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Soft-Split Sparse Regression Based Random Forest for Predicting Future Clinical Scores of Alzheimer's Disease

机译:基于软分裂稀疏回归的随机森林,用于预测Alzheimer疾病的未来临床评分

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In this study, we propose a novel sparse regression based random forest (RF) to predict future clinical scores of Alzheimer's disease (AD) with the baseline scores and the MRI features. To avoid the stair-like decision boundary caused by axis-aligned split function in the conventional RF, we present a supervised method to construct the oblique split function by using sparse regression to select the informative features and transform the original features into the target-like features that are more discriminative. Then, we construct the oblique splitting function by applying the principal component analysis (PCA) on the transformed target-like features. Furthermore, to reduce the negative impact of potential mis-split induced by the conventional "hard-split", we further introduce the "soft-split" technique, in which both left and right nodes are visited with certain weights given a test sample. The experiment results show that sparse regression based RF alone can improve the prediction performance of the conventional RF. And further improvement can be achieved when both of the techniques are combined.
机译:在这项研究中,我们提出了一种基于新的稀疏回归的随机森林(RF),以预测与基线评分和MRI特征的Alzheimer疾病(AD)的未来临床评分。为了避免在传统RF中由轴对齐的分割功能引起的阶段相同的决策边界,我们介绍了一种通过使用稀疏回归来构造倾斜拆分功能来选择信息特征,并将原始功能转换为目标 - 类似的方法更具差异的特征。然后,我们通过在变换的目标样功能上应用主成分分析(PCA)来构造倾斜分离功能。此外,为了减少传统的“硬分裂”诱导的潜在错误分割的负面影响,我们进一步引入了“软分裂”技术,其中左右节点都被赋予测试样品的某些重量。实验结果表明,单独的基于稀疏的回归的RF可以改善传统RF的预测性能。当两种技术组合时,可以实现进一步的改进。

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