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Sentiment Analysis of Movie Reviews Using Support Vector Machine Classifier with Linear Kernel Function

机译:使用带有线性内核功能的支持向量机分类器电影评论的情感分析

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Sentiment analysis refers to the process of determining the opinion stated by the user corresponds to positive, and to be negative or considered to be neutral. The mechanism of sentiment analysis is said to be the process of opinion mining which in then resembles the behavior/attitude measurement of the speaker. This is extremely useful in a place which there is a complete need for a recommendation for the user to follow a specific case of action. In public domain, the aspect of sentiment analysis is helpful for the user to state a specific nature of the action. This research work focuses on the analysis of review data to determine the aspect based on sentiments using TF, IDF, and SVM. The model extracts the textual reviews and classifiers them into positive, negative, and neutral cases. The result retrieved with the proposed scheme gives an improved accuracy of about 87.56% determining the positive and negative cases more efficiently. With this proposed approach the classification of review data can be made more efficiently for various sort of recommendation systems which makes the user have good insight for a product review, movie review, and user rating analysis.
机译:情绪分析是指确定用户所述的意见的过程对应于阳性,并且是负的或被认为是中性的。据说情绪分析的机制是意见采矿过程,然后在那时类似于扬声器的行为/姿态测量。这在一个完全需要为用户遵循特定行动的建议时,这非常有用。在公共领域,情感分析的方面有助于用户说明行动的特定性质。该研究工作侧重于分析审查数据,以使用TF,IDF和SVM基于情绪来确定方面。该模型将文本评价和分类器提取为正,负和中性案例。通过所提出的方案检索的结果提高了约87.56%的精度,更有效地确定正面和阴性病例。通过这种提出的方​​法,可以更有效地为各种推荐系统更有效地制定审查数据的分类,这使得用户对产品审查,电影评估和用户评级分析具有良好的洞察力。

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