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Recent Progress in Zeroth Order Optimization and Its Applications to Adversarial Robustness in Data Mining and Machine Learning

机译:Zeroth订单优化及其在数据挖掘和机器学习中对抗鲁棒性的应用中的最新进展

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摘要

Zeroth-order (ZO) optimization is increasingly embraced for solving big data and machine learning problems when explicit expressions of the gradients are difficult or infeasible to obtain. It achieves gradient-free optimization by approximating the full gradient via efficient gradient estimators. Some recent important applications include: a) generation of prediction-evasive, black-box adversarial attacks on deep neural networks, b) online network management with limited computation capacity, c) parameter inference of blackbox/ complex systems, and d) bandit optimization in which a player receives partial feedback in terms of loss function values revealed by her adversary. This tutorial aims to provide a comprehensive introduction to recent advances in ZO optimization methods in both theory and applications. On the theory side, we will cover convergence rate and iteration complexity analysis of ZO algorithms and make comparisons to their first-order counterparts. On the application side, we will highlight one appealing application of ZO optimization to studying the robustness of deep neural networks - practical and efficient adversarial attacks that generate adversarial examples from a black-box machine learning model. We will also summarize potential research directions regarding ZO optimization, big data challenges and some open-ended data mining and machine learning problems.
机译:Zeroth-Order(ZO)优化越来越受到解决大数据和机器学习问题时,当梯度的明确表达难以或不可行地获得。通过高效梯度估计器近似全梯度,它通过近似全梯度来实现无梯度优化。一些最近的重要应用包括:a)生成对深神经网络的预测,黑匣子对抗攻击,b)具有有限的计算能力,c)Blackbox / Complex系统的参数推断,以及D)带状优化在她的对手透露的损失函数值方面,该玩家在损失函数值方面接收部分反馈。本教程旨在全面介绍ZO优化方法在理论和应用中的最新进展。在理论方面,我们将介绍ZO算法的收敛速率和迭代复杂性分析,并对他们的一阶对应物进行比较。在申请方面,我们将突出一个对ZO优化的一个有吸引力应用,以研究深神经网络的鲁棒性 - 从黑箱机学习模型产生对抗性实例的实际和有效的对抗性攻击。我们还将总结潜在的研究方向,了解ZO优化,大数据挑战和一些开放式数据挖掘和机器学习问题。

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