Downloads: 2
Research Paper | Computer Science | India | Volume 10 Issue 9, September 2021
Social Media Sentiment Analysis Using CNN-BiLSTM
Rhea Bharal | O. V. Vamsi Krishna
Abstract: Sentiment analysis is application of natural language processing for understanding the opinions or views of public on various topics. This is also popularly known as opinion mining, the system collects, analyses and examines the sentiments present in the form of tweets. Our proposed model extracts the sentiment of the tweets and classifies them using CNN-BiLSTM which is a technique of deep learning and uses Word2Vec as word embedding layer. The Sentiment140 dataset is generated from Twitter API which consists 1.6 million tweets. BiLSTM cell state based on memory is used for tweets classification Sentiments are published on Social media in the form of texts for expressing social support, happiness, anger, friendship etc. Using deep learning approach, we will be classifying the tweets as positive or negative. CNN-BiLSTM is an effective technique as compared to others like SVM, Naive Bayes Classifier and CNN.
Keywords: CNN-BiLSTM, Word2Vec, Sentiment Analysis, Machine Learning, Deep Learning, Twitter, Natural Language Processing
Edition: Volume 10 Issue 9, September 2021,
Pages: 656 - 661
Social Media Sentiment Analysis Using CNN-BiLSTM
How to Cite this Article?
Rhea Bharal, O. V. Vamsi Krishna, "Social Media Sentiment Analysis Using CNN-BiLSTM", International Journal of Science and Research (IJSR), https://www.ijsr.net/get_abstract.php?paper_id=SR21913110537, Volume 10 Issue 9, September 2021, 656 - 661, #ijsrnet
How to Share this Article?
Similar Articles with Keyword 'Machine Learning'
Downloads: 1 | Weekly Hits: ⮙1 | Monthly Hits: ⮙1
Review Papers, Computer Science, Saudi Arabia, Volume 11 Issue 2, February 2022
Pages: 854 - 860Rumor Detection Using Machine Learning in Social Media: A Survey
Afnan Alsadhan | Monirah Al-Ajlan | Mehmet Sabih Aksoy [2]
Downloads: 1 | Monthly Hits: ⮙1
Review Papers, Computer Science, India, Volume 11 Issue 5, May 2022
Pages: 283 - 286Intrusion Detection using Machine Learning
Bhumika Malik | Nivedita Singh [2]