首页> 外文期刊>JMLR: Workshop and Conference Proceedings >Neural Likelihoods via Cumulative Distribution Functions
【24h】

Neural Likelihoods via Cumulative Distribution Functions

机译:通过累积分配功能的神经可能性

获取原文
       

摘要

We leverage neural networks as universal approximators of monotonic functions to build a parameterization of conditional cumulative distribution functions (CDFs). By the application of automatic differentiation with respect to response variables and then to parameters of this CDF representation, we are able to build black box CDF and density estimators. A suite of families is introduced as alternative constructions for the multivariate case. At one extreme, the simplest construction is a competitive density estimator against state-of-the-art deep learning methods, although it does not provide an easily computable representation of multivariate CDFs. At the other extreme, we have a flexible construction from which multivariate CDF evaluations and marginalizations can be obtained by a simple forward pass in a deep neural net, but where the computation of the likelihood scales exponentially with dimensionality. Alternatives in between the extremes are discussed. We evaluate the different representations empirically on a variety of tasks involving tail area probabilities, tail dependence and (partial) density estimation.
机译:我们利用神经网络作为单调函数的普遍近似器,以构建条件累积分布函数(CDF)的参数化。通过对响应变量的自动差异的应用,然后对此CDF表示的参数,我们能够构建黑盒CDF和密度估计。为多变量案例作为替代建筑介绍了一套家庭。在一个极端,最简单的结构是针对最先进的深度学习方法的竞争密度估计器,尽管它不提供多变量CDF的易于计算的表示。在另一个极端,我们具有灵活的结构,可以通过在深神经网络中简单的向前通过,但是在深度神经网络中可以获得多变量CDF评估和边缘化,但是在呈指数级尺寸的情况下计算的可能性缩放。讨论了极端之间的替代方案。我们在涉及尾部区域概率,尾依赖性和(部分)密度估计的各种任务上进行了凭经验的不同陈述。

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