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Falcon: A Novel Chinese Short Text Classification Method

机译:猎鹰:一种新的中文短文本分类方法

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For natural language processing problems, the short text classification is still a research hot topic, with obviously problem in the features sparse, high-dimensional text data and feature representation. In order to express text directly, a simple but new variation which employs one-hot with low-dimension was proposed. In this paper, a Densenet-based model was proposed to short text classification. Furthermore, the feature diversity and reuse were implemented by the concat and average shuffle operation between Resnet and Densenet for enlarging short text feature selection. Finally, some benchmarks were introduced to evaluate the Falcon. From our experimental results, the Falcon method obtained significant improvements in the state-of-art models on most of them in all respects, especially in the first experiment of error rate. To sum up, the Falcon is an efficient and economical model, whilst requiring less computation to achieve high performance.
机译:对于自然语言处理问题,短文本分类仍然是一个研究热门话题,功能在稀疏,高维文本数据和特征表示中的功能明显。为了直接表达文本,提出了一种简单但新的变体,其中采用了一个热的低维度。本文提出了一种基于DENSENET的模型,短文本分类。此外,通过RESET和DENSENET之间的耦合和平均随机操作来实现特征分集和重用,用于放大短文本特征选择。最后,引入了一些基准以评估猎鹰。从我们的实验结果来看,Falcon方法在所有方面的大多数情况下都在最新的模型中获得了显着的改进,尤其是在第一次错误率的试验中。总而言之,猎鹰是一种高效且经济的模型,同时需要较少的计算来实现高性能。

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