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Automated Compilation of Probabilistic Task Description into Executable Neural Network Specification

机译:将概率任务描述自动编译为可执行的神经网络规范

摘要

A mechanism for compiling a generative description of an inference task into a neural network. First, an arbitrary generative probabilistic model from the exponential family is specified (or received). The model characterizes a conditional probability distribution for measurement data given a set of latent variables. A factor graph is generated for the generative probabilistic model. Each factor node of the factor graph is expanded into a corresponding sequence of arithmetic operations, based on a specified inference task and a kind of message passing algorithm. The factor graph and the sequences of arithmetic operations specify the structure of a neural network for performance of the inference task. A learning algorithm is executed, to determine values of parameters of the neural network. The neural network is then ready for performing inference on operational measurements.
机译:一种将推理任务的生成描述汇编到神经网络中的机制。首先,指定(或接收)来自指数族的任意生成概率模型。该模型为给定一组潜在变量的测量数据表征了条件概率分布。为生成概率模型生成一个因子图。基于指定的推理任务和一种消息传递算法,将因子图的每个因子节点扩展为相应的算术运算序列。因子图和算术运算的序列指定了用于执行推理任务的神经网络的结构。执行学习算法,以确定神经网络的参数值。然后,神经网络准备好对操作测量值进行推断。

著录项

  • 公开/公告号WO2016145379A1

    专利类型

  • 公开/公告日2016-09-15

    原文格式PDF

  • 申请/专利权人 WILLIAM MARSH RICE UNIVERSITY;

    申请/专利号WO2016US22127

  • 发明设计人 PATEL ANKIT B.;BARANIUK RICHARD G.;

    申请日2016-03-11

  • 分类号G06F19;G06N3/02;G10L15/14;

  • 国家 WO

  • 入库时间 2022-08-21 14:16:39

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