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Opinion within Opinion: Segmentation Approach for Urdu Sentiment Analysis

机译:意见中的意见:乌尔都语情感分析的细分方法

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In computational linguistics, sentiment analysis facilitates classification of opinion as a positive or a negative class. Urdu is a widely used language in different parts of the world and classification of the opinions given in Urdu language is as important as for any other language. The literature contains very restricted research for sentiment analysis of Urdu language and mainly Bag-of-Word model dominates the research methods used for this purpose. The Bag-of-Word based models fail to classify a subset of the complex sentiments; the sentiments with more than one opinion. However, no known literature is available which identifies and utilizes sub-opinion level information. In this paper, we proposed a method based on sub-opinions within the text to determine the overall polarity of the sentiment in Urdu language text. The proposed method classifies a sentiment in three steps, First it segments the sentiment into two fragments using a set of hypotheses. Next it calculates the orientation scores of these fragments independently and finally estimates the polarity of the sentiment using scores of the fragments. We developed a computational model that empirically evaluated the proposed method. The proposed method increases the precision by 8.46%, recall by 37.25% and accuracy by 24.75%, which is a significant improvement over the existing techniques based on Bag-of-Word model.
机译:在计算语言学中,情感分析有助于将意见分为正面或负面类别。乌尔都语是世界各地广泛使用的语言,用乌尔都语给出的观点分类与其他任何语言一样重要。文献中对乌尔都语情感分析的研究非常有限,主要是单词袋模型主导了用于此目的的研究方法。基于词袋的模型无法对复杂情感的子集进行分类;带有不止一种观点的情绪。然而,没有可识别和利用亚意见水平信息的已知文献。在本文中,我们提出了一种基于文本内部子意见的方法,以确定乌尔都语文本中情感的整体极性。所提出的方法将情感分为三个步骤:首先,它使用一组假设将情感分为两个片段。接下来,它独立地计算这些片段的取向分数,最后使用片段的分数估计情感的极性。我们开发了一个计算模型,以经验评估了所提出的方法。所提出的方法将准确率提高了8.46%,召回率提高了37.25%,准确率提高了24.75%,这是对基于词袋模型的现有技术的重大改进。

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