e-ISSN : 0975-4024 p-ISSN : 2319-8613   
CODEN : IJETIY    

International Journal of Engineering and Technology

Home
IJET Topics
Call for Papers 2025
Author Guidelines
Special Issue
Current Issue
Articles in Press
Archives
Editorial Board
Reviewer List
Publication Ethics and Malpractice statement
Authors Publication Ethics
Policy of screening for plagiarism
Open Access Statement
Terms and Conditions
Contact Us

ABSTRACT

ISSN: 0975-4024

Title : An Analysis and Comparison of Various Missing Data Imputation Tools and Techniques
Authors : Vijayakumar Kuppusamy, Ilango Paramasivam
Keywords : Missing Data, Imputation,, Data Mining, Open Source Tools.
Issue Date : Oct-Nov 2016
Abstract :
The missing data and noisy data are common in a data set and the finding the effect it causes on the accuracy is very important to be determined. In statistics, missing data, or such values, occur when no data value is assigned for a field in a dataset. Missing data are a common occurrence and can have a significant effect on the conclusions that can be drawn from the data given or taken from warehouses. Missing data reduce the representativeness of the sample and can therefore distort/deviate inferences & conclusions about the population. This study aims at calculating the effect of missing values on Naïve Bayes algorithm by using two data sets that are lymphoma and breast cancer. The values are skipped in certain order of both the data set and accuracy is computed and results were compared in a table. Naïve Bayes is based on probalistic model.
Page(s) : 1910-1915
ISSN : 0975-4024 (Online) 2319-8613 (Print)
Source : Vol. 8, No.5
PDF : Download
DOI : 10.21817/ijet/2016/v8i5/160805408