scholarly journals Sentiment Analysis for colloquial Arabic Language

Author(s):  
Mohamed A.Rahim ◽  
Mohamed Nagy ◽  
Mohamed Sayed ◽  
Mohamed El-Bahy ◽  
Moataz Lotfy ◽  
...  
2005 ◽  
Vol 20 (2) ◽  
pp. 193-195 ◽  
Author(s):  
N. Kadri ◽  
M. Agoub ◽  
S. El Gnaoui ◽  
Kh. Mchichi Alami ◽  
T. Hergueta ◽  
...  

AbstractThe validation of mini international neuropsychiatric interview (MINI) into Moroccan Colloquial Arabic language demonstrated good psychometric properties. The concordance between translated MINI’s and expert diagnoses was good with kappa values greater than 0.80. The reliability inter-rater and test–retest were excellent with kappa values above 0.80 and 0.90, respectively.


2020 ◽  
Vol 26 (6) ◽  
pp. 85-93
Author(s):  
Abdulhakeem Qusay Al-Bayati ◽  
Ahmed S. Al-Araji ◽  
Saman Hameed Ameen

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.


Author(s):  
Salima Behdenna ◽  
Fatiha Barigou ◽  
Ghalem Belalem

Sentiment analysis is a text mining discipline that aims to identify and extract subjective information. This growing field results in the emergence of three levels of granularity (document, sentence, and aspect). However, both the document and sentence levels do not find what exactly the opinion holder likes and dislikes. Furthermore, most research in this field deals with English texts, and very limited researches are undertaken on Arabic language. In this paper, the authors propose a semantic aspect-based sentiment analysis approach for Arabic reviews. This approach utilizes the semantic of description logics and linguistic rules in the identification of opinion targets and their polarity.


1879 ◽  
Vol 11 (3) ◽  
pp. 365-379
Author(s):  
E. T. Rogers

The Arabic language is commonly spoken throughout a very large area of the old hemisphere. It is the language of the whole of North Africa, which includes Morocca, Algiers, Tunis, Tripoli, and Egypt. It is also spoken down the Eastern coast, and in a not inconsiderable portion of the interior of that vast continent. Its home is the peninsula of Arabia, whence it spread also to Palestine, Syria, and Mesopotamia.


2020 ◽  
Vol 112 ◽  
pp. 408-430 ◽  
Author(s):  
Oumaima Oueslati ◽  
Erik Cambria ◽  
Moez Ben HajHmida ◽  
Habib Ounelli

Author(s):  
Hichem Rahab ◽  
Mahieddine Djoudi ◽  
Abdelhafid Zitouni

Today, it is usual that a consumer seeks for others' feelings about their purchasing experience on the web before a simple decision of buying a product or a service. Sentiment analysis intends to help people in taking profit from the available opinionated texts on the web for their decision making, and business is one of its challenging areas. Considerable work of sentiment analysis has been achieved in English and other Indo-European languages. Despite the important number of Arabic speakers and internet users, studies in Arabic sentiment analysis are still insufficient. The current chapter vocation is to give the main challenges of Arabic sentiment together with their recent proposed solutions in the literature. The chapter flowchart is presented in a novel manner that obtains the main challenges from presented literature works. Then it gives the proposed solutions for each challenge. The chapter reaches the finding that the future tendency will be toward rule-based techniques and deep learning, allowing for more dealings with Arabic language inherent characteristics.


Data ◽  
2021 ◽  
Vol 6 (6) ◽  
pp. 67
Author(s):  
Ebaa Fayyoumi ◽  
Sahar Idwan

This paper investigates sentiment analysis in Arabic tweets that have the presence of Jordanian dialect. A new dataset was collected during the coronavirus disease (COVID-19) pandemic. We demonstrate two models: the Traditional Arabic Language (TAL) model and the Semantic Partitioning Arabic Language (SPAL) model to envisage the polarity of the collected tweets by invoking several, well-known classifiers. The extraction and allocation of numerous Arabic features, such as lexical features, writing style features, grammatical features, and emotional features, have been used to analyze and classify the collected tweets semantically. The partitioning concept was performed on the original dataset by utilizing the hidden semantic meaning between tweets in the SPAL model before invoking various classifiers. The experimentation reveals that the overall performance of the SPAL model competes over and better than the performance of the TAL model due to imposing the genuine idea of semantic partitioning on the collected dataset.


The increasing use of social media and the idea of extracting meaningful expressions from renewable and usable data which is one of the basic principles of data mining has increased the popularity of Sentiment Analysis which is an important working area recently and has expanded its usage areas. Compiled messages shared from social media can be meaningfully labeled with sentiment analysis technique. Sentiment analysis objectively indicates whether the expression in a text is positive, neutral, or negative. Detecting Arabic tweets will help for politicians in estimating universal incident-based popular reports and people’s comments. In this paper, classification was conducted on sentiments twitted in the Arabic language. The fact that Arabic has twisted language features enabled it to have a morphologically rich structure. In this paper we have used the Long Short Term Memory (LSTM), a widely used type of the Recurrent Neural Networks (RNNs), to analyze Arabic twitter user comments. Compared to conventional pattern recognition techniques, LSTM has more effective results in terms of having less parameter calculation, shorter working time and higher accuracy.


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