Support Vector Machine Kernel Functions Comparison | ||||
The International Undergraduate Research Conference | ||||
Volume 5, Issue 5, 2021, Page 84-88 PDF (1.01 MB) | ||||
Document Type: Original Article | ||||
DOI: 10.21608/iugrc.2021.245572 | ||||
View on SCiNiTO | ||||
Authors | ||||
Bishoy Abd-ElMassieh Aiad1; Karim Basem Zarif1; Zeyad Mahmoud Gadallah1; Hadeel Abd EL-kareem2 | ||||
1Arab Academy for Science Technology and Maritime Transport, Aswan. | ||||
2College of Computing and Information Technology, Arab Academy for Technology, Information and Maritime Transport, Aswan. | ||||
Abstract | ||||
This paper conducts a comparative analysis between several kernel functions of support vector machine learning classifier for (Surveillance), to determine which kernel function is better in determining the best one that can be used on medical diagnosis datasets for the best accuracy and performance. Its goal is to find the best kernel for the best accuracy and performance for medical diagnosis datasets and doing it through comparing 3 different kernels which are: ―Radial Basis Function‖, ―Linear Function‖, ―Polynomial Function‖. We used Support Vector Machine (SVM) algorithm in our training and testing while K folding (Cross-Validation) in our research to find the best accuracy. And we tested our kernel functions on a dataset called ―lungcancer.csv‖ from Kaggle and experimented on the dataset achieving good results in performance measures: accuracy, precision, sensitivity (Recall) and specificity. The dataset briefly talks about categories of COVID-19 surveillance case like Person without Symptoms (PWS) refers to people who show no symptoms, Person in Monitoring (PIM) refers to people under observation (suspected person) and Patient under Supervision (PUS) refers to patients under surveillance. | ||||
Keywords | ||||
Support Vector Machine; Radial Basis Function; Linear Function; Polynomial Function; Cross-Validation; COVID-19 Surveillance case | ||||
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