As Internet of Things devices become prevalent, using intrusion detection to protect IoT from malicious intrusions is of vital importance. However, the data scarcity of IoT hinders the effectiveness of traditional intrusion detection methods. To tackle this issue, in this paper, we propose the Adaptive Bi-Recommendation and Self-Improving Network (ABRSI) based on unsupervised heterogeneous domain adaptation (HDA). The ABRSI transfers enrich intrusion knowledge from a data-rich network intrusion source domain to facilitate effective intrusion detection for data-scarce IoT target domains. The ABRSI achieves fine-grained intrusion knowledge transfer via adaptive bi-recommendation matching. Matching the bi-recommendation interests of two recommender systems and the alignment of intrusion categories in the shared feature space form a mutual-benefit loop. Besides, the ABRSI uses a self-improving mechanism, autonomously improving the intrusion knowledge transfer from four ways. A hard pseudo label voting mechanism jointly considers recommender system decision and label relationship information to promote more accurate hard pseudo label assignment. To promote diversity and target data participation during intrusion knowledge transfer, target instances failing to be assigned with a hard pseudo label will be assigned with a probabilistic soft pseudo label, forming a hybrid pseudo-labelling strategy. Meanwhile, the ABRSI also makes soft pseudo-labels globally diverse and individually certain. Finally, an error knowledge learning mechanism is utilised to adversarially exploit factors that causes detection ambiguity and learns through both current and previous error knowledge, preventing error knowledge forgetfulness. Holistically, these mechanisms form the ABRSI model that boosts IoT intrusion detection accuracy via HDA-assisted intrusion knowledge transfer.
翻译:随着物联网设备的普及,使用入侵检测保护物联网免受恶意入侵的重要性日益突出。然而,物联网数据匮乏限制了传统入侵检测方法的有效性。为了解决这个问题,本文提出了一种基于无监督异构域适应(HDA)的自适应双一致性推荐和自我改进网络(ABRSI)。ABRSI通过从数据丰富的网络入侵来源域转移丰富的入侵知识,以帮助数据匮乏的物联网目标域实现有效的入侵检测。ABRSI通过自适应双一致性匹配实现细粒度的入侵知识转移。两个推荐系统的双重推荐兴趣匹配与在共享特征空间中入侵类别的对齐形成了相互利益循环。此外,ABRSI采用自我改进机制,通过四种方式自主改进入侵知识转移。硬伪标签投票机制共同考虑了推荐系统的决策和标签关系信息,以促进更准确的硬伪标签分配。为了促进多样性和目标数据参与入侵知识转移,无法分配硬伪标签的目标实例将被分配概率软伪标签,形成混合伪标记策略。同时,ABRSI还使软伪标签在全局上具有多样性,在个体上确定。最后,采用错误知识学习机制对可导致检测模糊的因素进行对抗性利用,并通过当前和先前错误知识进行学习,防止错误知识的遗忘。总体而言,这些机制形成了ABRSI模型,通过HDA辅助入侵知识转移提高了物联网入侵检测的准确性。