论文标题

视觉论文:在移动性分析中可解释和强大的机器学习的因果推断

Vision Paper: Causal Inference for Interpretable and Robust Machine Learning in Mobility Analysis

论文作者

Xin, Yanan, Tagasovska, Natasa, Perez-Cruz, Fernando, Raubal, Martin

论文摘要

人工智能(AI)正在彻底改变我们生活的许多领域,领导着技术进步的新时代。特别是,运输部门将受益于AI的进步并推动智能运输系统的发展。构建智能运输系统需要将人工智能和移动性分析的复杂组合结合在一起。在过去的几年中,使用先进的深层神经网络在运输应用中的发展迅速。但是,这种深厚的神经网络很难解释和缺乏鲁棒性,这在实践中减慢了这些AI驱动的算法的部署。为了提高其可用性,不断增加的研究工作已致力于开发可解释且健壮的机器学习方法,其中因果推理方法最近获得了吸引力,因为它提供了可解释和可行的信息。此外,这些方法中的大多数都是针对不满足移动性数据分析特定要求的图像或顺序数据开发的。本愿景论文强调了基于深度学习的移动性分析中的研究挑战,这些分析需要可解释性和鲁棒性,总结了使用因果推断来改善机器学习方法的可解释性和鲁棒性的最新发展,并突出了开发具有因果关系的机器学习模型的机会。这个研究方向将使运输部门的AI更加容易解释和可靠,从而有助于更安全,更高效,更可持续的未来运输系统。

Artificial intelligence (AI) is revolutionizing many areas of our lives, leading a new era of technological advancement. Particularly, the transportation sector would benefit from the progress in AI and advance the development of intelligent transportation systems. Building intelligent transportation systems requires an intricate combination of artificial intelligence and mobility analysis. The past few years have seen rapid development in transportation applications using advanced deep neural networks. However, such deep neural networks are difficult to interpret and lack robustness, which slows the deployment of these AI-powered algorithms in practice. To improve their usability, increasing research efforts have been devoted to developing interpretable and robust machine learning methods, among which the causal inference approach recently gained traction as it provides interpretable and actionable information. Moreover, most of these methods are developed for image or sequential data which do not satisfy specific requirements of mobility data analysis. This vision paper emphasizes research challenges in deep learning-based mobility analysis that require interpretability and robustness, summarizes recent developments in using causal inference for improving the interpretability and robustness of machine learning methods, and highlights opportunities in developing causally-enabled machine learning models tailored for mobility analysis. This research direction will make AI in the transportation sector more interpretable and reliable, thus contributing to safer, more efficient, and more sustainable future transportation systems.

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