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The use of genetic algorithms and neural networks to approximate missing data in database

Missing data creates various problems in analysing and processing of
data in databases. Due to this reason missing data has been an area of

research in various disciplines for a quite long time. This report intro-

duces a new method aimed at approximating missing data in a database

using a combination of genetic algorithms and neural networks. The

proposed method uses genetic algorithm to minimise an error function

derived from an auto-associative neural network. The error function is

expressed as the square of the di®erence between the actual observa-

tions and predicted values from an auto-associative neural network. In

the event of missing data, all the values of the actual observations are

not known hence, the error function is decomposed to depend on the

known and unknown (missing) values. Multi Layer Perceptron (MLP),

and Radial Basis Function (RBF) neural networks are employed to train

the neural networks. The research focus also lies on the investigation

of using the proposed method in approximating missing data with great

accuracy as the number of missing cases within a single record increases.

The research also investigates the impact of using di®erent neural net-

work architecture in training the neural network and the approximation

ii

found to the missing values. It is observed that approximations of miss-

ing data obtained using the proposed model to be highly accurate with

95% correlation coe±cient between the actual missing values and cor-

responding approximated values using the proposed model. It is found

that results obtained using RBF are better than MLP. Results found us-

ing the combination of both MLP and RBF are found to be better than

those obtained using either MLP or RBF. It is also observed that there

is no signi¯cant reduction in accuracy of results as the number of missing

cases in a single record increases. Approximations found for missing data

are also found to depend on the particular neural network architecture

employed in training the data set.

Identiferoai:union.ndltd.org:netd.ac.za/oai:union.ndltd.org:wits/oai:wiredspace.wits.ac.za:10539/105
Date16 January 2006
CreatorsAbdella, Mussa Ismael
Source SetsSouth African National ETD Portal
LanguageEnglish
Detected LanguageEnglish
TypeThesis
Format354492 bytes, application/pdf, application/pdf

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