Knowledge Graph and Accurate Portrait Construction of Scientific and Technological Academic Conferences
Abstract
In recent years, with the continuous progress of science and technology, the number of scientific research achievements has increased rapidly.
As an exchange platform and medium for scientific research achievements, scientific and technological academic conferences have become increasingly abundant.
The convening of academic conferences brings large numbers of papers, researchers, institutions, projects, and research topics, but massive conference data also makes it difficult for researchers to obtain valuable information efficiently.
It is therefore meaningful to use deep learning, knowledge graph technology, semantic similarity calculation, and portrait modeling to mine core information from conference data.
This paper reviews the key technologies for constructing knowledge graphs and accurate portraits of scientific and technological academic conferences, including named entity recognition, semantic text similarity, trend prediction, graph storage, search engines, and visualization components.
These techniques jointly support the construction of conference knowledge services that help researchers acquire scientific information more quickly.
이 뉴스, 어떠셨어요?
한 번의 탭으로 반응을 남겨요 · 로그인 불필요