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An efficient semisupervised feedforward neural network clustering

机译:一种有效的半监督前馈神经网络聚类

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摘要

We developed an efficient semisupervised feedforward neural network clustering model with one epoch training and data dimensionality reduction ability to solve the problems of low training speed, accuracy, and high memory complexity of clustering. During training, a codebook of nonrandom weights is learned through input data directly. A standard weight vector is extracted from the codebook, and the exclusive threshold of each input instance is calculated based on the standard weight vector. The input instances are clustered based on their exclusive thresholds. The model assigns a class label to each input instance through the training set. The class label of each unlabeled input instance is predicted by considering a linear activation function and the exclusive threshold. Finally, the number of clusters and the density of each cluster are updated. The accuracy of the proposed model was measured through the number of clusters and the quantity of correctly classified nodes, which was 99.85%, 100%, and 99.91% of the Breast Cancer, Iris, and Spam data sets from the University of California at Irvine Machine Learning Repository, respectively, and the superior F measure results between 98.29% and 100% accuracies for the breast cancer data set from the University of Malaya Medical Center to predict the survival time.
机译:我们开发了一种有效的半监督前馈神经网络聚类模型,该模型具有一次历时训练和降低数据维数的能力,解决了训练速度慢,准确性高和聚类的存储复杂性高的问题。在训练期间,直接通过输入数据学习非随机权重的代码簿。从码本中提取标准权重向量,并基于该标准权重向量计算每个输入实例的互斥阈值。输入实例基于其排他阈值进行聚类。该模型通过训练集为每个输入实例分配一个类别标签。通过考虑线性激活函数和互斥阈值来预测每个未标记输入实例的类标记。最后,更新簇的数量和每个簇的密度。通过集群的数量和正确分类的节点的数量来衡量所提出模型的准确性,这是来自加州大学尔湾分校的乳腺癌,虹膜和垃圾邮件数据集的99.85%,100%和99.91%来自马来亚大学医学中心的乳腺癌数据集用来预测生存时间的机器学习存储库和高级F度量的准确度分别在98.29%和100%之间。

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