Roman Urdu Sentiment Analysis of Reviews on PSL Anthems

M. Qureshi, Muhammad Asif, Mujahid Bashir, Hafiz Muhammad Zain, Muhammad Shoaib
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Abstract

Due to the easy access of internet and smart devices, people are becoming habitual to give their feedback on what they hear or watch, online. These reviews are very valuable for all sorts of users. Due to the widespread online activities, the count of these reviews has raised tremendously. This fact makes it humanly impossible to analyse them manually. So it needs time that reviews to be analysed and use patterns to be found and explored through the automated channel. This led to a new field of research known as Sentiment Analysis. This paper is targeting to design a model to perform sentiment analysis of Roman Urdu text using the reviews of Pakistan Super League’s official song. To perform this analysis five different techniques-- Naïve Bayes Kernal, Random Forest, Logistic Regression, K-Nearest Neighbour and Artificial Neural Network, are applied. Naïve Bayes Kernal and Logistic Regression correctly predicted 97.00% reviews.
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罗马乌尔都语对圣歌评论的情感分析
由于互联网和智能设备的方便接入,人们越来越习惯于在网上对他们听到或看到的东西进行反馈。这些评论对各种各样的用户都非常有价值。由于广泛的网络活动,这些评论的数量大大增加。这一事实使得人工分析它们是不可能的。因此,需要时间来分析评论,并通过自动通道发现和探索使用模式。这导致了一个新的研究领域,即情绪分析。本文旨在设计一个模型,利用巴基斯坦超级联赛官方歌曲的评论对罗马乌尔都语文本进行情感分析。为了执行此分析,应用了五种不同的技术——Naïve贝叶斯核、随机森林、逻辑回归、k近邻和人工神经网络。Naïve贝叶斯核回归和逻辑回归正确预测97.00%的评论。
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