Make Partition Fit Task: A Novel Framework for Joint Learning of City Region Partition and Representation

IF 5.2 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Mingyu Deng, Wanyi Zhang, Jie Zhao, Zhu Wang, Mingliang Zhou, Jun Luo, Chao Chen
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引用次数: 0

Abstract

The proliferation of multimodal big data in cities provides unprecedented opportunities for modeling and forecasting urban problems, e.g., crime prediction and house price prediction, through data-driven approaches. A fundamental and critical issue in modeling and forecasting urban problems lies in identifying suitable spatial analysis units, also known as city region partition. Existing works rely on subjective domain knowledge for static partitions, which is general and universal for all tasks. In fact, different tasks may need different city region partitions. To address this issue, we propose a task-oriented framework for Joint Learning of region Partition and Representation (JLPR for short hereafter). To make partition fit task, JLPR integrates the region partition into the representation model training and learns region partitions using the supervision signal from the downstream task. We evaluate the framework on two prediction tasks (i.e., crime prediction and housing price prediction) in Chicago. Experiments show that JLPR consistently outperforms state-of-the-art partitioning methods in both tasks, which achieves above 25% and 70% performance improvements in terms of Mean Absolute Error (MAE) for crime prediction and house price prediction tasks, respectively. Additionally, we meticulously undertake three visualization case studies, which yield profound and illuminating findings from diverse perspectives, demonstrating the remarkable effectiveness and superiority of our approach.

使分区适合任务:城市区域划分与表征的联合学习新框架
城市中多模式大数据的激增为通过数据驱动方法对犯罪预测和房价预测等城市问题进行建模和预测提供了前所未有的机遇。城市问题建模和预测的一个基本和关键问题在于确定合适的空间分析单元,也称为城市区域分割。现有的工作依赖于主观领域知识来进行静态分区,这对于所有任务来说都是通用的。事实上,不同的任务可能需要不同的城市区域划分。为了解决这个问题,我们提出了一个面向任务的区域划分与表征联合学习框架(以下简称 JLPR)。为了使分区与任务相匹配,JLPR 将区域分区整合到表示模型训练中,并利用下游任务的监督信号来学习区域分区。我们在芝加哥的两项预测任务(即犯罪预测和房价预测)中对该框架进行了评估。实验表明,JLPR 在这两项任务中的表现始终优于最先进的分区方法,在犯罪预测和房价预测任务中,JLPR 的平均绝对误差(MAE)分别提高了 25% 和 70% 以上。此外,我们还细致地进行了三项可视化案例研究,从不同角度得出了深刻而富有启发性的结论,证明了我们的方法的显著效果和优越性。
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来源期刊
CiteScore
8.50
自引率
5.90%
发文量
285
审稿时长
7.5 months
期刊介绍: The ACM Transactions on Multimedia Computing, Communications, and Applications is the flagship publication of the ACM Special Interest Group in Multimedia (SIGMM). It is soliciting paper submissions on all aspects of multimedia. Papers on single media (for instance, audio, video, animation) and their processing are also welcome. TOMM is a peer-reviewed, archival journal, available in both print form and digital form. The Journal is published quarterly; with roughly 7 23-page articles in each issue. In addition, all Special Issues are published online-only to ensure a timely publication. The transactions consists primarily of research papers. This is an archival journal and it is intended that the papers will have lasting importance and value over time. In general, papers whose primary focus is on particular multimedia products or the current state of the industry will not be included.
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