An Assisted Literature Review using Machine Learning Models to Recommend a Relevant Reference Papers List

Journal Title: International Scientific Research Organization Journal - Year 2017, Vol 2, Issue 2

Abstract

This paper proposed an assisted literature review prototype (STELLAR – Semantic Topics Ecosystem Learning-based Literature Assistant Review) based on a semantic metadata ecosystem (SMESE) to discover, rank and recommend the relevant papers for a specific topic. Using text and data mining models, machine learning models and a classification model, all of which learn from researchers’ annotated data and SMESE, STELLAR helps researchers to identify, rank and recommend reference papers for a specific literature review. When ranking a cited document as relevant to the literature review, STELLAR considered many criteria such as venue age, citation category and polarity, researchers’ annotated data, authors’ impact and affiliation institute, and others. STELLAR algorithms allows to: 1. Identify the relevant reference papers for building the literature review from the SMESE, which semantically harvests papers from the web and other sources. 2. Obtain the Literature Corpus radius by calculating the distance of each paper to the center of the Literature Corpus defined for a specific topic or area of research. 3. Assist the researcher in refining the list of reference papers relevant to a specific literature review. The performance of STELLAR was evaluated and compared to other approaches using a number of prototype simulations.

Authors and Affiliations

Ronald Brisebois, Apollinaire Nadembega , Philippe N’techobo, Alain Abran

Keywords

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  • EP ID EP313206
  • DOI 10.23958/isroj/vol02-i02/04
  • Views 54
  • Downloads 0

How To Cite

Ronald Brisebois, Apollinaire Nadembega, Philippe N’techobo, Alain Abran (2017). An Assisted Literature Review using Machine Learning Models to Recommend a Relevant Reference Papers List. International Scientific Research Organization Journal, 2(2), 1-24. https://europub.co.uk/articles/-A-313206