Knowledge Management System with NLP-Assisted Annotations: A Brief
Survey and Outlook
- URL: http://arxiv.org/abs/2206.07304v1
- Date: Wed, 15 Jun 2022 05:20:38 GMT
- Title: Knowledge Management System with NLP-Assisted Annotations: A Brief
Survey and Outlook
- Authors: Baihan Lin
- Abstract summary: Traditional databases are usually disjoint with logging systems.
We propose a unified framework that utilizes relational databases to log hierarchical information.
This framework of knowledge management system enables novel functionalities encompassing improved hierarchical notetaking, AI-assisted brainstorming, and multi-directional relationships.
- Score: 13.173307471333619
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Knowledge management systems are in high demand for industrial researchers,
chemical or research enterprises, or evidence-based decision making. However,
existing systems have limitations in categorizing and organizing paper insights
or relationships. Traditional databases are usually disjoint with logging
systems, which limit its utility in generating concise, collated overviews. In
this work, we briefly survey existing approaches of this problem space and
propose a unified framework that utilizes relational databases to log
hierarchical information to facilitate the research and writing process, or
generate useful knowledge from references or insights from connected concepts.
This framework of knowledge management system enables novel functionalities
encompassing improved hierarchical notetaking, AI-assisted brainstorming, and
multi-directional relationships. Potential applications include managing
inventories and changes for manufacture or research enterprises, or generating
analytic reports with evidence-based decision making.
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