Mitigating Biases in CORD-19 for Analyzing COVID-19 Literature

Author:

Kanakia Anshul,Wang Kuansan,Dong Yuxiao,Xie Boya,Lo Kyle,Shen Zhihong,Wang Lucy Lu,Huang Chiyuan,Eide Darrin,Kohlmeier Sebastian,Wu Chieh-Han

Abstract

On the behest of the Office of Science and Technology Policy in the White House, six institutions, including ours, have created an open research dataset called COVID-19 Research Dataset (CORD-19) to facilitate the development of question-answering systems that can assist researchers in finding relevant research on COVID-19. As of May 27, 2020, CORD-19 includes more than 100,000 open access publications from major publishers and PubMed as well as preprint articles deposited into medRxiv, bioRxiv, and arXiv. Recent years, however, have also seen question-answering and other machine learning systems exhibit harmful behaviors to humans due to biases in the training data. It is imperative and only ethical for modern scientists to be vigilant in inspecting and be prepared to mitigate the potential biases when working with any datasets. This article describes a framework to examine biases in scientific document collections like CORD-19 by comparing their properties with those derived from the citation behaviors of the entire scientific community. In total, three expanded sets are created for the analyses: 1) the enclosure set CORD-19E composed of CORD-19 articles and their references and citations, mirroring the methodology used in the renowned “A Century of Physics” analysis; 2) the full closure graph CORD-19C that recursively includes references starting with CORD-19; and 3) the inflection closure CORD-19I, that is, a much smaller subset of CORD-19C but already appropriate for statistical analysis based on the theory of the scale-free nature of the citation network. Taken together, all these expanded datasets show much smoother trends when used to analyze global COVID-19 research. The results suggest that while CORD-19 exhibits a strong tilt toward recent and topically focused articles, the knowledge being explored to attack the pandemic encompasses a much longer time span and is very interdisciplinary. A question-answering system with such expanded scope of knowledge may perform better in understanding the literature and answering related questions. However, while CORD-19 appears to have topical coverage biases compared to the expanded sets, the collaboration patterns, especially in terms of team sizes and geographical distributions, are captured very well already in CORD-19 as the raw statistics and trends agree with those from larger datasets.

Publisher

Frontiers Media SA

Reference30 articles.

Cited by 9 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Document Information Retrieval with Deep Learning;2024 International Conference on Advances in Modern Age Technologies for Health and Engineering Science (AMATHE);2024-05-16

2. Comprehensive Evaluation of CNN, RNN, and CRNN for document retrieval in Healthcare Systems;2024 5th International Conference on Recent Trends in Computer Science and Technology (ICRTCST);2024-04-09

3. Understanding progress in software citation: a study of software citation in the CORD-19 corpus;PeerJ Computer Science;2022-07-25

4. Funding COVID-19 research: Insights from an exploratory analysis using open data infrastructures;Quantitative Science Studies;2022

5. AI and the Infectious Medicine of COVID-19;Artificial Intelligence in Covid-19;2022

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