
Daniel Khashabi
snlp
text generation
grounding
question answering
bias
fairness
benchmark
information retrieval
benchmarking
clustering
crowdsourcing
interpretability
language model
language grounding
robustness
9
presentations
SHORT BIO
Daniel Khashabi is an assistant professor in computer science at Johns Hopkins University and the Center for Language and Speech Processing (CLSP).
Khashabi’s work focuses on computational foundations of intelligent behavior within various mediums of communication, particularly natural language. This involves developing formalisms that characterize and result in natural language processing (NLP) systems capable of understanding and reasoning with (and about) an uncertain world while being general to handle a broader space of contexts.
He obtained a Ph.D. from the University of Pennsylvania in 2019 and a BSc from Amirkabir University of Technology (Tehran Polytechnic) in 2012. Before joining Johns Hopkins he was a postdoctoral fellow at the Allen Institute for AI (2019-2022).
Presentations

AnaloBench: Benchmarking the Identification of Abstract and Long-context Analogies
Xiao Ye and 8 other authors

Insights into LLM Long-Context Failures: When Transformers Know but Don’t Tell
Muhan Gao and 4 other authors

k-SemStamp: A Clustering-Based Semantic Watermark for Detection of Machine-Generated Text
Abe Bohan Hou and 4 other authors

RORA: Robust Free-Text Rationale Evaluation
Zhengping Jiang and 5 other authors

SemStamp: A Semantic Watermark with Paraphrastic Robustness for Text Generation
Abe Bohan Hou and 9 other authors

GEAR: Augmenting Language Models with Generalizable and Efficient Tool Resolution
Yining Lu and 2 other authors

“According to . . . ”: Prompting Language Models Improves Quoting from Pre-Training Data
Orion Weller and 5 other authors

The Tail Wagging the Dog: Dataset Construction Biases of Social Bias Benchmarks
Nikil Selvam and 4 other authors

GENIE: Toward Reproducible and Standardized Human Evaluation for Text Generation
Daniel Khashabi and 4 other authors