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Using Social Networks to Improve Language Variety Identification with Neural Networks

机译:使用社交网络通过神经网络提高语言多样性的识别

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We propose a hierarchical neural network model for language variety identification that integrates information from a social network. Recently, language variety identification has enjoyed heightened popularity as an advanced task of language identification. The proposed model uses additional texts from a social network to improve language variety identification from two perspectives. First, they are used to introduce the effects of homophily. Secondly, they are used as expanded training data for shared layers of the proposed model. By introducing information from social networks, the model improved its accuracy by 1.67-5.56. Compared to state-of-the-art baselines, these improved performances are better in English and comparable in Spanish. Furthermore, we analyzed the cases of Portuguese and Arabic when the model showed weak performances, and found that the effect of homophily is likely to be weak due to sparsity and noises compared to languages with the strong performances.
机译:我们提出了一种用于语言多样性识别的分层神经网络模型,该模型集成了来自社交网络的信息。近来,作为语言识别的高级任务,语言种类识别已得到越来越多的普及。所提出的模型使用来自社交网络的其他文本来从两个角度改进语言多样性的识别。首先,它们用于介绍同构的效果。其次,它们被用作拟议模型共享层的扩展训练数据。通过引入来自社交网络的信息,该模型将其准确性提高了1.67-5.56。与最新的基准相比,这些改进的性能在英语方面更好,在西班牙语方面则相当。此外,我们分析了当模型表现出较弱的表现时的葡萄牙语和阿拉伯语的情况,并且发现与具有较强表现的语言相比,由于稀疏性和噪声,同构的效果可能较弱。

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