利用流形学习的气候变量集合预测登革热病例

Shermon S. Mathulamuthu, V. Asirvadam, S. Dass, B. Gill
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引用次数: 4

摘要

最近,马来西亚报告了登革热疫情,每年记录的病例可能上升到12万例。这一严重问题需要得到至关重要的关注,以预防登革热的发生,因为目前还没有找到药物。因此,需要进行研究以预防登革热的发生。本文提出了一种高精度登革热疫情预测模型,能准确预测登革热疫情。运用流形学习定理,通过保持各点之间的测地线距离,将维数降为1维。接下来的机器学习定理,如聚类(K-means技术)和线性回归已经完成了数据建模。K-means技术采用平均轮廓宽度法确定K个数。建立各聚类回归模型,SSE见表。总体而言,采用降维和聚类回归后的SSE较低。改进了回归拟合,得到了较好的拟合结果。
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Predicting dengue cases by aggregation of climate variable using manifold learning
Recently, Malaysia has been reported with dengue epidemic, that could rise up to 120, 000 cases recorded per year. This serious issue needs a vital look to prevent the dengue occurrences as it has no medicine yet to be found. Therefore, studies need to be done in order to prevent the dengue occurrences. This paper presents a high accuracy dengue occurrences prediction model which could forecast the dengue occurrences accurately. Manifold learning theorem has been performed to reduce the dimension into one by maintaining the geodesic distances between all points. Next machine learning theorem such as clustering (K-means technique) and linear regression has been done to model the data. Averaged silhouette width method was used to determine the number of K for K-means technique. Each cluster the regression model is built and SSE was shown in table. Overall, it's shown that there is low SSE achieved after applying dimension reduction and cluster based regression. The regression fit is improved and bring out better fit.
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