We propose a semi-automatic staging area for efficiently building an accurate database of experimental physical properties of superconductors from literature, called SuperCon2, to enrich the existing manually-built superconductor database SuperCon. Here we report our curation interface (SuperCon2 Interface) and a workflow managing the state transitions of each examined record, to validate the dataset of superconductors from PDF documents collected using Grobid-superconductors in a previous work. This curation workflow allows both automatic and manual operations, the former contains anomaly detection'' that scans new data identifying outliers, and a training data collector'' mechanism that collects training data examples based on manual corrections. Such training data collection policy is effective in improving the machine-learning models with a reduced number of examples. For manual operations, the interface (SuperCon2 interface) is developed to increase efficiency during manual correction by providing a smart interface and an enhanced PDF document viewer. We show that our interface significantly improves the curation quality by boosting precision and recall as compared with the traditional ``manual correction''. Our semi-automatic approach would provide a solution for achieving a reliable database with text-data mining of scientific documents.
Semi-automatic staging area for high-quality structured data extraction from scientific literature
A semi-automatic system called SuperCon2 Interface enhances the curation of superconductor property databases by integrating anomaly detection, training data collection, and a smart document viewer, improving precision and recall.
- Year
- 2023
- Venue
- arXiv 2023
- Authors
- 10
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2309.10923v2ARXIV-DEFAULT
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