Data Cleaning in Knowledge Discovery Database (KDD)-Data Mining

ANTONI, WIBOWO and FAUZIAH, ABDUL RAHMAN and MOHAMMAD, ISHAK DESA and NORHAIDAH, ABU HARIS (2014) Data Cleaning in Knowledge Discovery Database (KDD)-Data Mining. In: International Conference on Advances in Computer Science and Electronics Engineering - CSEE 2014, 08-09 March, 2014, Kuala Lumpur, Malaysia.

20140322_051542.pdf - Published Version

Download (602kB) | Preview
Official URL:


Data quality is a main issue in quality information management. Data quality problems occur anywhere in information systems. These problems are solved by data cleaning. Data cleaning (DC)is a process used to determine inaccurate, incomplete or unreasonable data and then improve the quality through correcting of detected errors and omissions. Generally data cleaning reduces errors and improves the data quality. It is well known that the process of correcting errors in data and eliminating bad records are time consuming and involve a tedious process but it cannot be ignored. Various process of DC have been discussed in the previous studies, but there’s no standard or formalized the DC process. Knowledge Discovery Database (KDD) is a tool that enables one to intelligently analyze and explore extensive data for effective decision making. The Cross-Industry Standard Process for Data Mining (CRISP-DM) is one of the KDD methodology often used for this purpose. This paper review and emphasize the important of DC in data preparation. The wrong analysis will probably turn out to be expensive failures. The future works was also being highlighted.

Item Type: Conference or Workshop Item (Paper)
Uncontrolled Keywords: Data Cleaning, Data Mining, DC Process, Missing Value
Depositing User: Mr. John Steve
Date Deposited: 13 May 2019 07:48
Last Modified: 13 May 2019 07:48

Actions (login required)

View Item View Item