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Margin based ontology sparse vector learning algorithm and applied in biology science

机译:基于余量的本体稀疏矢量学习算法及其在生物学中的应用

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摘要

In biology field, the ontology application relates to a large amount of genetic information and chemical information of molecular structure, which makes knowledge of ontology concepts convey much information. Therefore, in mathematical notation, the dimension of vector which corresponds to the ontology concept is often very large, and thus improves the higher requirements of ontology algorithm. Under this background, we consider the designing of ontology sparse vector algorithm and application in biology. In this paper, using knowledge of marginal likelihood and marginal distribution, the optimized strategy of marginal based ontology sparse vector learning algorithm is presented. Finally, the new algorithm is applied to gene ontology and plant ontology to verify its efficiency.
机译:在生物学领域,本体的应用涉及大量的遗传信息和分子结构的化学信息,这使得本体概念的知识能够传达大量的信息。因此,在数学上,与本体概念相对应的向量的维数通常很大,从而提高了对本体算法的更高要求。在这种背景下,我们考虑了本体稀疏矢量算法的设计及其在生物学中的应用。本文利用边际似然和边际分布知识,提出了基于边际的本体稀疏矢量学习算法的优化策略。最后,将该新算法应用于基因本体和植物本体,以验证其有效性。

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