Adaptive Elastic Net on High-Dimensional Sparse Data with Multicollinearity: Application to Lipomatous Tumor Classification

N. Sudjai, Monthira Duangsaphon, Chandhanarat Chandhanayingyong
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引用次数: 0

Abstract

Predictive models can experience instabilities because of the combination of high-dimensional sparse data and multicollinearity problems. The adaptive Least Absolute Shrinkage and Selection Operator (adaptive Lasso) and adaptive elastic net were developed using the adaptive weight on penalty term. These adaptive weights are related to the power order of the estimators. Therefore, we concentrate on the power of adaptive weight on these penalty functions. This study purposed to compare the performances of the power of the adaptive Lasso and adaptive elastic net methods under high-dimensional sparse data with multicollinearity. Moreover, we compared the performances of the ridge, Lasso, elastic net, adaptive Lasso, and adaptive elastic net in terms of the mean of the predicted mean squared error (MPMSE) for the simulation study and the classification accuracy for a real-data application. The results of the simulation and the real-data application showed that the square root of the adaptive elastic net performed best on high-dimensional sparse data with multicollinearity.
具有多重共线性的高维稀疏数据的自适应弹性网:脂肪瘤分类应用
由于高维稀疏数据和多重共线性问题的结合,预测模型可能会出现不稳定性。利用惩罚项的自适应权重,开发了自适应最小绝对收缩和选择操作符(自适应 Lasso)和自适应弹性网。这些自适应权重与估计器的幂级数有关。因此,我们将重点放在自适应权重对这些惩罚函数的影响上。本研究旨在比较自适应 Lasso 方法和自适应弹性网方法在具有多重共线性的高维稀疏数据下的幂级数性能。此外,我们还比较了脊法、拉索法、弹性网法、自适应拉索法和自适应弹性网法在模拟研究中的预测均方误差(MPMSE)平均值和真实数据应用中的分类准确率。模拟和真实数据应用的结果表明,自适应弹性网的平方根在具有多重共线性的高维稀疏数据中表现最佳。
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