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Transductive Learning for Spatial Regression with Co-Training

机译:跨训练的跨导学习

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摘要

Many spatial phenomena are characterized by positive autocorrelation, i.e., variables take similar values at pairs of close locations. This property is strongly related to the smoothness assumption made in transductive learning, according to which if points in a high-density region are close, corresponding outputs should also be close. This observation, together with the prior availability of large sets of unlabelled data, which is typical in spatial applications, motivates the investigation of transductive learning for spatial data mining. The task considered in this work is spatial regression. We apply the co-training technique in order to iteratively learn two separate models, such that each model is used to make predictions on unlabeled data for the other. One model is built on the set of attribute-value observations measured at specific sites, while the other is built on the set of aggregated values measured for the same attributes in nearby sites. Experiments prove the effectiveness of the proposed approach on spatial domains.
机译:许多空间现象的特征在于正自相关,即变量在成对的封闭位置上取相似的值。此属性与转换学习中的平滑度假设紧密相关,根据该假设,如果高密度区域中的点接近,则相应的输出也应接近。这一观察结果以及在空间应用中常见的大量未标记数据的先验可用性,激发了对用于空间数据挖掘的转导学习的研究。在这项工作中考虑的任务是空间回归。我们应用协同训练技术来迭代地学习两个单独的模型,以便每个模型都可用于对另一个的未标记数据进行预测。一种模型建立在特定地点测量的一组属性值观测值上,而另一种模型建立在对附近站点的相同属性测量的一组聚合值上。实验证明了该方法在空间域上的有效性。

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