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High-dimensional longitudinal classification with the multinomial fused lasso

机译:具有多项融合套索的高维纵向分类

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We study regularized estimation in high-dimensional longitudinal classification problems, using the lasso and fused lasso regularizers. The constructed coefficient estimates are piecewise constant across the time dimension in the longitudinal problem, with adaptively selected change points (break points). We present an efficient algorithm for computing such estimates, based on proximal gradient descent. We apply our proposed technique to a longitudinal data set on Alzheimer's disease from the Cardiovascular Health Study Cognition Study. Using data analysis and a simulation study, we motivate and demonstrate several practical considerations such as the selection of tuning parameters and the assessment of model stability. While race, gender, vascular and heart disease, lack of caregivers, and deterioration of learning and memory are all important predictors of dementia, we also find that these risk factors become more relevant in the later stages of life.
机译:我们使用套索和融合的套索常规方法研究高维纵向分类问题的正则化估算。 构造的系数估计是纵向问题中的时间尺寸的分段常数,具有自适应选择的改变点(断点)。 我们基于近端梯度下降,提出了一种用于计算这种估计的有效算法。 从心血管健康研究认知研究中,我们将所提出的技术应用于阿尔茨海默病的纵向数据。 使用数据分析和模拟研究,我们激励并展示了几种实际考虑因素,例如调整参数的选择和模型稳定性的评估。 虽然种族,性别,血管和心脏病,缺乏看护人,以及学习和记忆的恶化都是痴呆症的重要预测因子,但我们发现这些危险因素在生活的后期阶段变得更加重要。

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