Page Not Found
Page not found. Your pixels are in another canvas.
A list of all the posts and pages found on the site. For you robots out there is an XML version available for digesting as well.
Page not found. Your pixels are in another canvas.
About me
This is a page not in th emain menu
Published:
This is a sample blog post. Lorem ipsum I can’t remember the rest of lorem ipsum and don’t have an internet connection right now. Testing testing testing this blog post. Blog posts are cool.
Published:
This is a sample blog post. Lorem ipsum I can’t remember the rest of lorem ipsum and don’t have an internet connection right now. Testing testing testing this blog post. Blog posts are cool.
Published:
This is a sample blog post. Lorem ipsum I can’t remember the rest of lorem ipsum and don’t have an internet connection right now. Testing testing testing this blog post. Blog posts are cool.
Published:
This is a sample blog post. Lorem ipsum I can’t remember the rest of lorem ipsum and don’t have an internet connection right now. Testing testing testing this blog post. Blog posts are cool.
Short description of portfolio item number 1
Short description of portfolio item number 2
Published in AAAI-1997, 1997
Download here
Published in IJCAI-2001, 2001
Download here
Published in TREC-2001, 2001
Download here
Published in COLING-2002, 2002
Download here
Published in TREC-2002, 2002
Download here
Published in AI&Math-2004, 2004
Download here
Published in CoNLL-2004, 2004
Download here
Published in CoNLL-2004 Shared Task, 2004
Download here
Published in COLING-2004, 2004
Download here
Published in WI-2004, 2004
Download here
Published in PhD Thesis, 2005
Download here
Published in CoNLL-2005 Shared Task, 2005
Download here
Published in IJCAI-2005, 2005
Download here
Published in IJCAI-2005, 2005
Download here
Published in ICML-2005, 2005
Download here
Published in WWW-2006, 2006
Download here
Published in ACL-IJCNLP-2006, 2006
Download here
Published in CEAS-2006, 2006
Download here
Published in CEAS-2006, 2006
Download here
Published in IJCAI-2007, 2007
Download here
Published in Computational Linguistics, 2007
Download here
Published in AAAI-2007, 2007
Download here
Published in CEAS-2007, 2007
Download here
Published in KDD-2007, 2007
Download here
Published in PKDD-2007, 2007
Download here
Published in Introduction to Statistical Relational Learning, 2007
Download here
Published in CEAS-2008, 2008
Download here
Published in ADKDD-2008, 2008
Download here
Published in KDD-2008, 2008
Download here
Published in CEAS-2009, 2009
Download here
Published in EMNLP-2009, 2009
Download here
Published in SIGIR-2010, 2010
Download here
Published in EMNLP-2010, 2010
Download here
Published in MLOAD-2010, 2010
Download here
Published in CoNLL-2011, 2011
Download here
Published in IJCAI-2011, 2011
Download here
Published in SIGIR-2011, 2011
Download here
Published in NAACL-HLT-2012, 2012
Download here
Published in NAACL-HLT-2012, 2012
Download here
Published in EMNLP-CoNLL-2012, 2012
Download here
Published in NAACL-HLT-2013, 2013
Download here
Published in NAACL-HLT-2013, 2013
Download here
Published in ACL-2013, 2013
Download here
Published in TACL, 2013
Download here
Published in EMNLP-2013, 2013
Download here
Published in EMNLP-2013, 2013
Download here
Published in ACL-2014, 2014
Download here
Published in ACL-2014, 2014
Download here
Published in EMNLP-2014, 2014
Download here
Published in SLT-2014, 2014
Download here
Published in ICLR-2015, 2015
Download here
Published in WWW-2015, 2015
Download here
Published in WWW-2015, 2015
Download here
Published in ACL-IJCNLP-2015, 2015
Download here
Published in MSR-TR-2015-20, 2015
Download here
Published in EMNLP-2015, 2015
Download here
Published in WWW-2016, 2016
Download here
Published in ICLR-2016, 2016
Download here
Published in ACL-2016, 2016
Download here
Published in ACL-2016, 2016
Download here
Published in EMNLP-2016, 2016
Download here
Published in TACL, 2017
Download here
Published in ACL-2017, 2017
Download here
Published in EMNLP-2017, 2017
Download here
Published in AAAI-2018, 2018
Download here
Published in NAACL-HLT-2018, 2018
Download here
Published in NAACL-HLT-2018, 2018
Download here
Published in EMNLP-2018, 2018
Download here
Published in EMNLP-2018, 2018
Download here
Published in EMNLP-2018, 2018
Download here
Published in EMNLP-2018, 2018
Download here
Published in AAAI-2019, 2019
Download here
Published in ICLR-2019, 2019
Download here
Published in NAACL-HLT-2019, 2019
Download here
Published in EMNLP-2019, 2019
Download here
Published in EMNLP-2019, 2019
Download here
Published in ICLR-2020, 2020
Download here
Published in ACL-2020 Tutorial, 2020
Download here
Published in ACL-2020, 2020
Download here
Published in EMNLP-2020, 2020
Download here
Published in EMNLP-2020, 2020
Download here
Published in EMNLP-2020, 2020
Download here
Published in EMNLP-2020, 2020
Download here
Published in EMNLP-2020 Findings, 2020
Download here
Published in NeurIPS-2020, 2020
Download here
Published:
Understanding human language has been one of the long-standing research goals since the dawn of AI. In this lecture, we will discuss how recently developed methods, mostly deep neural network models, advance the state of the art. The lecture starts from the broad introduction of the research of natural language processing, analyzing why understanding language remains difficult. We will introduce several representative NLP tasks and discuss the role of machine leaning in the data-driven approaches. Historical and modern paradigms of problem formulations and models will also be briefly surveyed in this part.
Published:
Mapping unstructured text to structured meaning representations, semantic parsing covers a wide variety of problems in the domain of natural language understanding and interaction. Common applications include translating human commands to executable programs, as well as question answering when using databases or semi-structured tables as the information source. Settings of real-world semantic parsing problems, such as the large space of legitimate semantic parses, weak or mixed supervision signals, and complex semantic/syntactic constraints, pose interesting and yet difficult structured prediction challenges. In this talk, I will give an overview on these technical challenges and present a case study on sequential question answering, answering sequences of simple but inter-related questions using semi-structured tables from Wikipedia. In particular, I will describe our dynamic neural semantic parsing framework trained using a weakly supervised reward-guided search, which effectively leverages the sequential context to outperform state-of-the-art QA systems that are designed to answer highly complex questions. The talk will be concluded with discussion on the open problems and promising directions for future research.
Undergraduate course, University 1, Department, 2014
This is a description of a teaching experience. You can use markdown like any other post.
Workshop, University 1, Department, 2015
This is a description of a teaching experience. You can use markdown like any other post.