Litcius/Paper detail

Knowledge Mining: A Cross-disciplinary Survey

Yong Rui, Vicente Iván Sánchez Carmona, Mohsen Pourvali, Yun Xing, Wei-Wen Yi, Huibin Ruan, Yu Zhang

2022Machine Intelligence Research18 citationsDOIOpen Access PDF

Abstract

Abstract Knowledge mining is a widely active research area across disciplines such as natural language processing (NLP), data mining (DM), and machine learning (ML). The overall objective of extracting knowledge from data source is to create a structured representation that allows researchers to better understand such data and operate upon it to build applications. Each mentioned discipline has come up with an ample body of research, proposing different methods that can be applied to different data types. A significant number of surveys have been carried out to summarize research works in each discipline. However, no survey has presented a cross-disciplinary review where traits from different fields were exposed to further stimulate research ideas and to try to build bridges among these fields. In this work, we present such a survey.

Topics & Concepts

DisciplineCross disciplinaryData scienceComputer scienceRepresentation (politics)Natural (archaeology)SociologyGeographySocial sciencePolitical scienceLawArchaeologyPoliticsData Mining Algorithms and ApplicationsTopic ModelingAdvanced Text Analysis Techniques