Litcius/Paper detail

Unleashing the Power of Knowledge Extraction from Scientific Literature in Catalysis

Yue Zhang, Cong Wang, Mya Soukaseum, Dionisios G. Vlachos, Hui Fang

2022Journal of Chemical Information and Modeling26 citationsDOIOpen Access PDF

Abstract

Valuable knowledge of catalysis is often hidden in a large amount of scientific literature. There is an urgent need to extract useful knowledge to facilitate scientific discovery. This work takes the first step toward the goal in the field of catalysis. Specifically, we construct the first information extraction benchmark data set that covers the field of catalysis and also develop a general extraction framework that can accurately extract catalysis-related entities from scientific literature with 90% extraction accuracy. We further demonstrate the feasibility of leveraging the extracted knowledge to help users better access relevant information in catalysis through an entity-aware search engine and a correlation analysis system.

Topics & Concepts

Construct (python library)Benchmark (surveying)Computer scienceField (mathematics)Knowledge extractionScientific literatureSet (abstract data type)Scientific fieldInformation extractionData scienceInformation retrievalWork (physics)Knowledge managementData miningEngineeringMathematicsGeographyGeodesyPure mathematicsProgramming languagePaleontologyMechanical engineeringBiologyMachine Learning in Materials ScienceData Quality and ManagementWeb Data Mining and Analysis