COVID-19 Multidimensional Kaggle Literature Organization

Clicks: 10
ID: 283376
2021
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Abstract
The unprecedented outbreak of Severe Acute Respiratory Syndrome Coronavirus-2 (SARS-CoV-2), or COVID-19, continues to be a significant worldwide problem. As a result, a surge of new COVID-19 related research has followed suit. The growing number of publications requires document organization methods to identify relevant information. In this paper, we expand upon our previous work with clustering the CORD-19 dataset by applying multi-dimensional analysis methods. Tensor factorization is a powerful unsupervised learning method capable of discovering hidden patterns in a document corpus. We show that a higher-order representation of the corpus allows for the simultaneous grouping of similar articles, relevant journals, authors with similar research interests, and topic keywords. These groupings are identified within and among the latent components extracted via tensor decomposition. We further demonstrate the application of this method with a publicly available interactive visualization of the dataset.
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nicholas2021covid19 Use this key to autocite in the manuscript while using SciMatic Manuscript Manager or Thesis Manager
Authors Maksim E. Eren; Nick Solovyev; Chris Hamer; Renee McDonald; Boian S. Alexandrov; Charles Nicholas
Journal arXiv
Year 2021
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