SemCaDo: A serendipitous strategy for causal discovery and ontology evolution

作者:

Highlights:

摘要

Within the last years, probabilistic causality has become a very active research topic in artificial intelligence and statistics communities. Due to its high impact in various applications involving reasoning tasks, machine learning researchers have proposed a number of techniques to learn Causal Bayesian Networks. Within the existing works in this direction, few studies have explicitly considered the role that decisional guidance might play to alternate between observational and experimental data processing. In this paper, we go further by introducing a serendipitous strategy to elucidate semantic background knowledge provided by the domain ontology to learn the causal structure of Bayesian Networks. We also complement our contribution with an enrichment process by which it will be possible to reuse these causal discoveries, support the evolving character of the semantic background and make an ontology evolution. Finally, the proposed method will be validated through simulations and real data analysis.

论文关键词:Causal Bayesian Networks,Domain ontologies,Serendipity,Decisional guidance,Causal discovery,Experimental data,Ontology evolution

论文评审过程:Received 25 May 2013, Revised 4 December 2014, Accepted 5 December 2014, Available online 17 December 2014.

论文官网地址:https://doi.org/10.1016/j.knosys.2014.12.006