Multi-label (ML) classification is an actively researched topic currently, which deals with convoluted and overlapping boundaries that arise due to several labels being active for a particular data instance. We propose a classifier capable of extracting underlying features and introducing non-linearity to the data to handle the complex decision boundaries. A novel neural network model has been developed where the input features are subjected to two transformations adapted from multi-label functional link artificial neural network and autoencoders. First, a functional expansion of the original features are made using basis functions. This is followed by an autoencoder-aided transformation and reduction on the expanded features. This network is capable of improving separability for the multi-label data owing to the two-layer transformation while reducing the expanded feature space to a more manageable amount. This balances the input dimension which leads to a better classification performance even for a limited amount of data. The proposed network has been validated on five ML datasets which shows its superior performance in comparison with six well-established ML classifiers. Furthermore, a single-label variation of the proposed network has also been formulated simultaneously and tested on four relevant datasets against three existing classifiers to establish its effectiveness.
翻译:多标签(ML)分类是目前积极研究的一个专题,涉及由于几个标签对特定数据实例很活跃而引发的混乱和重叠的边界。我们建议一个分类器,能够提取基本特征,并对数据引入非线性,以处理复杂的决定界限。开发了一个新的神经网络模型,输入特征要经过由多标签功能链接人工神经网络和自动编码器调整的两种变异。首先,利用基础功能扩大了原有特征的功能。随后是自动编码辅助变异和缩小扩大的功能。这个网络能够改进多标签数据的可分离性,因为进行了两层变异,同时将扩大的特性空间缩小到一个更可管理的数量。这平衡了即使数据数量有限,也会导致更好分类性能的投入层面。提议的网络在五个 ML数据集上得到了验证,显示其优于6个成熟的ML分类器。此外,还同时设计了拟议网络的单标签变异,并测试了四个相关数据组的大小。