
Chandra Bhagavatula
amr
unsupervised
generation
text generation
semantics
grounding
commonsense
reasoning
nlp
natural language processing
controllability
philosophy
language model
question generation
constrained decoding
8
presentations
39
number of views
1
citations
SHORT BIO
I am a Lead Research Scientist at the Allen Institute for AI (AI2). I am also an Affiliate Assistant Professor at University of Washington. My primary research interests are in commonsense reasoning and natural language generation, with broad interests at the intersection of commonsense and vision. I was a co-recipient of the AAAI Outstanding paper award in 2020. Before joining AI2, I received my Ph.D. in Computer Science from Northwestern University in Evanston in 2016 and Bachelors from the National Institute of Technology (Allahabad) in India.
Presentations

Value Kaleidoscope: Engaging AI with Pluralistic Human Values, Rights, and Duties
Taylor Sorensen and 12 other authors

You Are An Expert Linguistic Annotator: Limits of LLMs as Analyzers of Abstract Meaning Representation
Valentina Pyatkin and 4 other authors

I2D2: Inductive Knowledge Distillation with NeuroLogic and Self-Imitation
Chandra Bhagavatula

ClarifyDelphi: Reinforced Clarification Questions with Defeasibility Rewards for Social and Moral Situations
Valentina Pyatkin and 6 other authors

Penguins Don't Fly: Reasoning about Generics through Instantiations and Exceptions
Emily Allaway and 5 other authors

Symbolic Knowledge Distillation: from General Language Models to Commonsense Models
Peter West and 8 other authors

proScript: Partially Ordered Scripts Generation
Keisuke Sakaguchi and 5 other authors

Reflective Decoding: Beyond Unidirectional Generation with Off-the-Shelf Language Models
Peter West and 5 other authors