用向量和ASR转录本识别阿拉伯语方言

S. Malmasi, Marcos Zampieri
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引用次数: 32

摘要

本文介绍了MAZA团队提交给VarDial评估活动2017年阿拉伯语方言识别(ADI)共享任务的系统。该任务的目标是评估计算模型,以识别使用音频和文本转录的阿拉伯语方言。ADI共享任务数据集包括现代标准阿拉伯语(MSA)和四种阿拉伯语方言:埃及语、海湾语、黎凡特语和北非语。MAZA提交的三个系统是基于多个机器学习分类器的组合,排列为(1)投票集合;(2)平均概率系综;(3) meta-classifier。元分类器的准确率达到71.7%,在参与ADI共享任务的6个团队中排名第二。
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Arabic Dialect Identification Using iVectors and ASR Transcripts
This paper presents the systems submitted by the MAZA team to the Arabic Dialect Identification (ADI) shared task at the VarDial Evaluation Campaign 2017. The goal of the task is to evaluate computational models to identify the dialect of Arabic utterances using both audio and text transcriptions. The ADI shared task dataset included Modern Standard Arabic (MSA) and four Arabic dialects: Egyptian, Gulf, Levantine, and North-African. The three systems submitted by MAZA are based on combinations of multiple machine learning classifiers arranged as (1) voting ensemble; (2) mean probability ensemble; (3) meta-classifier. The best results were obtained by the meta-classifier achieving 71.7% accuracy, ranking second among the six teams which participated in the ADI shared task.
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