Abstract

Sentiment analysis is one of the major fields in natural language processing whose main task is to extract sentiments, opinions, attitudes, and emotions from a subjective text. And for its importance in decision making and in people's trust with reviews on web sites, there are many academic researches to address sentiment analysis problems. Deep Learning (DL) is a powerful Machine Learning (ML) technique that has emerged with its ability of feature representation and differentiating data, leading to state-of-the-art prediction results. In recent years, DL has been widely used in sentiment analysis, however, there is scarce in its implementation in the Arabic language field. Most of the previous researches address other languages like English. The proposed model tackles Arabic Sentiment Analysis (ASA) by using a DL approach. ASA is a challenging field where Arabic language has a rich morphological structure more than other languages. In this work, Long Short-Term Memory (LSTM) as a deep neural network has been used for training the model combined with word embedding as a first hidden layer for features extracting. The results show an accuracy of about 82% is achievable using DL method.

Highlights

  • Sentiment Analysis (SA), or sometimes called Opinion Mining (OM), is a field of Natural Language Processing (NLP) whose goal is to extract the emotion, sentiment or more general opinion expressed in a human-written text

  • EXPERIMENTS & RESULTS Experiments on Arabic Sentiment Analysis (ASA) model and its results will be discussed, how changing some parameters affect the accuracy of the results

  • 4.1 First Experiment First experiment has been applied with the following properties: 1- Dataset: Large-Scale Arabic Book Reviews (LABR)

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Summary

INTRODUCTION

Sentiment Analysis (SA), or sometimes called Opinion Mining (OM), is a field of Natural Language Processing (NLP) whose goal is to extract the emotion, sentiment or more general opinion expressed in a human-written text. Arabic language has complex nature in addition to the lack of its resources and different dialects that give challenges to the advances in ASA research (Heikal, et al, 2018). Despite these challenges, increasing Arabic number of users for the internet and the exponential expansion of the Arabic online content are the things that heightened the attention of numerous researchers according to SA over the last decade (Boudad, et al, 2017). A brief conclusion is given based on this work and the obtained results

RELATED WORKS
SYSTEM ARCHITECTURE
Text Preprocessing
Embedding Layer
LSTM Layer
CONCLUSION
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