Since the mid-10s, the era of Deep Learning (DL) has continued to this day, bringing forth new superlatives and innovations each year. Nevertheless, the speed with which these innovations translate into real applications lags behind this fast pace. Safety-critical applications, in particular, underlie strict regulatory and ethical requirements which need to be taken care of and are still active areas of debate. eXplainable AI (XAI) and privacy-preserving machine learning (PPML) are both crucial research fields, aiming at mitigating some of the drawbacks of prevailing data-hungry black-box models in DL. Despite brisk research activity in the respective fields, no attention has yet been paid to their interaction. This work is the first to investigate the impact of private learning techniques on generated explanations for DL-based models. In an extensive experimental analysis covering various image and time series datasets from multiple domains, as well as varying privacy techniques, XAI methods, and model architectures, the effects of private training on generated explanations are studied. The findings suggest non-negligible changes in explanations through the introduction of privacy. Apart from reporting individual effects of PPML on XAI, the paper gives clear recommendations for the choice of techniques in real applications. By unveiling the interdependencies of these pivotal technologies, this work is a first step towards overcoming the remaining hurdles for practically applicable AI in safety-critical domains.
翻译:自10世纪中叶以来,深层学习时代一直持续到今天,每年推出新的超级和创新,然而,这些创新转化为实际应用的速度落后于这一快速速度。特别是,安全关键应用是严格监管和道德要求的基础,这些要求需要加以注意,并且仍然是活跃的辩论领域。 eximable AI(XAI)和隐私保护机器学习(PPML)都是关键的研究领域,旨在减轻DL中普遍存在的数据饥饿黑盒模型的一些缺陷。尽管在各领域的研究活动风险很大,但尚未注意这些创新的相互作用。这项工作首先调查私人学习技术对DL模型解释的影响。在对多个领域的各种图像和时间序列数据集以及各种隐私技术、XAI方法和模型结构进行广泛的实验性分析时,研究私人培训对生成解释的影响。研究结果表明,通过引入隐私,解释方面的变化并不明显。除了报告个人学习技巧对DMMAI应用的实际效果外,在实际应用领域中,这些个人学习技巧对ABMAI系统之间的最终效果是对AST ASTA系统在实际应用中,这些关键技术的正确性建议是对ASTASTAST AST AST II AST AG II AG II AGIN AGIN AGIN AGIN AST AST AST AG II AG II AST AG II AST AST AST AST AG II ATI II AST AST ATI II ATI II ATI II ATI II II II II II II II II II II II II 的首次在实际在实际应用中, II II II SA II II ATITITITITI II ST AST AST AST AST ATI ATI ATI ATI ATI II ATI ATI II II