利用压缩与因果关系之间的权衡发现潜在因果变量♦

Q3 Engineering IFAC-PapersOnLine Pub Date : 2024-01-01 DOI:10.1016/j.ifacol.2024.08.304
Xinrui Gao , Yiman Huang , Yuri A.W. Shardt
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引用次数: 0

摘要

因果关系是物理世界中的一种基本关系,人类生活中的几乎所有活动都围绕着它展开。因果推理是指确定某一事件或行为是否导致特定结果的过程,其中涉及对数据中因果关系的评估。本文提出了一种在易于获取的数据中发现关键变量潜在因果表征的新方法。所提出的方法在压缩输入数据和学习到的潜变量与关键变量之间的因果关系之间进行权衡,从而去除输入数据中包含的无关信息,获得解耦的最强因果因素。通过引入变分约束和特定配置,优化目标被放宽为一个可处理的问题。这种方法将因果发现和推理压缩为一个模型,既能灵活应对下游任务,又能简化参数。对废气排放数据集的案例研究表明,与基线模型(具有相同超参数的变分信息瓶颈模型)相比,所提出的方法提高了预测性能。
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Discovering Latent Causal Variables Using a Trade-Off Between Compression and Causality♦

Causality is a fundamental relationship in the physical world, around which almost all activities of human life revolve. Causal inference refers to the process of determining whether an event or action caused a specific outcome, which involves the evaluation of cause-and-effect relationships in data. This paper presents a new approach to discover latent causal representations of crucial variables in easy-to-obtain data. The proposed method takes a form of trade-off between compression of input data and the causality between the learnt latent variables and critical variables, thereby removing the irrelevant information contained in input data and obtaining the decoupled, strongest causal factors. By introducing variational bounds and specific configurations, the optimisation objective is relaxed to a tractable problem. The approach compacts causal discovery and inference into one model, which is flexible to downstream tasks and parsimonious in the parameters. A case study on an exhaust-emission dataset shows that the proposed method improves the predictive performance over the baseline model, which is a variational information bottleneck model with the same hyperparameters.

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来源期刊
IFAC-PapersOnLine
IFAC-PapersOnLine Engineering-Control and Systems Engineering
CiteScore
1.70
自引率
0.00%
发文量
1122
期刊介绍: All papers from IFAC meetings are published, in partnership with Elsevier, the IFAC Publisher, in theIFAC-PapersOnLine proceedings series hosted at the ScienceDirect web service. This series includes papers previously published in the IFAC website.The main features of the IFAC-PapersOnLine series are: -Online archive including papers from IFAC Symposia, Congresses, Conferences, and most Workshops. -All papers accepted at the meeting are published in PDF format - searchable and citable. -All papers published on the web site can be cited using the IFAC PapersOnLine ISSN and the individual paper DOI (Digital Object Identifier). The site is Open Access in nature - no charge is made to individuals for reading or downloading. Copyright of all papers belongs to IFAC and must be referenced if derivative journal papers are produced from the conference papers. All papers published in IFAC-PapersOnLine have undergone a peer review selection process according to the IFAC rules.
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