论文标题

基于空间回归的预测问题转移学习

Spatial regression-based transfer learning for prediction problems

论文作者

Murakami, Daisuke, Kajita, Mami, Kajita, Seiji

论文摘要

尽管空间预测被广泛用于城市和环境监测,但如果研究区域中只有少量样品可用,则其准确性通常不令人满意。这项研究的目的是通过在研究区域以外获得的较大样本转移学习,以提高预测准确性。我们的建议是预先培训潜在的空间依赖性过程,这些过程很难转移,并将其作为随后的转移学习中的其他功能。所提出的方法旨在涉及局部空间依赖性,并且可以轻松实现。与常规学习相比,这种基于空间回归的转移学习有望获得更高,更稳定的预测准确性,而传统学习并未明确考虑局部空间依赖性。使用土地价格和犯罪预测检查了拟议方法的性能。这些结果表明,所提出的方法成功提高了这些空间预测的准确性和稳定性。

Although spatial prediction is widely used for urban and environmental monitoring, its accuracy is often unsatisfactory if only a small number of samples are available in the study area. The objective of this study was to improve the prediction accuracy in such a case through transfer learning using larger samples obtained outside the study area. Our proposal is to pre-train latent spatial-dependent processes, which are difficult to transfer, and apply them as additional features in the subsequent transfer learning. The proposed method is designed to involve local spatial dependence and can be implemented easily. This spatial-regression-based transfer learning is expected to achieve a higher and more stable prediction accuracy than conventional learning, which does not explicitly consider local spatial dependence. The performance of the proposed method was examined using land price and crime predictions. These results suggest that the proposed method successfully improved the accuracy and stability of these spatial predictions.

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