Numerous approaches have been proposed to discover causal dependencies in machine learning and data mining; among them, the state-of-the-art VAR-LiNGAM (short for Vector Auto-Regressive Linear Non-Gaussian Acyclic Model) is a desirable approach to reveal both the instantaneous and time-lagged relationships. However, all the obtained VAR matrices need to be analyzed to infer the final causal graph, leading to a rise in the number of parameters. To address this issue, we propose the CGP-LiNGAM (short for Causal Graph Process-LiNGAM), which has significantly fewer model parameters and deals with only one causal graph for interpreting the causal relations by exploiting Graph Signal Processing (GSP).
翻译:现已提出许多办法,以发现机器学习和数据开采方面的因果关系;其中,先进的VAR-LiNGAM(VAR-LiNGAM)是揭示瞬时和时滞关系的可取办法,但是,所有获得的VAR矩阵都需要分析,以推断最终因果图,导致参数增加;为解决这一问题,我们提议CGP-LiNGAM(Causal图-Process-LiNGAM)(Causal Process-LiNGAM),该模型参数要少得多,只用一个因果图来解释因果关系,利用图象信号处理(GSP)来解释因果关系。