Improving and Analyzing the Movie Sentiments Using the SVM Approach

Shikha Verma, A. Gautam, Santushti Gandhi, Aman Goyal
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Abstract

Sentiment analysis is a tool that assists in better understanding the sentiment behind the reviews of an individual and allows an organization to make improvements to its goods and services in response to the feedback. An automatic model is required to classify the sentiments as positive and negative. Thus, the paper proposes a sentence-level sentiment analysis approach to classify whether a movie review is positive or negative. The experiment is performed on the IMDb dataset using three supervised machine algorithms, Linear Support Vector Machine, Logistic Regression and Multinomial Naïve Bayes. Each have been tuned to have the best settings of hyperparameters to achieve the best possible results. The results obtained by these models were then compared based on their Accuracy Score, F1-Score and AUC Score. This approach obtained an F1-Score of 0.914 and an AUC-ROC score of 0.97 after 10-fold Cross-validation. There was an improvement in the evaluation of the F1 score and AUC-ROC score compared to other state-of-the-art models.
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基于支持向量机的电影情感改进与分析
情感分析是一种工具,有助于更好地理解个人评论背后的情感,并允许组织根据反馈对其商品和服务进行改进。需要一个自动模型来将情绪分类为积极和消极。因此,本文提出了一种句子级情感分析方法来分类电影评论是积极的还是消极的。实验采用线性支持向量机、Logistic回归和多项式Naïve贝叶斯三种监督机器算法在IMDb数据集上进行。每个都被调优为具有最佳的超参数设置,以实现最佳的可能结果。然后根据这些模型的准确性评分、f1评分和AUC评分对得到的结果进行比较。经10倍交叉验证,该方法的F1-Score为0.914,AUC-ROC评分为0.97。与其他最先进的模型相比,F1评分和AUC-ROC评分的评估有改善。
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