Published September 7, 2022 | Version v1
Conference paper Open

Generating large-scale network analyses of scientific landscapes in seconds using Dimensions on Google BigQuery

  • 1. Digital Science
  • 2. University of Pennsylvania

Description

The growth of large, programatically accessible bibliometrics databases presents new opportunities for complex analyses of publication metadata. In addition to providing a wealth of information about authors and institutions, databases such as those provided by Dimensions also provide conceptual information and links to entities such as grants, funders and patents. However, data is not the only challenge in evaluating patterns in scholarly work: These large datasets can be challenging to integrate, particularly for those unfamiliar with the complex schemas necessary for accommodating such heterogeneous information, and those most comfortable with data mining may not be as experienced in data visualisation. Here, we present an open-source Python library that streamlines the process accessing and diagramming subsets of the Dimensions on Google BigQuery database and demonstrate its use on the freely available Dimensions COVID-19 dataset. We are optimistic that this tool will expand access to this valuable information by streamlining what would otherwise be multiple complex technical tasks, enabling more researchers to examine patterns in research focus and collaboration over time.

Files

106.pdf

Files (739.7 kB)

Name Size Download all
md5:2b684d93ad6b489c7fca4dbbb568373b
739.7 kB Preview Download