噪声短信文本规范化模型

Greety Jose, Nisha S. Raj
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引用次数: 3

摘要

如今,社交网络、聊天室和论坛等数字媒体在人们的生活中起到了重要的信息共享作用。用户将用自己的语言分享他们的知识和情感。这将创建一种新颖的语法,以尽可能简洁地传达他们的消息。噪声文本以缩略语、音译、短形式等异常形式为特征。这导致了文本规范化的出现。清除噪声文本已成为充分开发和部署NLP(自然语言处理)服务(如文本到语音和自动翻译)的重要因素。本文介绍了一种基于信道的文本归一化模型。规范化是基于失真类型,如字素失真、缩写和音素失真。该模型将探索在有噪声的单词中发生的失真类型,并通过使用不同的通道列表来替换它。初步评价表明,该信道模型将噪声词归一化为标准词,正确率为96.43%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Noisy SMS text normalization model
Today digital media such as social networks, chat rooms, and forums have gained much importance in human life for information sharing. Users will share their knowledge and emotions in their own languages. This will create a novel syntax to communicate their messages with as much as pithiness as possible. Noisy text is characterized by unusual forms such as abbreviations, phonetic translations, short forms etc. This led to the emergence of text normalization. Cleaning the noisy text has become an important factor for adequate development and deployment of NLP (Natural Language Processing) services such as text-to-speech and automatic translation. In this paper we introduce a channel based normalization model for cleaning the noisy texts. The normalization is based on the types of distortion such as grapheme distortion, abbreviation and phoneme distortion. The model will explore the type of distortion occurred in the noisy word and replace it by using the different channel list. Precursory evaluation shows that the channel model will normalize the noisy word to their standard peer with 96.43 % accuracy.
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