计算机科学
利用
爬行
虚假关系
通知
机器学习
一般化
网络爬虫
领域(数学分析)
人工智能
数据挖掘
计算机安全
万维网
解剖
法学
数学分析
医学
数学
政治学
作者
Nicolas M. Müller,Pascal Debus,Jennifer Williams,Philip Sperl,Konstantin Böttinger
标识
DOI:10.48550/arxiv.2310.19381
摘要
Machine-learning (ML) shortcuts or spurious correlations are artifacts in datasets that lead to very good training and test performance but severely limit the model's generalization capability. Such shortcuts are insidious because they go unnoticed due to good in-domain test performance. In this paper, we explore the influence of different shortcuts and show that even simple shortcuts are difficult to detect by explainable AI methods. We then exploit this fact and design an approach to defend online databases against crawlers: providers such as dating platforms, clothing manufacturers, or used car dealers have to deal with a professionalized crawling industry that grabs and resells data points on a large scale. We show that a deterrent can be created by deliberately adding ML shortcuts. Such augmented datasets are then unusable for ML use cases, which deters crawlers and the unauthorized use of data from the internet. Using real-world data from three use cases, we show that the proposed approach renders such collected data unusable, while the shortcut is at the same time difficult to notice in human perception. Thus, our proposed approach can serve as a proactive protection against illegitimate data crawling.
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