Over the past two decades, academia has witnessed numerous tools and search engines which facilitate the retrieval procedure in the literature review process and aid researchers to review the literature with more ease and accuracy. These tools mostly work based on a simple textual input which supposedly encapsulates the primary keywords in the desired research areas. Such tools mainly suffer from the following shortcomings: (i) they rely on textual search queries that are expected to reflect all the desired keywords and concepts, and (ii) shallow results which makes following a paper through time via citations a cumbersome task. In this paper, we introduce GRASP, a search engine that retrieves scientific papers starting from a sub-graph query provided by the user, offering (i) a list of time papers based on the query and (ii) a graph with papers and authors as vertices and edges being cited and published-by. GRASPhas been created using a Neo4j graph database, based on DBLP and AMiner corpora provided by their API. Acting performance evaluation by asking ten computer science experts, we demonstrate how GRASPcan efficiently retrieve and rank the most related papers based on the user's input.

Nobani, N., Pelucchi, M., Perico, M., Scrivanti, A., Vaccarino, A. (2021). GRASP: Graph-based mining of scientific papers. In Proceedings of the 10th International Conference on Data Science, Technology and Applications, DATA 2021 (pp.176-183). SCITEPRESS [10.5220/0010518901760183].

GRASP: Graph-based mining of scientific papers

Nobani, N;Pelucchi, M;
2021

Abstract

Over the past two decades, academia has witnessed numerous tools and search engines which facilitate the retrieval procedure in the literature review process and aid researchers to review the literature with more ease and accuracy. These tools mostly work based on a simple textual input which supposedly encapsulates the primary keywords in the desired research areas. Such tools mainly suffer from the following shortcomings: (i) they rely on textual search queries that are expected to reflect all the desired keywords and concepts, and (ii) shallow results which makes following a paper through time via citations a cumbersome task. In this paper, we introduce GRASP, a search engine that retrieves scientific papers starting from a sub-graph query provided by the user, offering (i) a list of time papers based on the query and (ii) a graph with papers and authors as vertices and edges being cited and published-by. GRASPhas been created using a Neo4j graph database, based on DBLP and AMiner corpora provided by their API. Acting performance evaluation by asking ten computer science experts, we demonstrate how GRASPcan efficiently retrieve and rank the most related papers based on the user's input.
paper
Graph networks; Information retrieval; Literature review; Scientific documents;
English
10th International Conference on Data Science, Technology and Applications, DATA 2021 - 6 July 2021 through 8 July 2021
2021
Quix, C; Hammoudi, S; van der Aalst, W
Proceedings of the 10th International Conference on Data Science, Technology and Applications, DATA 2021
9789897585210
2021
176
183
open
Nobani, N., Pelucchi, M., Perico, M., Scrivanti, A., Vaccarino, A. (2021). GRASP: Graph-based mining of scientific papers. In Proceedings of the 10th International Conference on Data Science, Technology and Applications, DATA 2021 (pp.176-183). SCITEPRESS [10.5220/0010518901760183].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/466912
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