Language computational processing is not a
straightforward task, most of the Natural Language
Processing (NLP) tasks focused on computing underlying
sentiments, while emotions are vital components of any
language and known to be difficult to detect. Several
studies have been carried out in English, but research in
Arabic emotion detection is still in its infancy. With the
rise of web 2.0 and social media platforms, the amount of
textual data with embedded emotions has significantly
increased. Although detecting emotions from a text is not
trivial, researchers are interested to utilise established
artificial intelligence techniques to build highperformance models for this task. This study has been
undertaken to provide a Systematic Literature Review
(SLR), which is defined as the process of identifying,
assessing, and interpreting available resources related to
a certain topic to answer the SLR research questions.
The aim of this study is to answer questions about textbased Arabic emotion detection challenges and effective
methods. Results show that the prevailing challenge in
Arabic emotion detection is the limited availability of
Arabic emotions annotated training dataset and the
morphological complexity and dialect diversity in
Arabic. Also, it has been found that most recent studies
utilise deep learning approaches.