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Towards Predicting Trend of Scientific Research Topics using Topic Modeling

机译:使用主题建模来预测科研主题的趋势

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This paper presents an alternative method to study and forecast the trend of research topics. Prediction of scientific research topics’ trend can be conducted using subjective judgments of experts or quantitative analysis. Due to the fact that subjective judgments of experts might be biased, researchers have been employing quantitative analysis such as bibliometrics, scientometrics, or informetrics. However, using these measures has limitations which require the use of an alternative approach. Results of the scientific research have been digitized and stored as news, scientific articles, and books. Such abundant information can be analyzed, taking the whole content of the papers into account. Hence, this paper proposes prediction of the trend of research topics using topic modeling. The proposed method was experimented using the proceedings of the International Conference on Computational Science (ICCS) which contains a total of 5982 papers over seventeen years (2001-2017). Non-negative Matrix Factorization (NMF) topic modeling method was utilized to discover topics. The result was structured as time series data and used to predict the trend of research topics. Auto-Regressive Integrated Moving Averages (ARIMA) prediction method was implemented and the performance of the model was evaluated using Root Mean Squared Error (RMSE). The proposed method may allow researchers, policy makers, funding agencies, and government to understand the current and the future state of research areas and take corrective actions.
机译:本文提出了一种替代方法来研究和预测研究主题的趋势。可以使用专家的主观判断或定量分析来预测科学研究主题的趋势。由于专家的主观判断可能会产生偏差,因此研究人员一直在使用定量分析,例如文献计量学,科学计量学或信息计量学。但是,使用这些措施存在局限性,需要使用替代方法。科学研究的结果已被数字化并存储为新闻,科学文章和书籍。可以考虑论文的全部内容来分析如此丰富的信息。因此,本文提出了使用主题建模来预测研究主题趋势的方法。使用国际计算科学会议(ICCS)的会议程序对提出的方法进行了实验,该会议包含十七年(2001-2017)总计5982篇论文。利用非负矩阵分解(NMF)主题建模方法发现主题。结果被构造为时间序列数据,并用于预测研究主题的趋势。实现了自回归综合移动平均(ARIMA)预测方法,并使用均方根误差(RMSE)评估了模型的性能。所提出的方法可以使研究人员,政策制定者,资助机构和政府了解研究领域的当前和未来状态并采取纠正措施。

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