Lijun Gao, Kai Liu, Wenjun Liu, Jiehong Wu, Xiao Jin
{"title":"Model extraction via active learning by fusing prior and posterior knowledge from unlabeled data","authors":"Lijun Gao, Kai Liu, Wenjun Liu, Jiehong Wu, Xiao Jin","doi":"10.3233/jifs-239504","DOIUrl":null,"url":null,"abstract":"As machine learning models become increasingly integrated into practical applications and are made accessible via public APIs, the risk of model extraction attacks has gained prominence. This study presents an innovative and efficient approach to model extraction attacks, aimed at reducing query costs and enhancing attack effectiveness. The method begins by leveraging a pre-trained model to identify high-confidence samples from unlabeled datasets. It then employs unsupervised contrastive learning to thoroughly dissect the structural nuances of these samples, constructing a dataset of high quality that precisely mirrors a variety of features. A mixed information confidence strategy is employed to refine the query set, effectively probing the decision boundaries of the target model. By integrating consistency regularization and pseudo-labeling techniques, reliance on authentic labels is minimized, thus improving the feature extraction capabilities and predictive precision of the surrogate models. Evaluation on four major datasets reveals that the models crafted through this method bear a close functional resemblance to the original models, with a real-world API test success rate of 62.35%, which vouches for the method’s validity.","PeriodicalId":509313,"journal":{"name":"Journal of Intelligent & Fuzzy Systems","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2024-03-19","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Journal of Intelligent & Fuzzy Systems","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.3233/jifs-239504","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
As machine learning models become increasingly integrated into practical applications and are made accessible via public APIs, the risk of model extraction attacks has gained prominence. This study presents an innovative and efficient approach to model extraction attacks, aimed at reducing query costs and enhancing attack effectiveness. The method begins by leveraging a pre-trained model to identify high-confidence samples from unlabeled datasets. It then employs unsupervised contrastive learning to thoroughly dissect the structural nuances of these samples, constructing a dataset of high quality that precisely mirrors a variety of features. A mixed information confidence strategy is employed to refine the query set, effectively probing the decision boundaries of the target model. By integrating consistency regularization and pseudo-labeling techniques, reliance on authentic labels is minimized, thus improving the feature extraction capabilities and predictive precision of the surrogate models. Evaluation on four major datasets reveals that the models crafted through this method bear a close functional resemblance to the original models, with a real-world API test success rate of 62.35%, which vouches for the method’s validity.
随着机器学习模型越来越多地集成到实际应用中,并可通过公共应用程序接口访问,模型提取攻击的风险日益突出。本研究针对模型提取攻击提出了一种创新而高效的方法,旨在降低查询成本并提高攻击效果。该方法首先利用预先训练好的模型,从未标明的数据集中识别出高信度样本。然后,它采用无监督对比学习,彻底剖析这些样本结构上的细微差别,构建一个精确反映各种特征的高质量数据集。采用混合信息置信策略来完善查询集,从而有效探测目标模型的决策边界。通过整合一致性正则化和伪标签技术,最大限度地减少了对真实标签的依赖,从而提高了特征提取能力和代用模型的预测精度。在四个主要数据集上进行的评估表明,通过这种方法制作的模型在功能上与原始模型非常相似,实际 API 测试成功率高达 62.35%,这证明了该方法的有效性。