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Uncertainty-Based Deep Learning Networks for Limited Data Wetland User Models

机译:基于不确定性的有限数据湿地用户模型的深度学习网络

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This paper discusses a method for dealing with limited data in deep networks based on calculating the uncertainty associated with remaining training data. The method was developed for the Watershed REstoration using Spatio-Temporal Optimization of REsources (WRESTORE) system, an interactive decision support system designed for performing multi-criteria decision analysis with a distributed system of conservation practices on the Eagle Creek Watershed in Indiana, USA. Our results show faster and more stable convergence when using an uncertainty-based incremental sampling method than when using a standard random incremental sampling method. This work describes the existing WRESTORE system, provides details about the implementation of our uncertainty-based incremental sampling method, and provides a discussion of our results and future work. The primary contribution of the paper is an uncertainty-based incremental sampling method which can be applied to limited data watershed design problems.
机译:本文讨论了一种基于计算与剩余训练数据相关的不确定性的深网络中的有限数据的方法。该方法是为使用资源(摔跤)系统的时空优化的流域恢复而开发的方法,该交互式决策支持系统设计用于与美国印第安纳州印第安纳州印第安纳州的Eagle Creek流域的分布式系统进行多标准决策分析。当使用基于不确定性的增量采样方法时,我们的结果表明比使用标准随机增量采样方法时的不确定性增量采样方法更快,更稳定。这项工作描述了现有的摔跤系统,提供了有关基于不确定性的增量采样方法的实现的详细信息,并提供了对我们的结果和未来工作的讨论。本文的主要贡献是一种基于不确定性的增量采样方法,可以应用于有限的数据流域设计问题。

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