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首页> 外文期刊>Journal of biomedical informatics. >Applying hybrid reasoning to mine for associative features in biological data.
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Applying hybrid reasoning to mine for associative features in biological data.

机译:将混合推理应用于生物数据中的关联特征。

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摘要

We develop the means to mine for associative features in biological data. The hybrid reasoning schema for deterministic machine learning and its implementation via logic programming is presented. The methodology of mining for correlation between features is illustrated by the prediction tasks for protein secondary structure and phylogenetic profiles. The suggested methodology leads to a clearer approach to hierarchical classification of proteins and a novel way to represent evolutionary relationships. Comparative analysis of Jasmine and other statistical and deterministic systems (including Explanation-Based Learning and Inductive Logic Programming) are outlined. Advantages of using deterministic versus statistical data mining approaches for high-level exploration of correlation structure are analyzed.
机译:我们开发了一种手段来挖掘生物学数据中的关联特征。提出了确定性机器学习的混合推理模式及其通过逻辑编程的实现。蛋白质二级结构和系统发育谱的预测任务说明了挖掘特征之间相关性的方法。所提出的方法论导致了一种更清晰的蛋白质分级分类方法,以及一种代表进化关系的新颖方法。概述了茉莉花与其他统计和确定性系统(包括基于解释的学习和归纳逻辑编程)的比较分析。分析了使用确定性与统计数据挖掘方法进行关联结构高级探索的优势。

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