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Using Machine Learning to Uncover Latent Research Topics in Fishery Models

机译:利用机器学习在渔业模型中揭示潜在研究主题

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摘要

Modeling has become the most commonly used method in fisheries science, with numerous types of models and approaches available today. The large variety of models and the overwhelming amount of scientific literature published yearly can make it difficult to effectively access and use the output of fisheries modeling publications. In particular, the underlying topic of an article cannot always be detected using keyword searches. As a consequence, identifying the developments and trends within fisheries modeling research can be challenging and time-consuming. This paper utilizes a machine learning algorithm to uncover hidden topics and subtopics from peer-reviewed fisheries modeling publications and identifies temporal trends using 22,236 full-text articles extracted from 13 top-tier fisheries journals from 1990 to 2016. Two modeling topics were discovered: estimation models (a topic that contains the idea of catch, effort, and abundance estimation) and stock assessment models (a topic on the assessment of the current state of a fishery and future projections of fish stock responses and management effects). The underlying modeling subtopics show a change in the research focus of modeling publications over the last 26 years.
机译:建模已成为渔业科学中最常用的方法,目前有许多类型的型号和方法。大量的模型和大量的科学文学中发表的大量出版了每年可以使有效有效地访问和使用渔业建模出版物的产出。特别是,不能始终使用关键字搜索来检测文章的基本主题。因此,确定渔业建模研究中的发展和趋势可能是挑战性和耗时的。本文利用机器学习算法从同行评审的渔业建模出版物中揭示隐藏主题和副主学,并使用从1990年至2016年从13个顶级渔业期刊提取的22,236个全文文章识别时间趋势。发现了两个建模主题:估计模型(包含捕获,努力和丰富估计的想法的主题)和股票评估模型(关于评估当前国家的渔业和未来预测的渔业股票响应和管理效应的主题)。底层建模副主题显示了过去26年来建模出版物的研究重点的变化。

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