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首页> 外文期刊>International journal of machine learning and cybernetics >Causative label flip attack detection with data complexity measures
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Causative label flip attack detection with data complexity measures

机译:具有数据复杂度措施的致病标签翻转攻击检测

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摘要

A causative attack which manipulates training samples to mislead learning is a common attack scenario. Current countermeasures reduce the influence of the attack to a classifier with the loss of generalization ability. Therefore, the collected samples should be analyzed carefully. Most countermeasures of current causative attack focus on data sanitization and robust classifier design. To our best knowledge, there is no work to determinate whether a given dataset is contaminated by a causative attack. In this study, we formulate a causative attack detection as a 2-class classification problem in which a sample represents a dataset quantified by data complexity measures, which describe the geometrical characteristics of data. As geometrical natures of a dataset are changed by a causative attack, we believe data complexity measures provide useful information for causative attack detection. Furthermore, a two-step secure classification model is proposed to demonstrate how the proposed causative attack detection improves the robustness of learning. Either a robust or traditional learning method is used according to the existence of causative attack. Experimental results illustrate that data complexity measures separate untainted datasets from attacked ones clearly, and confirm the promising performance of the proposed methods in terms of accuracy and robustness. The results consistently suggest that data complexity measures provide the crucial information to detect causative attack, and are useful to increase the robustness of learning.
机译:一种操纵训练样本以误导学习的致病症是一个常见的攻击情景。随着泛化能力的丧失,目前的对策将攻击对分类器的影响降低。因此,应仔细分析收集的样品。目前造成攻击的大多数对策侧重于数据消毒和强大的分类器设计。为了我们的最佳知识,没有工作来确定给定的数据集是否被致病攻击污染。在这项研究中,我们制定了一种致病性攻击检测,作为2级分类问题,其中示例表示通过数据复杂度测量量化的数据集,这描述了数据的几何特征。随着数据集的几何自然,通过致病性攻击改变,我们认为数据复杂度措施为致病攻击检测提供有用的信息。此外,提出了一种两步安全分类模型,以证明所提出的致病攻击检测如何提高学习的稳健性。根据致原因攻击的存在,使用稳健或传统的学习方法。实验结果表明,数据复杂性地测量分开的未陷入攻击的数据集清楚,并在准确性和稳健性方面确认提出的方法的有希望的性能。结果一致认为,数据复杂性措施提供了检测致病攻击的重要信息,并且有助于增加学习的稳健性。

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