A large amount of feedback was collected over the years. Many feedback analysis models have been developed focusing on the English language. Recognizing the concept of feedback is challenging and crucial in languages which do not have applicable corpus and tools employed in Natural Language Processing (i.e., vocabulary corpus, sentence structure rules, etc). However, in this paper, we study a feedback classification in Mongolian language using two different word embeddings for deep learning. We compare the results of proposed approaches. We use feedback data in Cyrillic collected from 2012-2018. The result indicates that word embeddings using their own dataset improve the deep learning based proposed model with the best accuracy of 80.1% and 82.7% for two classification tasks.
翻译:多年来收集了大量反馈。许多反馈分析模型都以英语为重点。认识到反馈概念对于没有用于自然语言处理的适用文体和工具的语文(即词汇汇编、句子结构规则等)来说具有挑战性和关键性。然而,在本文件中,我们利用两个不同的词嵌入词来研究蒙古语的反馈分类,供深层学习。我们比较了拟议方法的结果。我们使用从2012-2018年收集的西里尔语反馈数据。结果显示,用自己的数据集嵌入文字可以改善基于深层学习的拟议模式,在两种分类任务中,最佳精确度为80.1%和82.7%。