论文标题
神经图形模型
Neural Graphical Models
论文作者
论文摘要
概率图形模型通常用于了解系统的动力学。它们可以建模功能(节点)和基础分布之间的关系。从理论上讲,这些模型可以代表非常复杂的依赖性功能,但实际上,由于与图形操作相关的计算限制,通常会简化假设。在这项工作中,我们介绍了神经图形模型(NGM),该模型试图以合理的计算成本来表示复杂的特征依赖性。给定特征关系和相应样本的图,我们通过使用神经网络作为多任务学习框架来捕获特征之间的依赖关系以及它们的复杂函数表示。我们提供有效的学习,推理和采样算法。 NGM可以拟合通用的图形结构,包括定向,无方向图和混合图形以及支持混合输入数据类型。我们提出的经验研究表明,NGMS代表高斯图形模型的能力,对肺癌数据进行推理分析,并从现实世界中婴儿死亡率数据中提取疾病控制和预防中心提供的见解。
Probabilistic Graphical Models are often used to understand dynamics of a system. They can model relationships between features (nodes) and the underlying distribution. Theoretically these models can represent very complex dependency functions, but in practice often simplifying assumptions are made due to computational limitations associated with graph operations. In this work we introduce Neural Graphical Models (NGMs) which attempt to represent complex feature dependencies with reasonable computational costs. Given a graph of feature relationships and corresponding samples, we capture the dependency structure between the features along with their complex function representations by using a neural network as a multi-task learning framework. We provide efficient learning, inference and sampling algorithms. NGMs can fit generic graph structures including directed, undirected and mixed-edge graphs as well as support mixed input data types. We present empirical studies that show NGMs' capability to represent Gaussian graphical models, perform inference analysis of a lung cancer data and extract insights from a real world infant mortality data provided by Centers for Disease Control and Prevention.