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186651

Integrated bidirectional LSTM–CNN model for customers reviews classification

Article

Last updated: 22 Jan 2023

Subjects

-

Tags

Computers and Operational Researches

Abstract

The tremendous increase of Internet users and various social media
platforms provide a massive amount of data. Companies are seeking
an automated method to assess their customers' satisfaction with their
products. Collecting and analyzing opinions and customers' feedback
from social media rely on what so called sentiment classification. Several
types of research are carried out to investigate opinions in English.
As the Arabic language analysis faces many numerous challenges
and problems. In our current research, two powerful hybrid deep
learning models (CNN-LSTM) and (CNN- BILSTM) are represented.
Bidirectional LSTMs are an expansion of conventional LSTMs that
can make substantial improvements in sequence classification tasks
and identify the most valuable features, CNN is applied. Various data
preparation processes are performed, and two regular deep learning
models (CNN, LSTM) are implemented to conduct a series of
experiments. Experimental results show that the two proposed models
have superior performance compared to baselines deep learning models
(CNN, LSTM). Furthermore, the (CNN-BI-LSTM) model exceeds the
hybrid (CNN-LSTM) model in terms of achieving the highest efficiency.

DOI

10.21608/ejmtc.2021.66626.1172

Keywords

Bi-directional long shortterm memory (BILSTM), Deep learning, Convolutional neural network (CNN)

Authors

First Name

Hossam

Last Name

elzayady

MiddleName

-

Affiliation

computer engineering , MTC

Email

hossamelzaiade@gmail.com

City

-

Orcid

-

First Name

Mohamed

Last Name

sobhy

MiddleName

-

Affiliation

Computer Engineering ,MTC

Email

mohamedms@mtc.edu.eg

City

-

Orcid

-

First Name

khale

Last Name

badran

MiddleName

-

Affiliation

Computer Engineering , MTC

Email

khaledbadran@mtc.edu.eg

City

cairo

Orcid

-

Volume

5

Article Issue

1

Related Issue

34028

Issue Date

2021-03-01

Receive Date

2021-03-07

Publish Date

2021-03-01

Print ISSN

2357-0954

Online ISSN

2357-0946

Link

https://ejmtc.journals.ekb.eg/article_186651.html

Detail API

https://ejmtc.journals.ekb.eg/service?article_code=186651

Order

2

Type

Original Article

Type Code

307

Publication Type

Journal

Publication Title

Journal of Engineering Science and Military Technologies

Publication Link

https://ejmtc.journals.ekb.eg/

MainTitle

-

Details

Type

Article

Created At

22 Jan 2023