Abstract
Genetic algorithms have been utilized in many complex optimization and simulation tasks because of their powerful search method. In this research we studied whether the classification performance of the attribute weighted methods based on the nearest neighbour search can be improved when using the genetic algorithm in the evolution of attribute weighting. The attribute weights in the starting population were based on the weights set by the application area experts and machine learning methods instead of random weight setting. The genetic algorithm improved the total classification accuracy and the median true positive rate of the attribute weighted k -nearest neighbour method using neighbour’s class-based attribute weighting. With other methods, the changes after genetic algorithm were moderate.
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CITATION STYLE
Varpa, K., Iltanen, K., & Juhola, M. (2014). Genetic Algorithm Based Approach in Attribute Weighting for a Medical Data Set. Journal of Computational Medicine, 2014, 1–11. https://doi.org/10.1155/2014/526801
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