Knowledge Discovery in Databases: An Information Retrieval Perspective

Authors

  • Cheng Soon Ong MIMOS Berhad Technology Park Malaysia

Keywords:

Data mining, Knowledge discovery, Database, Statistical techniques, Machine learning

Abstract

The current trend of increasing capabilities in data generation and collection has resulted in an urgent need for data mining applications, also called knowledge discovery in databases. This paper identifies and examines the issues involved in extracting useful grains of knowledge from large amounts of data.

It describes a framework to categorise data mining systems. The author also gives an overview of the issues pertaining to data pre processing, as well as various information gathering methodologies and techniques. The paper covers some popular tools such as classification, clustering, and generalisation. A summary of statistical and machine learning techniques used currently is also provided.

Downloads

Download data is not yet available.

Downloads

Published

2000-12-01

How to Cite

Ong, C. S. (2000). Knowledge Discovery in Databases: An Information Retrieval Perspective. Malaysian Journal of Computer Science, 13(2), 54–63. Retrieved from https://mjir.um.edu.my/index.php/MJCS/article/view/5834