Back close

Deep learning approaches for classifying data: A review

Publication Type : Journal Article

Publisher : Journal of Engineering Science and Technology

Source : Journal of Engineering Science and Technology Vol. 15, No. 4 (2020) 2580 - 2594 © School of Engineering, Taylor’s University

Url : https://jestec.taylors.edu.my/Vol%2015%20issue%204%20August%202020/15_4_32.pdf

Campus : Amaravati

School : School of Engineering

Department : Computer Science and Engineering

Year : 2020

Abstract : Data mining can be considered as the first approach for classification of sentiments. Data mining can be considered as the first approach for classification of sentiments. Later, Machine learning and its techniques were used to analyse sentiments but, machine language-based learning systems find it complex to understand the language of humans. Therefore, we move towards deep learning models to analyse sentiments. The subgroup of machine learning is DeepLearning; it involves networks, namely RNN (Recurrent Neural Networks), Recursive Neural Networks, Convolutional Neural Network (CNN) and Deep Belief Networks. Neural networks are very useful in the generation of text, the depiction of vector, word assessment, classifying sentences and representation. Sentiment analysis can be determined as a process for identifying the emotions with the help of a series of words which are used in online sites. It can be utilizedto analyse the point of view and attitudes, depending on the words. Sentimentanalysis is mostly used in monitoring social media to gain information aboutpublic opinion on certain trending topics. Sentiment analysis is performed bytaking some sentiment examples, the features are extracted from sentiments andthen the parameters are trained in our model and in the final stage, the model istested. In this paper, an empirical survey of the three models of deep learning,namely RecurrentNN, RecursiveNN and ConvolutionalNN are discussed.

Cite this Research Publication : Thulasi Bikku,K P N V Satya Sree "Deep learning approaches for classifying data: A review ",Journal of Engineering Science and Technology
Vol. 15, No. 4 (2020) 2580 - 2594
© School of Engineering, Taylor’s University

Admissions Apply Now