Data Science and Applications

Data Science and Applications

Using Machine Learning Approaches for Prediction of the Types of Asthmatic Allergy across the Turkey

Yazarlar: Sevinç İlhan Omurca, Ekin Ekinci, Bengisu Çakmak, Selin Gizem Özkan

Cilt 2 , Sayı 2 , 2019 , Sayfalar 8-12

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Özet: Nowadays, allergy is thought to be an important cause of frequent occurrence of diseases in the society we live in. Hence, finding out relation between patient characteristic variables such as age, sex and type of allergic diseases such as asthma, allergic rhinitis, food allergy, allergic dermatitis and so on is the main objective among allergy researchers. In this study, we propose to design an intelligent diagnostic assistant for prediction of the type of an allergic disease across Turkey automatically by using well-known machine learning algorithms such as Decision Tree, Logistic Regression, Support Vector Machines (SVM), K Nearest Neighbor (kNN) and ensemble classifiers. In experiments, an allergic diseases dataset, which is taken from Kocaeli University Research and Application Hospital, is utilized. As a result, in detecting 18 different allergy diagnoses, the maximum accuracy rate of 77% is achieved with majority voting.


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BibTex
KOPYALA
@article{2019, title={Using Machine Learning Approaches for Prediction of the Types of Asthmatic Allergy across the Turkey}, volume={2}, number={8–12}, publisher={Data Science and Applications}, author={Sevinç İlhan Omurca, Ekin Ekinci, Bengisu Çakmak, Selin Gizem Özkan}, year={2019} }
APA
KOPYALA
Sevinç İlhan Omurca, Ekin Ekinci, Bengisu Çakmak, Selin Gizem Özkan. (2019). Using Machine Learning Approaches for Prediction of the Types of Asthmatic Allergy across the Turkey (Vol. 2). Vol. 2. Data Science and Applications.
MLA
KOPYALA
Sevinç İlhan Omurca, Ekin Ekinci, Bengisu Çakmak, Selin Gizem Özkan. Using Machine Learning Approaches for Prediction of the Types of Asthmatic Allergy across the Turkey. no. 8–12, Data Science and Applications, 2019.