The MIIS Eprints Archive

Direct Ascription of Missing Categorical Values in Survey Research Data

Kolev, V. and Noncheva, V. and Valkov, V. and Ilieva, E. and Dobreva, M. (2014) Direct Ascription of Missing Categorical Values in Survey Research Data. [Study Group Report]

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Abstract

The complete datasets are a prerequisite for sustainable analyses, robust an- alytics and unbiased interpretation of results. Missing values in a survey occur when no data value is stored for the variable in an observation. Missing data can have a significant effect on the conclusions that can be drawn from the data. Direct ascription is the process of replacing missing data with predicted values. The aim of this work is to describe an approach to direct ascription of missing categorical values in survey research data based both on the assumption that values in a data set are missing at random and on the implementation of the correspondence analysis.

Item Type:Study Group Report
Problem Sectors:Data processing
Decision making
Retail
Study Groups:European Study Group with Industry > ESGI 113 (Sofia, Bulgaria, Sep 14-18, 2014)
ID Code:691
Deposited By: Stuart Thomson2
Deposited On:16 May 2016 13:20
Last Modified:16 May 2016 13:20

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