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The Classification of Scientific Literature for Its Topical Tracking on a Small Human-Prepared Dataset

机译:对小型人工准备数据集的局部跟踪对科学文献的分类

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The number of scientific publications is constantly growing to make their processing extremely time-consuming. We hypothesized that a user-defined literature tracking may be augmented by machine learning on article summaries. A specific dataset of 671 article abstracts was obtained and nineteen binary classification options using machine learning (ML) techniques on various text representations were proposed in a pilot study. 300 tests with resamples were performed for each classification option. The best classification option demonstrated AUC = 0.78 proving the concept in general and indicating a potential for solution improvement.
机译:科学出版物的数量不断增长,以使其处理非常耗时。 我们假设用户定义的文献跟踪可以通过机器学习来增强文章摘要。 在试点研究中提出了在试验研究中获得了671篇文章摘要的特定数据集,并在各种文本表示中使用了一九九二进制分类选项(ML)技术。 对每个分类选项进行300个与重建的测试。 最佳分类选项显示AUC = 0.78一般证明该概念,并表明解决方案改善的潜力。

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