分类和混合数据类型的结构化迭代硬阈值

Thy Nguyen, Tayo Obafemi-Ajayi
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引用次数: 0

摘要

在许多应用程序中,数据以混合数据类型格式存在,即名义(分类)和数字特征的组合。处理分类特征的常见做法是使用编码方法将离散值转换为数字表示。然而,数字表示往往忽略了分类特征的固有结构,潜在地降低了学习算法的性能。利用数字表示也可能限制对学习模型的解释,例如找到最具判别性的分类特征或过滤不相关的属性。在这项工作中,我们扩展了迭代硬阈值(IHT)算法来量化分类特征的结构。本文提出的结构化硬阈值算法基于真实数据集和合成数据集进行实证评估,并与原始硬阈值算法LASSO和Random Forest进行对比。结果表明,与原始IHT相比,该方法的性能有所提高。
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Structured Iterative Hard Thresholding for Categorical and Mixed Data Types
In many applications, data exists in a mixed data type format, i.e. a combination of nominal (categorical) and numericalal features. A common practice for working with categorical features is to use an encoding method to transform the discrete values into numeric representation. However, numeric representation often neglects the innate structures in categorical features, potentially degrading the performance of learning algorithms. Utilizing the numeric representation could also limit interpretation of the learned model, such as finding the most discriminative categorical features or filtering irrelevant attributes. In this work, we extend the iterative hard thresholding (IHT) algorithm to quantify the structure of categorical features. The empirical evaluation of the proposed structured hard thresholding algorithm is based on both real and synthetic data sets in comparison with the original hard thresholding algorithm, LASSO and Random Forest. The results demonstrate an improved performance over the original IHT.
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