In collaborative outlier detection, multiple participants exchange their local detectors trained on decentralized devices without exchanging their own data. A key problem of collaborative outlier detection is efficiently aggregating multiple local detectors to form a global detector without breaching the privacy of participants' data and degrading the detection accuracy. We study locality-sensitive hashing-based ensemble methods to detect collaborative outliers since they are mergeable and compatible with differentially private mechanisms. Our proposed LSH iTables is simple and outperforms recent ensemble competitors on centralized and decentralized scenarios over many real-world data sets.
翻译:在协作探测外层数据时,多个参与者交换了在分散装置方面受过训练的本地探测器,而不必交换自己的数据。协作外层探测的一个关键问题是,高效地将多个本地探测器集合起来,形成一个全球探测器,同时不侵犯参与者数据的隐私并降低探测的准确性。我们研究基于地点敏感的散列混合方法,以探测协作外端,因为这些方法可以与不同的私人机制合并并兼容。我们提议的LSHi Table系统简单易行,在多个真实世界数据集的集中和分散情景上比最近的共同竞争对手高。