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Forecasting Dengue Fever Using Machine Learning Regression Techniques

机译:用机器学习回归技术预测登革热

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With the increase in life-threatening viral diseases, the need for extensive research on its causes, recovery, and methods of prevention becomes crucial. Some of these diseases are dangerous and sometimes they might cause death. Dengue Fever remains one of the important public health issues expanded several areas all around the world. Dengue Fever spread could be affected by several factors such as climate conditions. In this paper, we analyze a weather-related dataset to predict the number of illness cases per week in the cities of San Juan and Iquitos by using several machine learning regression algorithms. To achieve this, we utilized and compared different machine learning regression techniques, the performance is evaluated using the Mean Absolute Error (MAE). As a result, the Poisson Regression Model achieved the best ratios and the lowest mean absolute error ratio of 25.6%.
机译:随着危及生命的病毒疾病的增加,需要对其原因,恢复和预防方法进行广泛的研究变得至关重要。 其中一些疾病是危险的,有时他们可能会导致死亡。 登革热仍然是重要的公共卫生问题之一,扩大了世界各地的几个地区。 登革热蔓延可能受到气候条件等几个因素的影响。 在本文中,我们通过使用多种机器学习回归算法来分析与天气相关的数据集预测圣胡安和Iquitos的城市每周的疾病病例数。 为此,我们利用并比较了不同的机器学习回归技术,使用平均绝对误差(MAE)来评估性能。 结果,泊松回归模型达到了最佳比率,最低的平均绝对误差比为25.6%。

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