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Machine Learning Model for Imbalanced Cholera Dataset in Tanzania.

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dc.creator Leo, Judith
dc.creator Luhanga, Edith
dc.creator Michael, Kisangiri
dc.date 2020-10-12T06:54:32Z
dc.date 2020-10-12T06:54:32Z
dc.date 2019-07-25
dc.date.accessioned 2022-10-25T09:15:51Z
dc.date.available 2022-10-25T09:15:51Z
dc.identifier https://doi.org/10.1155/2019/9397578
dc.identifier https://dspace.nm-aist.ac.tz/handle/20.500.12479/976
dc.identifier.uri http://hdl.handle.net/123456789/94641
dc.description This research article published by Hindawi, 2019
dc.description Cholera epidemic remains a public threat throughout history, affecting vulnerable population living with unreliable water and substandard sanitary conditions. Various studies have observed that the occurrence of cholera has strong linkage with environmental factors such as climate change and geographical location. Climate change has been strongly linked to the seasonal occurrence and widespread of cholera through the creation of weather patterns that favor the disease's transmission, infection, and the growth of , which cause the disease. Over the past decades, there have been great achievements in developing epidemic models for the proper prediction of cholera. However, the integration of weather variables and use of machine learning techniques have not been explicitly deployed in modeling cholera epidemics in Tanzania due to the challenges that come with its datasets such as imbalanced data and missing information. This paper explores the use of machine learning techniques to model cholera epidemics with linkage to seasonal weather changes while overcoming the data imbalance problem. Adaptive Synthetic Sampling Approach (ADASYN) and Principal Component Analysis (PCA) were used to the restore sampling balance and dimensional of the dataset. In addition, sensitivity, specificity, and balanced-accuracy metrics were used to evaluate the performance of the seven models. Based on the results of the Wilcoxon sign-rank test and features of the models, XGBoost classifier was selected to be the best model for the study. Overall results improved our understanding of the significant roles of machine learning strategies in health-care data. However, the study could not be treated as a time series problem due to the data collection bias. The study recommends a review of health-care systems in order to facilitate quality data collection and deployment of machine learning techniques.
dc.format application/pdf
dc.language en
dc.publisher Hindawi
dc.subject Research Subject Categories::TECHNOLOGY
dc.title Machine Learning Model for Imbalanced Cholera Dataset in Tanzania.
dc.type Article


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