Analyzing Research Trends in Inorganic Materials Literature Using NLP

06/27/2021
by   Fusataka Kuniyoshi, et al.
0

In the field of inorganic materials science, there is a growing demand to extract knowledge such as physical properties and synthesis processes of materials by machine-reading a large number of papers. This is because materials researchers refer to many papers in order to come up with promising terms of experiments for material synthesis. However, there are only a few systems that can extract material names and their properties. This study proposes a large-scale natural language processing (NLP) pipeline for extracting material names and properties from materials science literature to enable the search and retrieval of results in materials science. Therefore, we propose a label definition for extracting material names and properties and accordingly build a corpus containing 836 annotated paragraphs extracted from 301 papers for training a named entity recognition (NER) model. Experimental results demonstrate the utility of this NER model; it achieves successful extraction with a micro-F1 score of 78.1 approach, we present a thorough evaluation on a real-world automatically annotated corpus by applying our trained NER model to 12,895 materials science papers. We analyze the trend in materials science by visualizing the outputs of the NLP pipeline. For example, the country-by-year analysis indicates that in recent years, the number of papers on "MoS2," a material used in perovskite solar cells, has been increasing rapidly in China but decreasing in the United States. Further, according to the conditions-by-year analysis, the processing temperature of the catalyst material "PEDOT:PSS" is shifting below 200 degree, and the number of reports with a processing time exceeding 5 h is increasing slightly.

READ FULL TEXT
research
09/27/2022

A general-purpose material property data extraction pipeline from large polymer corpora using Natural Language Processing

The ever-increasing number of materials science articles makes it hard t...
research
10/26/2022

Automatic Extraction of Materials and Properties from Superconductors Scientific Literature

The automatic extraction of materials and related properties from the sc...
research
02/11/2023

MatKB: Semantic Search for Polycrystalline Materials Synthesis Procedures

In this paper, we present a novel approach to knowledge extraction and r...
research
07/28/2023

Lessons in Reproducibility: Insights from NLP Studies in Materials Science

Natural Language Processing (NLP), a cornerstone field within artificial...
research
02/18/2020

Annotating and Extracting Synthesis Process of All-Solid-State Batteries from Scientific Literature

The synthesis process is essential for achieving computational experimen...
research
09/15/2020

MatScIE: An automated tool for the generation of databases of methods and parameters used in the computational materials science literature

The number of published articles in the field of materials science is gr...
research
04/05/2023

Large Language Models as Master Key: Unlocking the Secrets of Materials Science with GPT

The amount of data has growing significance in exploring cutting-edge ma...

Please sign up or login with your details

Forgot password? Click here to reset