可解释性
计算机科学
机器学习
人工智能
决策树
特征(语言学)
Boosting(机器学习)
梯度升压
公制(单位)
随机森林
运营管理
语言学
哲学
经济
作者
Yasunobu Nohara,Koutarou Matsumoto,Hidehisa Soejima,Naoki Nakashima
标识
DOI:10.1016/j.cmpb.2021.106584
摘要
When using machine learning techniques in decision-making processes, the interpretability of the models is important. In the present paper, we adopted the Shapley additive explanation (SHAP), which is based on fair profit allocation among many stakeholders depending on their contribution, for interpreting a gradient-boosting decision tree model using hospital data.For better interpretability, we propose two novel techniques as follows: (1) a new metric of feature importance using SHAP and (2) a technique termed feature packing, which packs multiple similar features into one grouped feature to allow an easier understanding of the model without reconstruction of the model. We then compared the explanation results between the SHAP framework and existing methods using cerebral infarction data from our hospital.The interpretation by SHAP was mostly consistent with that by the existing methods. We showed how the A/G ratio works as an important prognostic factor for cerebral infarction using proposed techniques.Our techniques are useful for interpreting machine learning models and can uncover the underlying relationships between features and outcome.
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