论文标题
基于功能融合增强的自动编码器的缺失值填充模型
A Missing Value Filling Model Based on Feature Fusion Enhanced Autoencoder
论文作者
论文摘要
随着大数据时代的出现,数据质量问题变得越来越重要。在许多因素中,缺少价值的数据是一个主要问题,因此,开发有效的插补模型是研究界的关键主题。最近,一个主要的研究方向是采用神经网络模型,例如自组织映射或自动编码器来填充缺失值。但是,这些经典方法几乎无法在数据属性之间同时发现相互关联的特征和共同特征。特别是,对于经典的自动编码器来说,这是一个非常典型的问题,他们经常学习无效的持续映射,这极大地伤害了填充性能。为了解决上述问题,我们提出了一个基于功能融合增强自动编码器的缺失值填充模型。我们首先将其纳入自动编码器中一个隐藏的层,该层由脱落神经元和径向基函数神经元组成,该神经元可以增强学习相互关联的特征和共同特征的能力。此外,我们基于动态聚类制定了缺少的价值填充策略,该策略被整合到迭代优化过程中。该设计可以增强多维功能融合能力,从而提高动态协作缺失填充性能。与13个数据集的各种基线方法相比,广泛的实验验证了所提出的模型的有效性。
With the advent of the big data era, the data quality problem is becoming more critical. Among many factors, data with missing values is one primary issue, and thus developing effective imputation models is a key topic in the research community. Recently, a major research direction is to employ neural network models such as self-organizing mappings or automatic encoders for filling missing values. However, these classical methods can hardly discover interrelated features and common features simultaneously among data attributes. Especially, it is a very typical problem for classical autoencoders that they often learn invalid constant mappings, which dramatically hurts the filling performance. To solve the above-mentioned problems, we propose a missing-value-filling model based on a feature-fusion-enhanced autoencoder. We first incorporate into an autoencoder a hidden layer that consists of de-tracking neurons and radial basis function neurons, which can enhance the ability of learning interrelated features and common features. Besides, we develop a missing value filling strategy based on dynamic clustering that is incorporated into an iterative optimization process. This design can enhance the multi-dimensional feature fusion ability and thus improves the dynamic collaborative missing-value-filling performance. The effectiveness of the proposed model is validated by extensive experiments compared to a variety of baseline methods on thirteen data sets.