Abstract:
In this position paper, we describe research on knowledge graph-empowered materials science prediction and discovery. The research consists of several key components incl...Show MoreMetadata
Abstract:
In this position paper, we describe research on knowledge graph-empowered materials science prediction and discovery. The research consists of several key components including ontology mapping, materials data annotation, and information extraction from unstructured scholarly articles. We argue that although big data generated by simulations and experiments have motivated and accelerated the data-driven science, the distribution and heterogeneity of materials science-related big data hinders major advancements in the field. Knowledge graphs, as semantic hubs, integrate disparate data and provide a feasible solution to addressing this challenge. We design a knowledge-graph based approach for data discovery, extraction, and integration in materials science.
Date of Conference: 15-18 December 2021
Date Added to IEEE Xplore: 13 January 2022
ISBN Information:
Funding Agency:
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Discovery Of Materials ,
- Big Data ,
- Information Extraction ,
- Materials Science ,
- Heterogeneous Data ,
- Discovery Data ,
- Position Paper ,
- Extraction Approach ,
- Knowledge Discovery ,
- Scientific Integrity ,
- Disparate Data ,
- Machine Learning ,
- Learning Algorithms ,
- Unstructured Data ,
- Named Entity Recognition ,
- Knowledge Extraction ,
- Relation Extraction ,
- Unstructured Text ,
- Semantic Integration ,
- Domain Ontology ,
- Inorganic Crystal Structure Database ,
- Materials Science Research ,
- Pre-trained Language Models ,
- Semantic Extraction ,
- Semantic Annotation ,
- Data-driven Research
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Discovery Of Materials ,
- Big Data ,
- Information Extraction ,
- Materials Science ,
- Heterogeneous Data ,
- Discovery Data ,
- Position Paper ,
- Extraction Approach ,
- Knowledge Discovery ,
- Scientific Integrity ,
- Disparate Data ,
- Machine Learning ,
- Learning Algorithms ,
- Unstructured Data ,
- Named Entity Recognition ,
- Knowledge Extraction ,
- Relation Extraction ,
- Unstructured Text ,
- Semantic Integration ,
- Domain Ontology ,
- Inorganic Crystal Structure Database ,
- Materials Science Research ,
- Pre-trained Language Models ,
- Semantic Extraction ,
- Semantic Annotation ,
- Data-driven Research
- Author Keywords