Semantic Survey Methodology

From Openresearch
Revision as of 23:59, 9 November 2016 by Soeren (talk | contribs)
Jump to: navigation, search

Despite significant advances in technology, the way how research is done and especially communicated has not changed much. We have the vision, that ultimately researchers will work on a common knowledge base comprising comprehensive descriptions of their research, thus making research contributions transparent and comparable. In this article, we describe how surveys on research fields can be performed in a semantic way resulting in a knowledge graph describing the individual research problems, approaches, implementations and evaluations in a structured, comparable way. We illustrate our methodology with the example of ...

ToDo

  • select a narrow research field with many comparable approaches as an example - e.g. link discovery, named entity recognition, relationship extraction,
  • select 10-20 papers in this field
  • create pages for all papers in OpenResearch comprising key semantic information about the work described in the paper:
    • bibliographic data: title, abstract, authors, publication venues
    • semantic descriptions of the
      • problem,
      • approach - characteristics (lossless/fuzzy, ...),
      • implementation - programming language,
      • evaluation - dataset, precision, recall, performance