城市

IF 3.6 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Qianru Wang, Bin Guo, Lu Cheng, Zhiwen Yu
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引用次数: 0

摘要

最近关于智慧城市的机器学习研究在预测未来趋势方面取得了巨大成功,关键假设是测试数据遵循与训练数据相同的分布。然而,快速的城市化使这一假设在实践中难以维持。因为新数据来自新环境(例如,新兴城市或地区),可能遵循与现有环境中的数据不同的分布。与迁移学习方法在训练过程中访问目标数据不同,我们通常对新环境没有任何先验知识。因此,探索一种能够有效适应未知新环境的预测模型至关重要。这项工作旨在解决可持续城市面临的这种分布不足(OOD)的挑战。我们建议确定两种对每种环境下的OOD预测有用的特征:(1)环境不变特征,用于捕获不同环境下预测的共同共性;(2)环境感知特征,表征每个环境的独特信息。以骑自行车为例。不同城市的自行车需求往往遵循相同的模式,即在工作日的高峰时段大幅增加。同时,由于不同的文化和市民的旅游偏好,每个城市也有一些当地的模式。我们引入了一个原则性框架——urban——它由一个用于学习不变表示的环境不变优化模块和一个用于学习环境感知表示的环境感知优化模块组成。对来自不同城市应用领域的真实数据集的评估证实了urban的普遍性。这项工作为智慧城市的发展开辟了新的途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
sUrban
Recent machine learning research on smart cities has achieved great success in predicting future trends, under the key assumption that the test data follows the same distribution of the training data. The rapid urbanization, however, makes this assumption challenging to hold in practice. Because new data is emerging from new environments (e.g., an emerging city or region), which may follow different distributions from data in existing environments. Different from transfer-learning methods accessing target data during training, we often do not have any prior knowledge about the new environment. Therefore, it is critical to explore a predictive model that can be effectively adapted to unseen new environments. This work aims to address this Out-of-Distribution (OOD) challenge for sustainable cities. We propose to identify two kinds of features that are useful for OOD prediction in each environment: (1) the environment-invariant features to capture the shared commonalities for predictions across different environments; and (2) the environment-aware features to characterize the unique information of each environment. Take bike riding as an example. The bike demands of different cities often follow the same pattern that they significantly increase during the rush hour on workdays. Meanwhile, there are also some local patterns in each city because of different cultures and citizens' travel preferences. We introduce a principled framework -- sUrban -- that consists of an environment-invariant optimization module for learning invariant representation and an environment-aware optimization module for learning environment-aware representation. Evaluation on real-world datasets from various urban application domains corroborates the generalizability of sUrban. This work opens up new avenues to smart city development.
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来源期刊
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies Computer Science-Computer Networks and Communications
CiteScore
9.10
自引率
0.00%
发文量
154
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