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[nl-uiuc] Reminder: AIIS: Rajhans Samdani - Today @ 4pm


Chronological Thread 
  • From: Yonatan Bisk <bisk1 AT illinois.edu>
  • To: "nl-uiuc AT cs.uiuc.edu" <nl-uiuc AT cs.uiuc.edu>, aivr AT cs.uiuc.edu, Vision List <vision AT cs.uiuc.edu>, Eyal Amir <eyal AT cs.uiuc.edu>, aiis AT cs.uiuc.edu, aistudents AT cs.uiuc.edu, "Girju, Corina R" <girju AT illinois.edu>, Catherine Blake <clblake AT illinois.edu>, "Efron, Miles James" <mefron AT illinois.edu>, "Lee, Soo Min" <lee203 AT illinois.edu>, Jana Diesner <jdiesner AT illinois.edu>
  • Subject: [nl-uiuc] Reminder: AIIS: Rajhans Samdani - Today @ 4pm
  • Date: Fri, 2 Nov 2012 14:47:55 -0500
  • List-archive: <http://lists.cs.uiuc.edu/pipermail/nl-uiuc/>
  • List-id: Natural language research announcements <nl-uiuc.cs.uiuc.edu>

-- In One Hour --

   When:  Today @ 4pm
Where: 3405 SC
Speaker: Rajhans Samdani (http://web.engr.illinois.edu/~rsamdan2/)


Title:
Efficient Decomposed Learning for Structured Prediction

Abstract:
Structured prediction is the cornerstone of several machine learning applications. Unfortunately, in structured prediction settings with expressive inter-variable interactions, exact inference-based learning algorithms, e.g. Structural SVM, are often intractable. We present a new way, Decomposed Learning (DecL), which performs efficient learning by restricting the inference step to a limited part of the structured output spaces. We provide characterizations based on the structure, target parameters, and gold labels, under which DecL is equivalent to exact learning. We then show that in real world settings, where our theoretical assumptions may not hold exactly, DecL-based algorithms are significantly more efficient and perform as well as exact learning.

Bio:
Rajhans is a fourth year PhD student working with Prof. Dan Roth.  Rajhans works on ML techniques for NLP.  More specifically, Rajhans works on supervised and un(semi-)supervised learning for structured output prediction for NLP applications.  Rajhans is the self-proclaimed most fashionable guy this side of Green street. 



  • [nl-uiuc] Reminder: AIIS: Rajhans Samdani - Today @ 4pm, Yonatan Bisk, 11/02/2012

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