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Integration of gene normalization stages and co-reference resolution using a Markov logic network

机译:使用Markov逻辑网络整合基因标准化阶段和共参考解析

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Motivation: Gene normalization (GN) is the task of normalizing a textual gene mention to a unique gene database ID. Traditional top performing GN systems usually need to consider several constraints to make decisions in the normalization process, including filtering out false positives, or disambiguating an ambiguous gene mention, to improve system performance. However, these constraints are usually executed in several separate stages and cannot use each other's input/output interactively. In this article, we propose a novel approach that employs a Markov logic network (MLN) to model the constraints used in the GN task. Firstly, we show how various constraints can be formulated and combined in an MLN. Secondly, we are the first to apply the two main concepts of co-reference resolution-discourse salience in centering theory and transitivity-to GN models. Furthermore, to make our results more relevant to developers of information extraction applications, we adopt the instance-based precision/recall/F-measure (PRF) in addition to the article-wide PRF to assess system performance.Results: Experimental results show that our system outperforms baseline and state-of-the-art systems under two evaluation schemes. Through further analysis, we have found several unexplored challenges in the GN task.
机译:动机:基因标准化(GN)是将文本基因提及标准化为唯一基因数据库ID的任务。传统的性能最佳的GN系统通常需要考虑几个约束条件,以便在标准化过程中做出决策,包括滤除误报或消除歧义基因提及以提高系统性能。但是,这些约束通常在几个单独的阶段中执行,并且不能交互使用彼此的输入/输出。在本文中,我们提出了一种新颖的方法,该方法采用马尔可夫逻辑网络(MLN)对GN任务中使用的约束进行建模。首先,我们展示了如何在MLN中制定和组合各种约束。其次,我们是第一个将共参考分辨率的两个主要概念-话语显着性应用于对中和GN模型的居中理论。此外,为了使我们的结果与信息提取应用程序的开发人员更加相关,除了在整篇文章的PRF中采用了基于实例的精度/调用/ F度量(PRF)来评估系统性能。结果:实验结果表明,在两个评估方案下,我们的系统优于基准和最新系统。通过进一步的分析,我们发现了GN任务中有一些尚未探索的挑战。

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