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Using Full-Text of Research Articles to Analyze Academic Impact of Algorithms

机译:使用研究论文全文来分析算法的学术影响

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摘要

Top-10 algorithms in data mining voted by experts were widely used in various domains. How about the academic impact of these algorithms in a special domain, e.g. Natural Language Processing (NLP)? To answer this question, this paper uses full-text corpus of research articles published in ACL conference to explore influence of the Top-10 data mining algorithms in NLP domain. Academic influence of algorithms is analyzed according to three aspects: number of papers which mention algorithm, mention frequency, and mention location of algorithm. What's more, we find the most popular algorithm in a particular task via correlation coefficient between algorithm and task. This research offers a new way for evaluating influence of algorithms quantitatively. Results show that there are obvious differences of influences among algorithms. Specifically, impact of SVM algorithm is significantly higher than the other algorithms. Moreover, the most related task resolved by each algorithm is different.
机译:专家投票选出的数据挖掘中的前10个算法已广泛应用于各个领域。这些算法在特殊领域的学术影响如何,例如自然语言处理(NLP)?为了回答这个问题,本文使用在ACL会议上发表的全文研究语料库来探讨Top-10数据挖掘算法在NLP领域中的影响。从三个方面分析了算法的学术影响力:提及算法的论文数,提及频率的论文和算法的位置。此外,通过算法与任务之间的相关系数,我们发现了特定任务中最受欢迎的算法。该研究为定量评估算法影响提供了一种新途径。结果表明,算法之间的影响存在明显差异。具体而言,SVM算法的影响力明显高于其他算法。而且,每种算法解决的最相关任务是不同的。

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