Sentiment on twitter data set using recurrent neural network-long short term memory

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Abstract

Social media is a combination of different platforms where a huge amount of user-generated data is collected. People from various parts of the country express their opinions, reviews, feedback and marketing strategies through social media such as Twitter, Facebook, Instagram, and YouTube. It is vital to explore, gather data, analyze them and consolidate the people views for better decision making. Sentiment analysis is a natural language processing for information extraction that identifies the user’s views. It is used for extracting reviews and opinions about the satisfaction of products, the events, and people for understanding the current trends of product or user’s behavior. The paper reviews and analyses the existing general approaches and algorithms for sentiment analysis. The proposed system selected to perform sentiment analysis on Twitter data set is Long Short Term Memory [LSTM] and evaluated with Naive Bayes Approach.

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APA

Jain, G. P., & Thenmalar, S. (2019). Sentiment on twitter data set using recurrent neural network-long short term memory. International Journal of Innovative Technology and Exploring Engineering, 8(11 Special Issue), 1206–1211. https://doi.org/10.35940/ijitee.K1244.09811S19

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