Sentiment Analysis: Polarity Dataset
نویسنده
چکیده
Sentiment analysis is obvious instead of vague in the era of information. People nowadays are surrounded by a huge load of sentimental expressions from social media, news and from other people. For example: Mike bought an Iphone yesterday. Here is what he said on Facebook ”Oh! that was so cool, I have the best smart phone ever”. Then the question is: Does he like the mobile phone?. This is a question that can be answer by sentiment analysis research.
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