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Leliana Harahap
Erwin Setiawan Panjaitan
Muhammad Fermi Pasha

Abstract

Breast cancer represents about 12% of all new cancer cases and 25% of all cancers in women. Early detection and classification of cancer is essential to save a person's life. The causes of breast cancer are multi-factorial and involve family history, obesity, hormones, radiation therapy, and even reproductive factors. Each year, one million new women are diagnosed with breast cancer, according to a World Health Organization report, half of them will die, because it is usually too late when doctors detect cancer. After the selected variable is then evaluated based on certain criteria. If the first selected variable meets the criteria for inclusion, the selection continues. The procedure stops, if no other variables meet the entry criteria and adds the variables one by one. The accuracy of the Support Vector Machine is influenced by several factors, including the comparison of the amount of training data and test data adjusted for k-fold validation. In the comparison of training data and test data the resulting accuracy reaches 97.68% with a total composition of 345 training data (50%) and 345 test data (50%). In the tests carried out, the accuracy of Support Vector Machine and Forward Selection was obtained at 97.68%.

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How to Cite
Harahap, L., Panjaitan, E. S. and Pasha, M. F. (2020) “Classification of Breast Cancer Using Support Vector Machine and Forward Selection”, Jurnal Mantik, 4(2), pp. 1424-1429. doi: 10.35335/mantik.Vol4.2020.957.pp1424-1429.
References
[1] Amrane, M., Oukid, S., Gagaoua, I., & Ensar, T. (2018). Breast Cancer Classification Using Machine Learning. IEEE .
[2] Aslan, M. F., Celik, Y., Sabanci, K., & Durdu, A. (2018). Breast Cancer Diagnosis by Different Machine Learning Methods Using Blood Analysis Data. International Journal of Intelligent Systems and Applications in Engineering .
[3] Chougrad, H., Zouaki, H., & Alheyane, O. (2018). Deep Convolutional Neural Networks for Breast Cancer Screening. Computer Methods and Programs in Biomedicine .
[4] Devarriya, D., Gulati, C., Mansharamani, V., Sakalle, A., & Bhardwaj, A. (2019). Unbalanced Breast Cancer Data Classi?cation Using Novel Fitness Functions in Genetic Programming. Journal Pre-proof .
[5] Ghaddar, B., & Sawaya, J. N. (2017). High Dimensional Data Classi?cation and Feature Selection using Support Vector Machines. European Journal of Operational Research .
[6] Guenther, N., & Schonlau, M. (2016). Support vector machines. The Stata Journal , 917–937.
[7] Hamad, Y. A., Simonov, K., & Naeem, M. B. (2018). Breast Cancer Detection and classification Using Artificial Neural Networks . IEEE .
[8] Houthuys, L., Langone, R., & Suykens, J. A. (2017). Multi-View Least Squares Support Vector Machines Classi?cation. Neurocomputing .
[9] Huang, J., Yu, Z. L., & Gu, Z. (2017). A Clustering Method based on Extreme Learning Machine. Neurocomputing.
[10] Jasmir, Nurmaini, S., Malik, R. F., Abidin, D. Z., Zarkasi, A., Kunang, Y. N., et al. (2018). Breast Cancer Classification Using Deep Learning . International Conference On Electrical Engineering and Computing Science ( ICECOS) .
[11] Liu, N., Shen, J., Xu, M., Gan, D., Qi, E. s., & Gao, B. (2018). Improved Cost-Sensitive Support Vector Machine Classifier for Breast Cancer Diagnosis. ResearchArticle , 13.
[12] Nie, F., Wang, X., Jordan, M. I., & Huang, H. (2016). The Constrained Laplacian Rank Algorithm for Graph-BasedClustering. Association for the Advancement of Arti?cial Intelligence .
[13] Nilashi, M., Ibrahim, O., Ahmadi, H., & Shahmoradi, L. (2017). A Knowledge A Knowledge A Knowledge A Knowledge--Based System for Breast Cancer Classification Based System for Breast Cancer Classification Based System for Breast Cancer Classification Based System for Breast Cancer Classification Using F Using F Usi. Telematics and Informatics .
[14] Obaid, O. I., Mohammed, M. A., Ghani, M. K., Mostafa, S. A., & Dhief, F. T. (2018). Evaluating the Performance of Machine Learning Techniques in the Classification of Wisconsin Breast Cancer . International Journal of Engineering & Technology .
[15] Omondiagbe, D. A., Veeramani, S., Sidhu, A. S., & Sidhu, A. S. (2019). Machine Learning Classification Techniques for Breast Cancer Diagnosis . Materials Science and Engineering .
[16] Sahu, H., Shrma, S., & Gondhalakar, S. (n.d.). A Brief Overview on Data Mining Survey . International Journal of Computer Technology and Electronics Engineering .
[17] Turgut, S., Dagtekin, M., & Ensari, T. (2018). Microarray Breast Cancer Data Classification Using Machine Learning Methods . IEEE .
[18] Verma, A., Kumar, A., & Kumar, M. S. (2019). Breast Cancer Prediction Using Support Vector Machine . International Research Journal of Engineering and Technology (IRJET) .