Extracting the evolutionary backbone of scientific domains: The semantic main path network analysis approach based on citation context analysis

Author:

Jiang Xiaorui1ORCID,Liu Junjun2

Affiliation:

1. Research Centre for Computational Sciences and Mathematical Modelling Coventry University Coventry UK

2. Independent Researcher Jiaxing China

Abstract

AbstractMain path analysis is a popular method for extracting the scientific backbone from the citation network of a research domain. Existing approaches ignored the semantic relationships between the citing and cited publications, resulting in several adverse issues, in terms of coherence of main paths and coverage of significant studies. This paper advocated the semantic main path network analysis approach to alleviate these issues based on citation function analysis. A wide variety of SciBERT‐based deep learning models were designed for identifying citation functions. Semantic citation networks were built by either including important citations, for example, extension, motivation, usage and similarity, or excluding incidental citations like background and future work. Semantic main path network was built by merging the top‐K main paths extracted from various time slices of semantic citation network. In addition, a three‐way framework was proposed for the quantitative evaluation of main path analysis results. Both qualitative and quantitative analysis on three research areas of computational linguistics demonstrated that, compared to semantics‐agnostic counterparts, different types of semantic main path networks provide complementary views of scientific knowledge flows. Combining them together, we obtained a more precise and comprehensive picture of domain evolution and uncover more coherent development pathways between scientific ideas.

Funder

National Office for Philosophy and Social Sciences

Publisher

Wiley

Subject

Library and Information Sciences,Information Systems and Management,Computer Networks and Communications,Information Systems

Reference50 articles.

1. On Constructing Seminal Paper Genealogy

2. Batagelj V.(2003).Efficient algorithms for citation network analysis.https://arxiv.org/abs/cs/0309023

3. SciBERT: A Pretrained Language Model for Scientific Text

4. 10.1162/jmlr.2003.3.4-5.993

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