Sentiment analysis involves classifying text into positive, negative and neutral classes according to the emotions expressed in the text. Extensive study has been carried out in performing sentiment analysis using the traditional 'bag of words' approach which involves feature selection, where the input is given to classifiers such as Naive Bayes and SVMs. A relatively new approach to sentiment analysis involves using a deep learning model. In this approach, a recently discovered technique called word embedding is used, following which the input is fed into a deep neural network architecture. As sentiment analysis using deep learning is a relatively unexplored domain, we plan to perform in-depth analysis into this field and implement a state of the art model which will achieve optimal accuracy. The proposed methodology will use a hybrid architecture, which consists of CNNs (Convolutional Neural Networks) and RNNs (Recurrent Neural Networks), to implement the deep learning model on the SAR14 and Stanford Sentiment Treebank data sets.
Vipin JainGarima MohananiArpit GaurPushpinder Singh Patheja
Watthana UkaihongsarWatchareewan Jitsakul
Avinash Chandra PandeyDharmveer Singh Rajpoot
Noemí MerayoJesús VegasCésar LlamasPatricia Fernández
R. KanthavelAnantha Raman RathinamR. DhayaA. AnjuSamantha Julianne S