Upcoming Events

About AI4SciSci

From Newton's laws to quantum mechanics, what are the key factors driving the evolution of science? Science of Science (SciSci) is an emerging research field that bears the mission to answer this question with scholarly data — the digital trace of scientific endeavor and influxes. Recent years have witnessed many exciting advances, which have been documented in papers, patents, research grants and awards, paper citations, scientist collaboration and mobility. These data are becoming increasingly accessible in digital platforms, lending unprecedented opportunities to establish mathematical models to quantify our understanding of scientific evolution. Yet, scholarly big data has imposed new challenges for traditional SciSci research, in the sense that they are:

  1. heterogeneous and multi-modal (e.g., texts, figures, tables, equations)
  2. with complex topological structures (e.g., scholarly knowledge networks)
  3. continuously generated at a rapid pace.

Leveraging scholarly big data to answer key SciSci questions will require methodologies beyond traditional statistical modeling. Data Mining (DM) and artificial intelligence (AI), which have shown great potential to uncover novel knowledge from such massive data, are thus expected to take a crucial role at the frontier of SciSci research. Here we propose the AI4SciSci workshop, focused on empirical findings, methodological papers, theoretical underpinnings, and conceptual insights related to DM and AI in the broad research field of SciSci. By connecting the research communities of DM, AI, and science of science, this interdisciplinary event will not only introduce new data-centric tools to answer questions in the SciSci research, but also inspire the development of policy-relevant prediction tasks to push the frontiers of data mining research.