
Mona Diab
Professor @ Meta
hate speech detection
transfer learning
bias
cross-lingual
pretrained language models
low resource
optimization
commonsense reasoning
nmt
causal relations
hallucination
conditional sequence generation
multi-lingual
sentence encoders
discrete cosine transform
31
presentations
52
number of views
SHORT BIO
Mona Diab is the Lead Responsible AI Research Scientist with Meta. She is also a full Professor of Computer Science at the George Washington University (on leave) where she directs the CARE4Lang NLP Lab. Before joining Meta, she led the Lex Conversational AI project within Amazon AWS AI. Her current focus is on Responsible AI and how to operationalize it for NLP technologies. Her interests span building robust technologies for low resource scenarios with a special interest in Arabic technologies, (mis) information propagation, computational socio-pragmatics, computational psycholinguistics, NLG evaluation metrics, Language modeling and resource creation. Mona has served the community in several capacities: Elected President of SIGLEX and SIGSemitic, and she currently serves as the elected VP for ACL SIGDAT, the board supporting EMNLP conferences. She has delivered tutorials and organized numerous workshops and panels around Arabic processing, Responsible NLP, Code Switching, etc. She is a cofounder of CADIM (Consortium on Arabic Dialect Modeling, previously known as Columbia University Arabic Dialects Modeling Group), in 2005, which served as a world renowned reference point on Arabic Language Technologies. Moreover she helped establish two research trends in NLP, namely computational approaches to Code Switching and Semantic Textual Similarity. She is also a founding member of the *SEM conference, one of the top tier conferences in NLP. Mona has published more than 250 peer reviewed articles.
Presentations

Enabling Classifiers to Make Judgements Explicitly Aligned with Human Values
Yejin Bang and 5 other authors

Towards a Responsible NLP: Walking the walk
Mona Diab

Knowledge-Augmented Language Models for Cause-Effect Relation Classification
Pedram Hosseini and 2 other authors

Active Learning for Rumor Identification on Social Media
Parsa Farinneya and 3 other authors

Gender bias amplification during Speed-Quality optimization in Neural Machine Translation
Kenneth Heafield and 4 other authors

Detecting Hallucinated Content in Conditional Neural Sequence Generation
Chunting Zhou and 6 other authors

Detecting Urgency Status of Crisis Tweets: A Transfer Learning Approach for Low Resource Languages
Efsun Kayi and 4 other authors