
Di Jin
Amazon
dialogue
generation
data augmentation
intent detection
conversational ai
large language models
task-orientated dialogue modeling
knowledge-grounded response generation
unstructured knowledge retrieval
in-context learning
llms
embodied navigation and manipulation
validation-test performance gap
view-action matching
conversational ai/dialogue systems
7
presentations
SHORT BIO
I am an Applied Scientist at Amazon Alexa AI, working on conversational modeling. My PhD degree was obtained from MIT, when I conducted research on transfer learning and model robustness for NLP. My current research interests surround dialogue systems, model efficiency, model robustness, and low-resource problems.
Presentations

Selective In-Context Data Augmentation for Intent Detection using Pointwise V-Information
Yen-Ting Lin and 8 other authors

Towards Credible Human Evaluation of Open-Domain Dialog Systems Using Interactive Setup
Sijia Liu and 7 other authors

Towards Zero and Few-shot Knowledge-seeking Turn Detection in Task-orientated Dialogue Systems
Di Jin

HypMix: Hyperbolic Interpolative Data Augmentation
Ramit Sawhney and 5 other authors

HypMix: Hyperbolic Interpolative Data Augmentation
Ramit Sawhney and 5 other authors

HypMix: Hyperbolic Interpolative Data Augmentation
Ramit Sawhney and 5 other authors

Can I Be of Further Assistance? Using Unstructured Knowledge Access to Improve Task-oriented Conversational Modeling
Di Jin and 2 other authors