A method for automated temporal knowledge acquisition applied to sleep-related breathing disorders

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This paper presents a method for the discovery of temporal patterns in multivariate time series and their conversion into a linguistic knowledge representation applied to sleep-related breathing disorders. The main idea lies in introducing several abstraction levels that allow a step-wise identification of temporal patterns. Self-organizing neural networks are used to discover elementary patterns in the time series. Machine learning (ML) algorithms use the results of the neural networks to automatically generate a rule-based description. At the next levels, temporal grammatical rules are inferred. This method covers one of the main “bottlenecks” in the design of knowledge-based systems, namely, the knowledge acquisition problem. An evaluation of the rules lead to an overall sensitivity of 0.762, and a specificity of 0.758.

论文关键词:Temporal-abstraction,Machine learning,Grammatical inference,Self-organizing neural networks,Sleep-related breathing disorders

论文评审过程:Received 17 April 2000, Revised 8 July 2000, Accepted 18 June 2001, Available online 3 November 2001.

论文官网地址:https://doi.org/10.1016/S0933-3657(01)00089-6