A comparative study on code-mixed data of Indian social media vs formal text

Prakash Ranjan, B. Raja, R. Priyadharshini, R. Balabantaray
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引用次数: 20

Abstract

This paper presents comparative experiment results of code mixed data with the normal text. We first identify the Languages present in social media text, in the case of code mixed data existing language detector fails to detect language at the word level because of the use of roman script to write their own language. So we bootstrap language identification step and we caluculate the Code Mixe Index to show the amount of code mix in the corpora. We use the RNNLM to create a language model of code mixed data as well as pen tree bank data. We use the model to evaluate the similarity of code mixed data and open tree bank data. Using Perplexity measure we show that the code mixed data of Indian social media very less similarity to the normal data.
印度社交媒体语码混合数据与正式文本对比研究
本文给出了编码混合数据与正常文本的对比实验结果。我们首先识别社交媒体文本中存在的语言,在代码混合数据的情况下,现有的语言检测器无法在单词级别检测语言,因为使用罗马文字来编写自己的语言。因此,我们引导语言识别步骤,并计算代码混合索引来显示语料库中代码混合的数量。我们使用RNNLM来创建代码混合数据和笔树库数据的语言模型。利用该模型对代码混合数据和开放树库数据进行相似性评价。使用Perplexity度量,我们发现印度社交媒体的代码混合数据与正常数据的相似性非常低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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