FEATURE DIMINUTION BY HYBRID ALGORITHM FOR IMPROVING THE SUCCESS RATE FOR IVF TREATMENT
Keywords:
ANT COLONY, RELATIVE REDUCT ALGORITHM, SUCCESS RATE, FEATURE REDUCTION, ACCURACY.Abstract
Infertility is the most common problem faced by today’s generation. The factors like environment, genetic or personal
characteristics are responsible for these problems. Different infertility treatments like IVF, IUI etc are used to treat those infertile
people. But the cost and emotions beyond each and every cycle of IVF treatment is very high and also the success rate differs
from person to person. So, there is a need to find a system which would predict the outcome of IVF to motivate the people both
in psychologically and financially. Many Data Mining techniques are applied to predict the outcome of the IVF treatment.
Reducing the unwanted features which affects the quality of result is one of the significant tasks in Data Mining. This paper
proposes a hybrid algorithm which combines the core features of Ant Colony Optimization Algorithm and Relative Reduct
Theory for Feature Reduction. In this work, the proposed Algorithm is compared with the existing related algorithms. It is
evident from the results that the proposed algorithm achieved its target of reducing the features to minimum numbers without
compromising the core knowledge of the system to estimate the success rate.
Metrics
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2021 Pakistan Journal of Biotechnology
This work is licensed under a Creative Commons Attribution 4.0 International License.