Rewriting Dialectal Arabic Prehistory

2022 ◽  
Author(s):  
Alexander Borg
Keyword(s):  
2014 ◽  
Author(s):  
Maryam Aminian ◽  
Mahmoud Ghoneim ◽  
Mona Diab

Author(s):  
Elena Tamburini ◽  
Gabriele Iannàccaro

Based on first-hand collected data, the article analyses a number of code-switching occurrences in multilingual chats among a community of English teachers in the Fes-Meknes region of Morocco. The data are compared with the results of a perceptual questionnaire on linguistic self-assessments and also take into account the orthographic aspect of the messages. The complex sociolinguistic framework of the area vividly emerges, as well as the real and perceived status of the varieties and the relationships between codes. The result is a coherent combination of Standard Arabic, dialectal Arabic, French and English.


2021 ◽  
Vol 12 (4) ◽  
pp. 167-177
Author(s):  
Munerah Algernas ◽  
Yahya Aldholmi

Commercial advertisements in Arabic-speaking regions tend to alternate between dialectal Arabic and Modern Standard Arabic, but it is not yet clear whether language variety has any impact on listener’s lexical recall. Insight into this issue should help enterprises design their commercial advertisements in a linguistically intelligent manner. This study addresses two questions: 1) How does language variety (dialectal vs. standard) affect listener’s lexical recall in commercial advertisements? 2) Do listeners recall words that have appeared in dialectal advertisements better than those that did not appear in advertisements using the same variety? Fifteen Saudi participants responded to a forced-choice memory test with 24 yes-no questions (3 per advertisement) asking participants to report whether they heard a specific key word in eight advertisements that utilized different language varieties. The findings show that Arabic speakers tend to perceive both Modern Standard Arabic and dialectal Arabic in commercial advertisements similarly, but tend to recall the presence of a key word in an advertisement better than its absence. Future research may increase the sample size and examine more Arabic varieties.


2021 ◽  
pp. 1-42
Author(s):  
Maha J. Althobaiti

Abstract The wide usage of multiple spoken Arabic dialects on social networking sites stimulates increasing interest in Natural Language Processing (NLP) for dialectal Arabic (DA). Arabic dialects represent true linguistic diversity and differ from modern standard Arabic (MSA). In fact, the complexity and variety of these dialects make it insufficient to build one NLP system that is suitable for all of them. In comparison with MSA, the available datasets for various dialects are generally limited in terms of size, genre and scope. In this article, we present a novel approach that automatically develops an annotated country-level dialectal Arabic corpus and builds lists of words that encompass 15 Arabic dialects. The algorithm uses an iterative procedure consisting of two main components: automatic creation of lists for dialectal words and automatic creation of annotated Arabic dialect identification corpus. To our knowledge, our study is the first of its kind to examine and analyse the poor performance of the MSA part-of-speech tagger on dialectal Arabic contents and to exploit that in order to extract the dialectal words. The pointwise mutual information association measure and the geographical frequency of word occurrence online are used to classify dialectal words. The annotated dialectal Arabic corpus (Twt15DA), built using our algorithm, is collected from Twitter and consists of 311,785 tweets containing 3,858,459 words in total. We randomly selected a sample of 75 tweets per country, 1125 tweets in total, and conducted a manual dialect identification task by native speakers. The results show an average inter-annotator agreement score equal to 64%, which reflects satisfactory agreement considering the overlapping features of the 15 Arabic dialects.


2016 ◽  
Vol 12 (2) ◽  
pp. 159-165 ◽  
Author(s):  
Ayman A. Zayyan ◽  
◽  
Mohamed Elmahdy ◽  
Husniza binti Husni ◽  
Jihad Al Ja’am ◽  
...  
Keyword(s):  

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