Missing data is a commonly occurring problem in practice, and imputation, i.e., filling the missing entries of the data, is a popular way to deal with this problem. This motivates multiple works on imputation to deal with missing data of various types and dimensions. However, for high-dimensional datasets, these imputation methods can be computationally expensive. Therefore, in this work, we propose Principle Component Analysis Imputation (PCAI), a simple framework based on Principle Component Analysis (PCA) to speed up the imputation process of many available imputation techniques. Next, based on PCAI, we propose PCA Imputation - Classification (PIC), an imputation-dimension reduction-classification framework to deal with missing data classification problems where it is desirable to reduce the dimensions before training a classification model. Our experiments show that the proposed frameworks can be utilized with various imputation algorithms and improve the imputation speed significantly. Interestingly, the frameworks aid imputation methods that rely on many parameters by reducing the dimension of the data and hence, reducing the number of parameters needed to be estimated. Moreover, they not only can achieve compatible mean square error/higher classification accuracy compared to the traditional imputation style on the original missing dataset but many times deliver even better results. In addition, the frameworks also help to tackle the memory issue that many imputation approaches have by reducing the number of features.
翻译:缺少的数据是实践中经常出现的一个问题,估算,即填补数据缺失的条目,是解决这一问题的一种流行方式。这促使对估算进行多次工作,以处理各种类型和层面的缺失数据。然而,对于高维数据集来说,这些估算方法可能计算成本很高。因此,我们在此工作中提议基于原则组成部分分析的估算(PCAI)的简单框架,即填补数据缺失的条目,以加快许多现有估算技术的估算过程。接下来,根据常设仲裁机构,我们提议五氯苯的估算-分类(PIC),一个估算-分散减少分类(PIC)框架,以处理缺失的数据分类问题,而对于高维数据集而言,在培训分类模型之前宜减少其层面。我们的实验表明,拟议框架可以使用各种估算算法,并大大提高估算速度。有趣的是,框架的估算方法依赖许多参数,通过减少数据的维度,从而减少所需的参数数量。此外,在传统格式上,它们也只能提供更准确性的数据分类,但只能使原始格式达到更准确性。