NIPS 2010 - NIPS 2010 Workshop on Robust Statistical Learning
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Category NIPS 2010
Deadline: November 09, 2010 | Date: December 11, 2010
Venue/Country: Whistler, Canada
Updated: 2010-10-10 08:27:50 (GMT+9)
Call For Papers - CFP
Robust Statistical LearningWorkshop at the 24th Annual Conference on Neural InformationProcessing Systems (NIPS 2010)http://www.cs.utexas.edu/~sai/robustml
Submission Deadline: Nov 09, 2010There has been a resurgence of robust learning methods (broadlyunderstood) in recent years, largely from different communities thatrarely interact: (classical) robust statistics, adversarial machinelearning, robust optimization, and multi-structured or dirty modellearning. This workshop aims to bring together researchers from thesedifferent communities, and identify potential common intuitionsunderlying such robust learning methods. We are interested inunderstanding where techniques from one field might be applicable, andwhat their limitations are. As one very important example, we willconsider the high dimensional regime, where it is not clear how toextend many of the techniques successful in the classical robuststatistics setup. There has been a massive amount of recent interestand work in modeling such high-dimensional data, and the naturalextension of such results would be to make them more robust. Indeed,with increasingly high-dimensional and "dirty" real world data that donot conform to clean modeling assumptions, this is a vital necessity.We would like to encourage high quality submissions of short papersrelevant to the workshop. Accepted papers will be presented asspotlight talks and posters. Of particular interest are papers in thefollowing topics:(a) Dirty Models: these invoke a combination of structural assumptionssuch as sparsity, low-rank etc. to develop a robust estimation method.(b) Robust Optimization: these use techniques from convexity andduality, to construct solutions that are immunized from some boundedlevel of uncertainty, typically expressed as bounded (but otherwisearbitrary, i.e., adversarial) perturbations of the decisionparameters.(c) Classical Robust Statistics; Adversarial Learning: these arerobust to misspecified modeling assumptions in general, and do notmodel the outliers specifically.Submission deadline: Nov 09, 2010Length & Format: max. 6 pages NIPS 2010 formatTime & Location: December 10 2010, Whistler, CanadaSubmission instructions: Via email to robustml.nips
gmail.comOrganizers: Pradeep Ravikumar, Constantine Caramanis, Sujay Sanghavi(UT Austin)
Keywords: Accepted papers list. Acceptance Rate. EI Compendex. Engineering Index. ISTP index. ISI index. Impact Factor.
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