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Incorporation of Neighborhood Concept in Enhancing SOM Based Multi-label Classification

机译:将邻域概念纳入基于SOM的多标签分类中

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The self-organizing map (SOM), which is a type of neural network, helps in the exploratory phase of data mining by projecting the input data into a lower-dimensional map consisting of a grid of neurons. In recent years, SOM has also been applied for classification of data points. The prominent utility of SOM based classification is evident from the use of no labeled data during training. In this paper, a self-organizing map based algorithm is proposed to solve the multi-label classification problem, named as ML-SOM. SOM follows an unsupervised training process to learn the topological structure of the training points. At testing-phase, a testing instance can be mapped to a specific neuron in the network and it's label can be determined using the training instances mapped to that specific neuron and nearby neurons. Thus in this paper, we have considered the neighborhood information of SOM to determine the label vector of testing instances. Experiments were performed on five multi-labeled datasets and performance of the proposed system is compared with various state-of-the-art methods showing competitive performance. Results are also validated using statistical significance t-test.
机译:自组织映射(SOM)是一种神经网络,它通过将输入数据投影到由神经元网格组成的低维映射中来帮助进行数据挖掘的探索阶段。近年来,SOM也已应用于数据点的分类。通过在训练过程中不使用标记数据,可以明显看出基于SOM的分类的显着用途。提出了一种基于自组织图的算法来解决多标签分类问题,即ML-SOM。 SOM遵循无监督的训练过程来学习训练点的拓扑结构。在测试阶段,可以将测试实例映射到网络中的特定神经元,并且可以使用映射到该特定神经元和附近神经元的训练实例来确定其标签。因此,在本文中,我们考虑了SOM的邻域信息来确定测试实例的标记向量。在五个多标签数据集上进行了实验,并将拟议系统的性能与显示竞争性能的各种最新方法进行了比较。还使用统计显着性t检验验证结果。

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