Difference between revisions of "Fall 2022 Schedule"
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Bio: Vivek Srikumar is associate professor in the School of Computing at the University of Utah. His research lies in the areas of natural learning processing and machine learning and has primarily been driven by questions arising from the need to reason about textual data with limited explicit supervision and to scale NLP to large problems. His work has been published in various AI, NLP and machine learning venues and has been recognized by paper awards from EMNLP and CoNLL. His work has been supported by awards from NSF, BSF and NIH, and also from several companies.. He obtained his Ph.D. from the University of Illinois at Urbana-Champaign in 2013 and was a post-doctoral scholar at Stanford University. | Bio: Vivek Srikumar is associate professor in the School of Computing at the University of Utah. His research lies in the areas of natural learning processing and machine learning and has primarily been driven by questions arising from the need to reason about textual data with limited explicit supervision and to scale NLP to large problems. His work has been published in various AI, NLP and machine learning venues and has been recognized by paper awards from EMNLP and CoNLL. His work has been supported by awards from NSF, BSF and NIH, and also from several companies.. He obtained his Ph.D. from the University of Illinois at Urbana-Champaign in 2013 and was a post-doctoral scholar at Stanford University. | ||
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+ | Recording of Vivek's presentation: https://drive.google.com/file/d/1KKbU46LJbCFIgSF-CcpdgHMq4nZmyNt2/view?usp=sharing | ||
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| 9.23.20 || | | 9.23.20 || |
Revision as of 11:07, 16 September 2020
Date | Title |
---|---|
9.2.20 | Planning |
9.9.20 | More planning |
9.16.20 | Vivek Srikumar - Title: Fads, Fallacies and Fantasies in the Name of Machine Learning
Abstract: The pervasiveness of machine learning, and artificial intelligence powered by it, is clear from even a cursory overview of the last several years of academic literature and mainstream technology reporting. The goal of this talk is to provoke thought and discussions about the future of the field. To this end, I will talk about how, as a field, applied machine learning may be starting to bind itself into an intellectual monoculture. In particular, I will describe specific blinders that we may find hard to shake off: (a) the obsession with ranking and leaderboarding, (b) the assumption that purely data-driven computing is always the right answer, and (c) the excessive focus on clean toy problems in lieu of working with real data. Along the way, we will see several examples of questions that we may be able to think about if we cast aside these blinders. Bio: Vivek Srikumar is associate professor in the School of Computing at the University of Utah. His research lies in the areas of natural learning processing and machine learning and has primarily been driven by questions arising from the need to reason about textual data with limited explicit supervision and to scale NLP to large problems. His work has been published in various AI, NLP and machine learning venues and has been recognized by paper awards from EMNLP and CoNLL. His work has been supported by awards from NSF, BSF and NIH, and also from several companies.. He obtained his Ph.D. from the University of Illinois at Urbana-Champaign in 2013 and was a post-doctoral scholar at Stanford University. Recording of Vivek's presentation: https://drive.google.com/file/d/1KKbU46LJbCFIgSF-CcpdgHMq4nZmyNt2/view?usp=sharing |
9.23.20 | |
9.30.20 | Jon's Prelim |
10.7.20 | Peter Foltz "NLP for Team Communication Analysis" |
10.14.20 | Tao Li (Utah CS PhD student) - Structured Tuning for Semantic Role Labeling, ACL 2020
Authors: Tao Li, Parth Anand Jawale, Martha Palmer, Vivek Srikumar, https://www.aclweb.org/anthology/2020.acl-main.744.pdf Abstract: Recent neural network-driven semantic role labeling (SRL) systems have shown impressive improvements in F1 scores. These improvements are due to expressive input representations, which, at least at the surface, are orthogonal to knowledge-rich constrained decoding mechanisms that helped linear SRL models. Introducing the benefits of structure to inform neural models presents a methodological challenge. In this paper, we present a structured tuning framework to improve models using softened constraints only at training time. Our framework leverages the expressiveness of neural networks and provides supervision with structured loss components. We start with a strong baseline (RoBERTa) to validate the impact of our approach, and show that our framework outperforms the baseline by learning to comply with declarative constraints. Additionally, our experiments with smaller training sizes show that we can achieve consistent improvements under low-resource scenarios. |
10.21.20 | Two Brian Keegan PhD students: Arcadia Zhang and Jordan Wirfs-Brock |
10.28.20 | Chelsea Proposal |
11.4.20 | Skatje Proposal? |
11.11.20 | Rehan Proposal |
11.18.20 | NAACL submission workshop |
11.25.20 | Fall Break |
12.2.20 | Tentative Abhidip's proposal |
12.9.20 | Tentative Vivian proposal |
Past Schedules
- Spring 2020 Schedule
- Fall 2019 Schedule
- Spring 2019 Schedule
- Fall 2018 Schedule
- Summer 2018 Schedule
- Spring 2018 Schedule
- Fall 2017 Schedule
- Summer 2017 Schedule
- Spring 2017 Schedule
- Fall 2016 Schedule
- Spring 2016 Schedule
- Fall 2015 Schedule
- Spring 2015 Schedule
- Fall 2014 Schedule
- Spring 2014 Schedule
- Fall 2013 Schedule
- Summer 2013 Schedule
- Spring 2013 Schedule
- Fall 2012 Schedule
- Spring 2012 Schedule
- Fall 2011 Schedule
- Summer 2011 Schedule
- Spring 2011 Schedule
- Fall 2010 Schedule
- Summer 2010 Schedule
- Spring 2010 Schedule
- Fall 2009 Schedule
- Summer 2009 Schedule
- Spring 2009 Schedule
- Fall 2008 Schedule
- Summer 2008 Schedule