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Multi-label Classification of Short Text Based on Similarity Graph and Restart Random Walk Model

机译:基于相似度图和重启随机游走模型的短文本多标签分类

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A multi-label classification method of short text based on similarity graph and restart random walk model is proposed. Firstly, the similarity graph is created by using data and labels as the node, and the weights on the edges are calculated through an external knowledge, so the initial matching degree of between the sample and the label set is obtained. After that, we build a label dependency graph with labels as vertices, and using the previous matching degree as the initial prediction value to calculate the relationship between the sample and each node until the probability distribution becomes stable. Finally, the'obtained relationship vector is the label probability distribution vector of the sample predicted by the method in this paper. Experimental results show that we provides a more efficient and reliable multi-label short-text classification algorithm.
机译:提出了一种基于相似度图和重启随机游走模型的短文本多标签分类方法。首先,以数据和标签为节点创建相似度图,通过外部知识计算边缘权重,得到样本与标签集之间的初始匹配度。此后,我们建立一个以标签为顶点的标签依赖图,并使用先前的匹配度作为初始预测值来计算样本与每个节点之间的关系,直到概率分布变得稳定为止。最后,获得的关系向量是本文方法预测的样本的标签概率分布向量。实验结果表明,我们提供了一种更有效,更可靠的多标签短文本分类算法。

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