Automatic Classification of Algorithm Citation Functions in Scientific Literature

  • Tuarob, Suppawong
  • Kang, Sung Woo
  • Wettayakorn, Poom
  • Pornprasit, Chanatip
  • Sachati, Tanakitti
  • 외 2명
Citations

WEB OF SCIENCE

29
Citations

SCOPUS

37

초록

Computer sciences and related disciplines evolve around developing, evaluating, and applying algorithms. Typically, an algorithm is not developed from scratch, but uses and builds upon existing ones, which often are proposed and published in scholarly articles. The ability to capture this evolution relationship among these algorithms in scientific literature would not only allow us to understand how a particular algorithm is composed, but also shed light on large-scale analysis of algorithmic evolution through different temporal spans and thematic scales. We propose to capture such evolution relationship between two algorithms by investigating the knowledge represented in citation contexts, where authors explain how cited algorithms are used in their works. A set of heterogeneous ensemble machine-learning methods is proposed, where the combination of two base classifiers trained with heterogeneous feature types is used to automatically identify the algorithm usage relationship. The proposed heterogeneous ensemble methods achieve the best average F1 of 0.749 and 0.905 for fine-grained and binary algorithm citation function classification, respectively. The success of this study will allow us to generate a large-scale algorithm citation network from a collection of scholarly documents representing multiple time spans, venues, and fields of study. Such a network will be used as an instrument not only to answer critical questions in algorithm search, such as identifying the most influential and generalizable algorithms, but also to study the evolution of algorithmic development and trends over time.

키워드

Feature extractionMachine learning algorithmsMetadataClustering algorithmsApproximation algorithmsMachine learningComputer scienceAlgorithm citationensemble machine learningscholarly big dataalgorithmic evolutionMEDIA
제목
Automatic Classification of Algorithm Citation Functions in Scientific Literature
저자
Tuarob, SuppawongKang, Sung WooWettayakorn, PoomPornprasit, ChanatipSachati, TanakittiHassan, Saeed-UlHaddawy, Peter
DOI
10.1109/TKDE.2019.2913376
발행일
2020-10-01
유형
Article
저널명
IEEE Transactions on Knowledge and Data Engineering
32
10
페이지
1881 ~ 1896