Twist Bytes - German Dialect Identification with Data Mining Optimization

F. Souza, Ralf Grubenmann, Pius von Däniken, Dirk Von Gruenigen, Jan Deriu, Mark Cieliebak
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引用次数: 9

Abstract

We describe our approaches used in the German Dialect Identification (GDI) task at the VarDial Evaluation Campaign 2018. The goal was to identify to which out of four dialects spoken in German speaking part of Switzerland a sentence belonged to. We adopted two different meta classifier approaches and used some data mining insights to improve the preprocessing and the meta classifier parameters. Especially, we focused on using different feature extraction methods and how to combine them, since they influenced very differently the performance of the system. Our system achieved second place out of 8 teams, with a macro averaged F-1 of 64.6%.
扭曲字节-德语方言识别与数据挖掘优化
我们描述了我们在2018年VarDial评估活动中用于德语方言识别(GDI)任务的方法。目标是在瑞士德语区的四种方言中识别出一个句子属于哪一种。我们采用了两种不同的元分类器方法,并利用一些数据挖掘的见解来改进预处理和元分类器参数。由于不同的特征提取方法对系统性能的影响非常不同,我们特别关注了不同特征提取方法的使用以及如何将它们结合起来。我们的系统在8支队伍中排名第二,宏观平均F-1为64.6%。
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