
George Zerveas
Brown University, USA
information retrieval
ranking context
dense retrieval
contrastive learning
modularised debiasing
multi-attribute debiasing
adapterfusion
contextual reranking
reciprocal nearest neighbors
evidence-based label smoothing
sparse annotation
language models
false negatives
transformers
dual encoder
3
presentations
5
number of views
SHORT BIO
I am a PhD candidate in Computer Science at Brown University. My main research focus is Natural Language Processing and Information Retrieval, but I have worked in various fields of application of Deep Learning, including joint image-language representation learning, time series and Computer Vision. My past research also includes mathematical modeling and numerical optimization for computational physics. Prior to my PhD studies, I have worked in industry as a Machine Learning R&D engineer. I have obtained a MSc in Computer Science from Brown University, a MSc in Information Technology and Electrical Engineering from ETH Zurich, and a Diploma in Electrical and Computer Engineering from the National Technical University of Athens.
Presentations

Enhancing the Ranking Context of Dense Retrieval through Reciprocal Nearest Neighbors | VIDEO
George Zerveas and 2 other authors

Parameter-efficient Modularised Bias Mitigation via AdapterFusion
Deepak Kumar and 6 other authors

CODER: An efficient framework for improving retrieval through COntextual Document Embedding Reranking
George Zerveas and 3 other authors