Low Percentage Missing Imputation using KNN, NB and DT
International Journal of Science and Research (IJSR)

International Journal of Science and Research (IJSR)
www.ijsr.net | Open Access | Fully Refereed | Peer Reviewed International Journal

ISSN: 2319-7064

Research Paper | Computer Methods in Applied Mechanics and Engineering | Malaysia | Volume 8 Issue 10, October 2019

Low Percentage Missing Imputation using KNN, NB and DT

Abdullah Hussein Al-Amoodi

The objective of this research is to test data imputation for Missing data over 7 cases. Different machine learning algorithms to impute the missing data were tested and evaluated: K-nearest Neighbor (KNN), Nave Bayes (NB) and Decision Tree (DT). Evaluation was done using t-test for the experiment with different configurations (i.e. 5 %, 10 % missing). The result of the experiment shows that KNN has scored better results compared with Nave Bayes and Decision Tree. In conclusion, it is clear that machine learning algorithms can be used for missing data imputation. The implications of this research shows promising potentials for the utilization of KNN

Keywords: Missing Data, Imputation, and Machine Learning Imputation

Edition: Volume 8 Issue 10, October 2019

Pages: 1643 - 1645

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Abdullah Hussein Al-Amoodi, "Low Percentage Missing Imputation using KNN, NB and DT", International Journal of Science and Research (IJSR), https://www.ijsr.net/search_index_results_paperid.php?id=ART20202271, Volume 8 Issue 10, October 2019, 1643 - 1645

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