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Discovering themes and trends in transportation research using topic modeling

机译:使用主题建模发现运输研究的主题和趋势

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Transportation research is a key area in both science and engineering. In this paper, we present an empirical analysis of 17,163 articles published in 22 leading transportation journals from 1990 to 2015. We apply a latent Dirichlet allocation (LDA) model on article abstracts to infer 50 key topics. We show that those characterized topics are both representative and meaningful, mostly corresponding to established sub-fields in transportation research. These identified fields reveal a research landscape for transportation. Based on the results of LDA, we quantify the similarity of journals and countries/regions in terms of their aggregated topic distributions. By measuring the variation of topic distributions over time, we find some general research trends, such as topics on sustainability, travel behavior and non -motorized mobility are becoming increasingly popular over time. We also carry out this temporal analysis for each journal, observing a high degree of consistency for most journals. However, some interesting anomaly, such as special issues on particular topics, are detected from temporal variation as well. By quantifying the temporal trends at the country/region level, we find that countries/regions display clearly distinguishable patterns, suggesting that research communities in different regions tend to focus on different sub-fields. Our results could benefit different parties in the academic community including researchers, journal editors and funding agencies in terms of identifying promising research topics/projects, seeking for candidate journals for a submission, and realigning focus for journal development. (C) 2017 Elsevier Ltd. All rights reserved.
机译:运输研究是科学和工程学中的关键领域。在本文中,我们对1990年至2015年在22种主要运输期刊上发表的17,163篇文章进行了实证分析。我们在文章摘要上应用了潜在的Dirichlet分配(LDA)模型来推断50个关键主题。我们证明了那些具有特色的主题既具有代表性又具有意义,主要对应于交通研究中已建立的子领域。这些确定的领域揭示了交通运输的研究前景。根据LDA的结果,我们根据期刊和国家/地区的汇总主题分布来量化其相似性。通过测量主题分布随时间的变化,我们发现一些一般的研究趋势,例如关于可持续性,旅行行为和非机动出行的主题随着时间的流逝变得越来越受欢迎。我们还对每个期刊进行了时间分析,从而观察到大多数期刊的高度一致性。但是,也会从时间变化中检测到一些有趣的异常,例如有关特定主题的特殊问题。通过量化国家/地区级别的时间趋势,我们发现国家/地区显示出明显可区分的模式,这表明不同地区的研究社区倾向于关注不同的子领域。我们的结果可以使学术界的不同方面受益,包括研究人员,期刊编辑和资助机构,这些方面可以确定有前途的研究主题/项目,寻找候选期刊以进行投稿以及重新调整期刊开发重点。 (C)2017 Elsevier Ltd.保留所有权利。

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