元学习框架在生物信息学推理系统设计中的应用。

Pub Date : 2015-01-01 DOI:10.1504/ijdmb.2015.066775
Tomás Arredondo, Wladimir Ormazábal
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引用次数: 3

摘要

本文描述了一个元学习者推理系统开发框架,并在生物信息学推理系统的实现中进行了应用和测试。这些推理系统用于对细菌代谢途径图中包含的最佳候选物进行系统分类。这种基于元学习器的方法利用了一个工作流,用户提供反馈和最终分类决策,这些决策与分析的基因序列一起存储,用于定期推理系统训练。该推理系统进行了训练,并与三个不同的数据集有关的芳香族化合物的细菌降解测试。对基于元学习器的框架的分析包括对比几种不同参数的不同优化方法。所得到的推理系统还与其他标准分类方法进行了对比,观察到准确的预测能力。
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Meta-learning framework applied in bioinformatics inference system design.

This paper describes a meta-learner inference system development framework which is applied and tested in the implementation of bioinformatic inference systems. These inference systems are used for the systematic classification of the best candidates for inclusion in bacterial metabolic pathway maps. This meta-learner-based approach utilises a workflow where the user provides feedback with final classification decisions which are stored in conjunction with analysed genetic sequences for periodic inference system training. The inference systems were trained and tested with three different data sets related to the bacterial degradation of aromatic compounds. The analysis of the meta-learner-based framework involved contrasting several different optimisation methods with various different parameters. The obtained inference systems were also contrasted with other standard classification methods with accurate prediction capabilities observed.

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