用拓扑排序约束可微贝叶斯结构学习的非循环性

IF 2.5 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Quang-Duy Tran, Phuoc Nguyen, Bao Duong, Thin Nguyen
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引用次数: 0

摘要

在处理认识不确定性时,贝叶斯结构学习方法中的分布估计与进行点估计的方法相比具有优势。为了提高推理过程的可扩展性,人们开发了贝叶斯结构学习的可微分方法,并取得了令人乐观的成果。然而,在可微分连续环境中,约束学习图的非循环性成为另一个挑战。各种研究利用事后惩罚分数来施加这一约束,但无法确保非循环性。变量的拓扑排序是一种先验知识,它包含了有向图非周期性的宝贵信息。在这项工作中,我们提出了一个框架,通过将拓扑排序的信息整合到推理过程中来保证推理图的非循环性。我们的集成框架不会干扰可微分推理过程,同时能够严格保证所学图的非循环性并降低推理复杂度。我们在合成数据和真实数据上进行的大量实证实验证明了我们方法的有效性,其结果优于相关的贝叶斯方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Constraining acyclicity of differentiable Bayesian structure learning with topological ordering

Constraining acyclicity of differentiable Bayesian structure learning with topological ordering

Distributional estimates in Bayesian approaches in structure learning have advantages compared to the ones performing point estimates when handling epistemic uncertainty. Differentiable methods for Bayesian structure learning have been developed to enhance the scalability of the inference process and are achieving optimistic outcomes. However, in the differentiable continuous setting, constraining the acyclicity of learned graphs emerges as another challenge. Various works utilize post-hoc penalization scores to impose this constraint which cannot assure acyclicity. The topological ordering of the variables is one type of prior knowledge that contains valuable information about the acyclicity of a directed graph. In this work, we propose a framework to guarantee the acyclicity of inferred graphs by integrating the information from the topological ordering into the inference process. Our integration framework does not interfere with the differentiable inference process while being able to strictly assure the acyclicity of learned graphs and reduce the inference complexity. Our extensive empirical experiments on both synthetic and real data have demonstrated the effectiveness of our approach with preferable results compared to related Bayesian approaches.

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来源期刊
Knowledge and Information Systems
Knowledge and Information Systems 工程技术-计算机:人工智能
CiteScore
5.70
自引率
7.40%
发文量
152
审稿时长
7.2 months
期刊介绍: Knowledge and Information Systems (KAIS) provides an international forum for researchers and professionals to share their knowledge and report new advances on all topics related to knowledge systems and advanced information systems. This monthly peer-reviewed archival journal publishes state-of-the-art research reports on emerging topics in KAIS, reviews of important techniques in related areas, and application papers of interest to a general readership.
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