Sameer Singh (original) (raw)

Sameer Singh

Sameer Singh
4224 Donald Bren Hall
University of California
Irvine, CA 92697-3435

sameer@uci.edu

Dr. Sameer Singh is a Professor of Computer Science at the University of California, Irvine (UCI). He is working primarily on robustness and interpretability of machine learning algorithms, along with models that reason with text and structure for natural language processing. Sameer was a postdoctoral researcher at the University of Washington and received his PhD from the University of Massachusetts, Amherst, during which he interned at Microsoft Research, Google Research, and Yahoo! Labs. He has received the NSF CAREER award, selected as a DARPA Riser, UCI ICS Mid-Career Excellence in research award, and the Hellman and the Noyce Faculty Fellowships. His group has received funding from Allen Institute for AI, Amazon, NSF, DARPA, Adobe Research, Hasso Plattner Institute, NEC, Base 11, and FICO. Sameer has published extensively at machine learning and natural language processing venues, including paper awards at KDD 2016, ACL 2018, EMNLP 2019, AKBC 2020, and ACL 2020.

CV (as of 2020)

Appointments

Univ of California
Irvine CA
Univ of California
Professor
2024 - current

Univ of California
Irvine CA
Univ of California
Associate Professor
2021 - 2024

Univ of California
Irvine CA
Univ of California
Assistant Professor
2016 - 2021

Univ of Washington
Seattle WA
Univ of Washington
Postdoctoral Researcher
2013 - 2016

Industry

Spiffy AI
Seattle WA Spiffy AI
Cofounder/CTO
2023 - current

Allen Institute for AI
Seattle WA Allen Institute for AI
Allen Fellow
2021-2023

Microsoft Research
Cambridge UK Microsoft Research
Research Intern
Summer 2012

Google Research
Mountain View CA Google Research
Research Intern
Summer 2010

Yahoo! Labs
Sunnyvale CA Yahoo! Labs
Research Intern
Summer 2009

Google
Pittsburgh PA Google
Research Intern
Summer, Fall 2007

Education

PhD (CS)
Univ of Massachusetts
Univ of Massachusetts
Amherst MA
2014

MS (CS)
Vanderbilt University
Vanderbilt University
Nashville TN
2007

BEng (EE)
University of Delhi
University of Delhi
New Delhi
2004

High School
Sardar Patel Vidyalaya
Sardar Patel Vidyalaya
New Delhi
2000

Selected Recent Publications see all...

Complex machine learning models for NLP are often brittle, making different predictions for input instances that are extremely similar semantically. To automatically detect this behavior for individual instances, we present semantically equivalent adversaries (SEAs) - semantic-preserving perturbations that induce changes in the model’s predictions. We generalize these adversaries into semantically equivalent adversarial rules (SEARs) - simple, universal replacement rules that induce adversaries on many instances. We demonstrate the usefulness and flexibility of SEAs and SEARs by detecting bugs in black-box state-of-the-art models for three domains: machine comprehension, visual question-answering, and sentiment analysis. Via user studies, we demonstrate that we generate high-quality local adversaries for more instances than humans, and that SEARs induce four times as many mistakes as the bugs discovered by human experts. SEARs are also actionable: retraining models using data augmentation significantly reduces bugs, while maintaining accuracy.

@inproceedings{sears:acl18, author = {Marco Tulio Ribeiro and Sameer Singh and Carlos Guestrin}, title = { {Semantically Equivalent Adversarial Rules for Debugging NLP models} }, booktitle = {Association for Computational Linguistics (ACL)}, doi = {10.18653/v1/P18-1079}, pages = {856-865}, year = {2018} }

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