective, scalable to locate the clients sharing harmful content in the P2P network.
机译:对等网络(P2P)共享大量儿童色情和虐待视频等有害和非法内容,并带来了一些严重的社会问题。传统的检测算法通过部署集中的功能强大的服务器来监视和分析P2P流量的内容。 P2P网络中大量的共享,传输和频繁更新文件内容,使这些技术非常昂贵,并且无法及时检测到有害元素。我们开发了iDetect,这是一种受免疫系统的克隆选择机制启发的分布式有害内容检测算法。与B淋巴细胞在人体中分泌针对抗原的抗体相似,与iDetect一起部署的P2P网络中的客户端可以协作以分布式和自组织的方式检测有害成分。实验表明,该算法高效,有效,可扩展,可以在P2P网络中定位共享有害内容的客户端。

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