挖掘大数据:关键特征维度问题

Qingzhong Liu, B. Ribeiro, A. Sung, Divya Suryakumar
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引用次数: 16

摘要

在挖掘海量数据集时,通常有两个最重要和最直接的问题是采样和特征选择。适当的采样和特征选择有助于减少数据集的大小,同时在模型构建中获得满意的结果。因此,从理论上讲,研究给定数据集是否具有关键特征维度,或者给定学习机达到“满意”性能所需的最小特征数量,是很有趣的。(同样地,临界采样大小问题关注的是,对于给定的数据集,是否存在最小数量的数据点,这些数据点必须包含在任何样本中,以使学习机达到令人满意的性能。)这里“满意”性能的具体含义由用户自行定义。本文在一个一般的理论背景下解决了这两个问题的复杂性,并表明它们具有相同的复杂性和高度难以处理。其次,应用经验方法试图找到数据集的近似临界特征维数。结果表明,在特征排序算法的一般合理假设下,经验方法可以成功地发现不同规模数据集的关键特征维数。结果令人鼓舞,显著减小了特征尺寸,并指出了处理大数据的有前途的方法。同时也解释了关键维在数据集中存在的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining the Big Data: The Critical Feature Dimension Problem
In mining massive datasets, often two of the most important and immediate problems are sampling and feature selection. Proper sampling and feature selection contributes to reducing the size of the dataset while obtaining satisfactory results in model building. Theoretically, therefore, it is interesting to investigate whether a given dataset possesses a critical feature dimension, or the minimum number of features that is required for a given learning machine to achieve "satisfactory" performance. (Likewise, the critical sampling size problem concerns whether, for a given dataset, there is a minimum number of data points that must be included in any sample for a learning machine to achieve satisfactory performance.) Here the specific meaning of "satisfactory" performance is to be defined by the user. This paper addresses the complexity of both problems in one general theoretical setting and shows that they have the same complexity and are highly intractable. Next, an empirical method is applied in an attempt to find the approximate critical feature dimension of datasets. It is demonstrated that, under generally reasonable assumptions pertaining to feature ranking algorithms, the critical feature dimension are successfully discovered by the empirical method for a number of datasets of various sizes. The results are encouraging in achieving significant feature size reduction and point to a promising way in dealing with big data. The significance of the existence of crucial dimension in datasets is also explained.
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