加权
Boosting(机器学习)
梯度升压
决策树
计算机科学
人工智能
败血症
样品(材料)
机器学习
随机森林
医学
内科学
放射科
化学
色谱法
作者
Ibrahim Hammoud,I. V. Ramakrishnan,Mark C. Henry
出处
期刊:Computing in Cardiology (CinC), 2012
日期:2019-12-30
被引量:2
标识
DOI:10.22489/cinc.2019.459
摘要
In this work, we describe our early sepsis prediction model for the PhysioNet/Computing in Cardiology Challenge 2019.We prove that maximizing a general family of utility functions (of which the challenge utility function is a special case) is equivalent to minimizing a weighted 0-1 loss.We then utilize this fact to train an ensemble of gradient boosting decision trees using a weighted binary cross-entropy loss.Our model takes the time-series nature of the data into account by using a fixed size window of all measurements within the last 20 hours as a feature vector.Data were imputed in a way that gives the same information to the model as present to healthcare professionals in real-time.We tune the model hyper-parameters using 5-fold crossvalidation.The model performance was measured on each evaluation set using the threshold that gives the maximum utility on the training set.Our best model achieves an official normalized utility score of 0.332 on the final full test set of the challenge (Team name: SBU, rank: 6 th /78).
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