TY - GEN
T1 - Sentiment Analysis Using Bi-CARU with Recurrent CNN Models
AU - Chan, Ka Hou
AU - Im, Sio Kei
N1 - Publisher Copyright:
© 2023 University of Split, FESB.
PY - 2023
Y1 - 2023
N2 - For many natural language processing tasks, sentiment analysis has become increasingly important for extracting meaningful information from social media data. With the out-performance of neural network technology, the task of sentiment analysis can be addressed by advanced deep learning models. In this work, a combination model of Bidirectional-CARU (Bi-CARU) and Recurrent CNN is introduced to the sentiment analysis tasks. The proposed Bi-CAUR consists of three layers designed to obtain the main features of the input sequence, which can alleviate the long-term dependency problem and perform kernel information filtering from concrete to abstract, effectively improving the performance of the intermediate network on this problem. Next, the recursive structure of the CNN is connected to Bi-CARU to determine the sentiment analysis. The proposed Recurrent CNN implementation accepts features produced by its own previous convolution and pooling, which incorporates the performance of a CNN and requires only fewer parameters. Experimental results show that we are slightly more accurate, achieve faster convergence, and require fewer training parameters.
AB - For many natural language processing tasks, sentiment analysis has become increasingly important for extracting meaningful information from social media data. With the out-performance of neural network technology, the task of sentiment analysis can be addressed by advanced deep learning models. In this work, a combination model of Bidirectional-CARU (Bi-CARU) and Recurrent CNN is introduced to the sentiment analysis tasks. The proposed Bi-CAUR consists of three layers designed to obtain the main features of the input sequence, which can alleviate the long-term dependency problem and perform kernel information filtering from concrete to abstract, effectively improving the performance of the intermediate network on this problem. Next, the recursive structure of the CNN is connected to Bi-CARU to determine the sentiment analysis. The proposed Recurrent CNN implementation accepts features produced by its own previous convolution and pooling, which incorporates the performance of a CNN and requires only fewer parameters. Experimental results show that we are slightly more accurate, achieve faster convergence, and require fewer training parameters.
KW - Bi-CARU
KW - Chebyshev Pooling
KW - Probability Distribution
KW - Recurrent CNN
KW - Sentiment Analysis
UR - http://www.scopus.com/inward/record.url?scp=85168148101&partnerID=8YFLogxK
U2 - 10.23919/SpliTech58164.2023.10193062
DO - 10.23919/SpliTech58164.2023.10193062
M3 - Conference contribution
AN - SCOPUS:85168148101
T3 - 2023 8th International Conference on Smart and Sustainable Technologies, SpliTech 2023
BT - 2023 8th International Conference on Smart and Sustainable Technologies, SpliTech 2023
A2 - Solic, Petar
A2 - Nizetic, Sandro
A2 - Rodrigues, Joel J. P. C.
A2 - Rodrigues, Joel J. P. C.
A2 - Rodrigues, Joel J. P. C.
A2 - Lopez-de-Ipina Gonzalez-de-Artaza, Diego
A2 - Perkovic, Toni
A2 - Catarinucci, Luca
A2 - Patrono, Luigi
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 8th International Conference on Smart and Sustainable Technologies, SpliTech 2023
Y2 - 20 June 2023 through 23 June 2023
ER -