This study introduces using measure theoretic basis the notion of membership-mapping for representing data points through attribute values (motivated by fuzzy theory). A property of the membership-mapping, that can be exploited for data representation learning, is of providing an interpolation on the given data points in the data space. The study outlines an analytical approach to the variational learning of a membership-mappings based data representation model. An alternative idea of deep autoencoder, referred to as Bregman Divergence Based Conditionally Deep Autoencoder (that consists of layers such that each layer learns data representation at certain abstraction level through a membership-mappings based autoencoder), is presented. Experiments are provided to demonstrate the competitive performance of the proposed framework in classifying high-dimensional feature vectors and in rendering robustness to the classification.
翻译:本研究采用计量理论基础,提出通过属性值(模糊理论的动机)代表数据点的会籍图绘制概念。可以用来进行数据代表性学习的会籍图绘制特性是提供数据空间特定数据点的内插,该研究概述了以成员图为基础的数据代表模型的变换学习分析方法。另一个称为Bregman differgence的深自动编码器(由各层组成,每个层通过以成员图为基础的自动编码器在某些抽象层次上学习数据代表性)的替代概念。还进行了实验,以展示拟议的框架在对高维特性矢量进行分类和使分类更加稳健方面的竞争性表现。