Mai Mohamed Eida
Also published as: Mai Mohamed Eida
2025
LLMs Learn Constructions That Humans Do Not Know
Jonathan Dunn
|
Mai Mohamed Eida
Proceedings of the Second International Workshop on Construction Grammars and NLP
This paper investigates false positive constructions: grammatical structures which an LLM hallucinates as distinct constructions but which human introspection does not support. Both a behavioural probing task using contextual embeddings and a meta-linguistic probing task using prompts are included, allowing us to distinguish between implicit and explicit linguistic knowledge. Both methods reveal that models do indeed hallucinate constructions. We then simulate hypothesis testing to determine what would have happened if a linguist had falsely hypothesized that these hallucinated constructions do exist. The high accuracy obtained shows that such false hypotheses would have been overwhelmingly confirmed. This suggests that construction probing methods suffer from a confirmation bias and raises the issue of what unknown and incorrect syntactic knowledge these models also possess.
Beyond Cairo: Sa’idi Egyptian Arabic Literary Corpus Construction and Analysis
Mai Mohamed Eida
|
Nizar Habash
Proceedings of the 5th International Conference on Natural Language Processing for Digital Humanities
Egyptian Arabic (EA) NLP resources have mainly focused on Cairene Egyptian Arabic (CEA), leaving sub-dialects like Sa’idi Egyptian Arabic (SEA) underrepresented. This paper introduces the first SEA corpus – an open-source, 4-million-word literary dataset of a dialect spoken by ~30 million Egyptians. To validate its representation, we analyze SEA-specific linguistic features from dialectal surveys, confirming a higher prevalence in our corpus compared to existing EA datasets. Our findings offer insights into SEA’s orthographic representation in morphology, phonology, and lexicon, incorporating CODA* guidelines for normalization.
2024
How Well Do Tweets Represent Sub-Dialects of Egyptian Arabic?
Mai Mohamed Eida
|
Mayar Nassar
|
Jonathan Dunn
Proceedings of the Eleventh Workshop on NLP for Similar Languages, Varieties, and Dialects (VarDial 2024)
How well does naturally-occurring digital text, such as Tweets, represent sub-dialects of Egyptian Arabic (EA)? This paper focuses on two EA sub-dialects: Cairene Egyptian Arabic (CEA) and Sa’idi Egyptian Arabic (SEA). We use morphological markers from ground-truth dialect surveys as a distance measure across four geo-referenced datasets. Results show that CEA markers are prevalent as expected in CEA geo-referenced tweets, while SEA markers are limited across SEA geo-referenced tweets. SEA tweets instead show a prevalence of CEA markers and higher usage of Modern Standard Arabic. We conclude that corpora intended to represent sub-dialects of EA do not accurately represent sub-dialects outside of the Cairene variety. This finding calls into question the validity of relying on tweets alone to represent dialectal differences.