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A Neural Autoencoder Approach for Document Ranking and Query Refinement in Pharmacogenomic Information Retrieval

机译:药物基因组信息检索中用于文档排名和查询优化的神经自动编码器方法

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In this study, we investigate learning-to-rank and query refinement approaches for information retrieval in the pharmacogenomic domain. The goal is to improve the information retrieval process of biomedical curators, who manually build knowledge bases for personalized medicine. We study how to exploit the relationships between genes, variants, drags, diseases and outcomes as features for document ranking and query refinement. For a supervised approach, we are faced with a small amount of annotated data and a large amount of unannotated data. Therefore, we explore ways to use a neural document auto-encoder in a semi-supervised approach. We show that a combination of established algorithms, feature-engineering and a neural auto-encoder model yield promising results in this setting.
机译:在这项研究中,我们调查了药物基因组学领域中信息检索的排名学习和查询优化方法。目的是改善生物医学策展人的信息检索过程,他们手动建立个性化医学的知识库。我们研究如何利用基因,变异,拖曳,疾病和结果之间的关系作为文档排名和查询细化的特征。对于有监督的方法,我们面临着少量的注释数据和大量的未注释数据。因此,我们探索了在半监督方法中使用神经文档自动编码器的方法。我们表明,在这种情况下,已建立的算法,特征工程和神经自动编码器模型的组合产生了可喜的结果。

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