Steps Towards an Infrastructure for Scholarly Synthesis
Joel Chan, Matthew Akamatsu, David Vargas, Lukas Kawerau, Michael, Gartner

TL;DR
This paper proposes a discourse-centric infrastructure for scholarly synthesis, emphasizing local, shareable discourse graphs to improve research collaboration, synthesis, and training, based on three years of design and deployment work.
Contribution
It introduces a design vision and empirical insights for developing an infrastructure that supports discourse-based knowledge synthesis in scholarly research.
Findings
Discourse graphs can enhance research synthesis and collaboration.
Current infrastructure lacks integration of discourse-centric models.
Empirical deployment shows feasibility of local discourse graph systems.
Abstract
Sharing, reusing, and synthesizing knowledge is central to the research process, both individually, and with others. These core functions are not supported by our formal scholarly publishing infrastructure: instead of the smooth functioning of functional infrastructure, researchers resort to laborious "hacks" and workarounds to "mine" publications for what they need, and struggle to efficiently share the resulting information with others. Information scientists have proposed an alternative infrastructure based on the more appropriately granular model of a discourse graph of claims, and evidence, along with key rhetorical relationships between them. However, despite significant technical progress on standards and platforms, the predominant infrastructure remains steadfastly document-based. Drawing from infrastructure studies, we locate the current infrastructural bottlenecks in the lack…
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Taxonomy
TopicsSemantic Web and Ontologies · Research Data Management Practices · Biomedical Text Mining and Ontologies
