基于自回归嵌入的地理数据辅助任务学习

Konstantin Klemmer, Daniel B. Neill
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引用次数: 9

摘要

机器学习在处理地理数据的广泛领域越来越受欢迎。在这里,数据通常表现出空间效应,这对于神经网络来说很难学习。我们提出了SXL,这是一种使用辅助任务将空间数据的自回归属性信息直接嵌入到学习过程中的方法。我们利用局部Moran's I(一种局部空间自相关的度量)来“推动”模型学习局部空间效应的方向和大小,以补充主要任务的学习。我们进一步将Moran’s I扩展到多个分辨率,同时捕获更长和更短距离上的空间相互作用。新的多分辨率Moran's I可以很容易地构建,并提供与现有机器学习框架的无缝集成。在使用真实世界数据的一系列实验中,我们强调了我们的方法如何在无监督和有监督学习任务中持续改进神经网络的训练。在生成空间建模实验中,我们利用任务不确定性权重提出了一种新的辅助任务gan损失方法。SXL优于特定领域的空间插值基准,突出了其下游应用的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Auxiliary-task learning for geographic data with autoregressive embeddings
Machine learning is gaining popularity in a broad range of areas working with geographic data. Here, data often exhibit spatial effects, which can be difficult to learn for neural networks. We propose SXL, a method for embedding information on the autoregressive nature of spatial data directly into the learning process using auxiliary tasks. We utilize the local Moran's I, a measure of local spatial autocorrelation, to "nudge" the model to learn the direction and magnitude of local spatial effects, complementing learning of the primary task. We further introduce a novel expansion of Moran's I to multiple resolutions, capturing spatial interactions over longer and shorter distances simultaneously. The novel multi-resolution Moran's I can be constructed easily and offers seamless integration into existing machine learning frameworks. Over a range of experiments using real-world data, we highlight how our method consistently improves the training of neural networks in unsupervised and supervised learning tasks. In generative spatial modeling experiments, we propose a novel loss for auxiliary task GANs utilizing task uncertainty weights. SXL outperforms domain-specific spatial interpolation benchmarks, highlighting its potential for downstream applications.
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