Selecting critical features for biomedical data classification

2nd International Conference on Chemo and Bioinformatics ICCBIKG 2023 (136-139)

АУТОР(И) / AUTHOR(S): Ulfeta A. Marovac, Lejlija M. Memić, Aldina R. Avdić, Natasa Z. Djordjević, Zana Ć. Dolićanin, Goran M. Babić

Е-АДРЕСА / E-MAIL: : apljaskovic@np.ac.rs

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DOI: 10.46793/ICCBI23.136M

САЖЕТАК / ABSTRACT:

In this paper, the application of machine learning methods on large data sets with numerous features was investigated, with a focus on the identification of critical features in order to reduce the data and produce more accurate results. The research discusses feature extraction techniques for classifying two biomedical data sets with 62 and 71 features, respectively. The results were compared and presented using four classification techniques. The acquired results demonstrate that the selected important features typically produce more accurate results, or at least the same results while reducing the size of the data set and making data collecting easier.

КЉУЧНЕ РЕЧИ / KEYWORDS:

feature selection, machine learning, biomedical data classification, pregnant women

ЛИТЕРАТУРА / REFERENCES:

  • Y. Lyu, Y. Feng, K. Sakurai., A survey on feature selection techniques based on filtering methods for cyber attack detection, Information, 14.3 (2023) 191.
  • J. Tao, Y. Kang., Features importance analysis for emotional speech classification, Lecture Notes Comput Sci, 3784 (2015) 449–57.
  • T. W. Cenggoro, B. Mahesworo, A. Budiarto, J. Baurley, T. Suparyanto, B.Pardamean Features importance in classification models for colorectal cancer cases phenotype in Indonesia, Procedia Comput Science, 157 (2019) 313–320.
  • B. Zhang, C. Peng., Classification of high dimensional biomedical data based on feature selection using redundant removal, PloS one, 14.4 (2019) e0214406.