【24h】

Coverage-driven Deep Prediction Intervals Method

机译:覆盖驱动的深度预测间隔方法

获取原文
获取外文期刊封面目录资料

摘要

Prediction Intervals (PIs) provide a method to quantify the uncertainty of deep neural networks' point forecasts. High-quality PIs should be as narrow as possible while covering a designated percentage of data points, which is an axiomatic theory. Lower Upper Bound Estimation (LUBE) method is the first to incorporate this axiom into the neural networks loss function, however it pays much attention to the interval width, and thus the coverage probability does not achieve the desired result. Consequently, the PIs are unreliable and their practical application risks are elevated. In this paper, prioritizing coverage probability, we propose a coverage-driven approach that is generalized to any neural networks model, combining bootstrap method with improved LUBE method. We show that PIs constructed by our method are more reliable, and model uncertainty is quantified using bootstrap. Moreover, compared with two novel PI methods, benchmark experiments show our method is able to reduce the mean PI width by more than 7.5% while obtaining the better results in coverage probability.
机译:预测间隔(PIS)提供了一种量化深度神经网络点预测的不确定性的方法。高质量的PIS应尽可能窄,同时涵盖指定的数据点百分比,这是一个公理理论。较低的上限估计(Lube)方法是第一个将该公理到神经网络损耗功能的方法,但是它会关注间隔宽度,因此覆盖概率不会达到所需的结果。因此,PIS不可靠,其实际应用风险升高。在本文中,优先介绍覆盖概率,我们提出了一种覆盖驱动的方法,该方法是全面的任何神经网络模型,将引导方法与改进的润滑法相结合。我们表明我们的方法构建的PI更可靠,并且使用Bootstrap量化模型不确定性。此外,与两种新型PI方法相比,基准实验表明我们的方法能够将平均Pi宽度降低超过7.5%,同时获得覆盖概率的更好结果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号