
Zining Zhu
Assistant Professor @ Stevens Institute of Technology, Computer Science, Hoboken, USA
probing
performance prediction
fine-tuning
psycholinguistics
large language models
glue
model interpretability
datasets
fine-tune
senteval
construction grammar
data requirements
natural language explanation
reliability
situated explanation
7
presentations
7
number of views
SHORT BIO
Zining received a PhD degree at the University of Toronto and Vector Institute advised by Frank Rudzicz. Zining is interested in understanding the mechanisms and abilities of neural network AI systems, and incorporating the findings into controlling the AI systems. In the long term, he looks forward to empowering real-world applications with safe and trustworthy AIs that can collaborate with humans.
Presentations

Situated Natural Language Explanations
Zining Zhu

A State-Vector Framework For Dataset Effects
Esmat Sahak and 2 other authors

Predicting Fine-Tuning Performance with Probing
Zining Zhu and 2 other authors

Predicting Fine-tuning Performance with Probing
Zining Zhu and 2 other authors

Neural reality of argument structure constructions
Bai Li and 4 other authors

On the data requirements of probing
Zining Zhu and 3 other authors

An unsupervised framework for tracing textual sources of moral change
Aida Ramezani and 3 other authors