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The deep learning word vector model using part of speech and sentiment information

机译:使用部分语音和情感信息的深度学习词矢量模型

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摘要

Language Model is used to describe and calculate the probability of a reasonable sentence occurrence in natural language. In practical applications, language model as the core of natural language processing is often used in machine translation, information indexing, voice recognition, context processing such as sentiment recognition and other tasks. We will discuss advantages and weaknesses of traditional statistical language models and neural Network Language Models such as CBOW and Skip-gram. Keeping in view the traditional statistical language model and neural network model, we will try to put forward the word vector model based on part of speech and sentiment information (PSWV-model) in order to use more natural language information such as word order features, part of speech features, and sentiment polarity information under the framework of Mikolov's model. And finally we will present our deliberations on some advantages of PSWV model and other models including CBOW and Skip-Gram, CDNV in the NLP tasks including named entities recognition and sentiment polarity analysis.
机译:语言模型用于描述和计算自然语言中合理句子发生的概率。在实际应用中,语言模型作为自然语言处理的核心通常用于机器翻译,信息索引,语音识别,语境处理等情绪识别和其他任务。我们将讨论传统统计语言模型和神经网络语言模型的优势和弱点,如Cow和Skip-Gram。保持鉴于传统的统计语言模型和神经网络模型,我们将尝试根据词性和情感信息(PSWV-Model)的一部分提出单词矢量模型,以便使用诸如Word Order功能之类的自然语言信息,在Mikolov模型框架下的言语特征的一部分,以及情感极性信息。最后,我们将在PSWV模型和其他型号的某些优势上展示我们的审议,包括CBAW和SKIP-GRAM,NLP任务中的CDNV,包括命名实体识别和情绪极性分析。

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