Improving the representation and conversion of mathematical formulae by considering their textual context

2018-05 | conference paper

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​Improving the representation and conversion of mathematical formulae by considering their textual context​
Schubotz, M.; Greiner-Petter, A.; Scharpf, P.; Meuschke, N.; Cohl, H. S. & Gipp, B. ​ (2018)
In:Chen, Jiangping; Gonçalves, Marcos André; Allen, Jeff M.; Fox, Edward A.; Kan, Min-Yen; Petras, Vivien​ (Eds.), ​Proceedings pp. 233​-242. ​JCDL '18: The 18th ACM/IEEE Joint Conference on Digital Libraries​, Fort Worth, Texas, USA.
ACM Digital Library. DOI: https://doi.org/10.1145/3197026.3197058 

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Authors
Schubotz, Moritz; Greiner-Petter, André; Scharpf, Philipp; Meuschke, Norman; Cohl, Howard S.; Gipp, Bela 
Editors
Chen, Jiangping; Gonçalves, Marcos André; Allen, Jeff M.; Fox, Edward A.; Kan, Min-Yen; Petras, Vivien
Abstract
Mathematical formulae represent complex semantic information in a concise form. Especially in Science, Technology, Engineering, and Mathematics, mathematical formulae are crucial for communicating information, e.g., in scientific papers, and to perform computations using computer algebra systems. Enabling computers to access the information encoded in mathematical formulae requires machine-readable formats that can represent both the presentation and content, i.e., the semantics, of formulae. Exchanging such information between systems additionally requires conversion methods for mathematical representation formats. We analyze how the semantic enrichment of formulae improves the format conversion process and show that considering the textual context of formulae reduces the error rate of such conversions. Our main contributions are: (1) providing an openly available benchmark dataset for the mathematical format conversion task consisting of a newly created test collection, an extensive, manually curated gold standard and task-specific evaluation metrics; (2) performing a quantitative evaluation of state-of-the-art tools for mathematical format conversions; (3) presenting a new approach that considers the textual context of formulae to reduce the error rate for mathematical format conversions. Our benchmark dataset facilitates future research on mathematical format conversions as well as research on many problems in mathematical information retrieval. Because we annotated and linked all components of formulae, e.g., identifiers, operators and other entities, to Wikidata entries, the gold standard can, for instance, be used to train methods for formula concept discovery and recognition. Such methods can then be applied to improve mathematical information retrieval systems, e.g., for semantic formula search, recommendation of mathematical content, or detection of mathematical plagiarism.
Issue Date
May-2018
Publisher
ACM Digital Library
Conference
JCDL '18: The 18th ACM/IEEE Joint Conference on Digital Libraries
ISBN
978-1-4503-5178-2
Conference Place
Fort Worth, Texas, USA
Event start
2018-06-03
Event end
2018-06-07
Language
English

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