mlsp 2020bhaskar rao university of california san diego raviv raich oregon state university call for...
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MLSP 2020IEEE International Workshop onMACHINE LEARNING FOR SIGNAL PROCESSINGSeptember 21–24, 2020Aalto University, Espoo, Finland http://ieeemlsp.cc
ORGANIZING COMMITTEE
General Chair Simo SarkkaAalto University
Program Chairs Lassi RoininenLUT UniversityAndreas HauptmannUniversity of OuluManon KokTU DelftMichael Riis AndersenTechnical Universityof Denmark
Finance Chair Seppo SierlaAalto University
Publicity Chairs Arno SolinAalto UniversityMarc Van HulleKU Leuven
Tutorial Chair Alexander IlinAalto University
Publications Chair Roland HostettlerUppsala University
Advisory Zheng-Hua TanCommittee Aalborg University
Murat AkcakayaUniversity of PittsburghBhaskar RaoUniversity of CaliforniaSan DiegoRaviv RaichOregon State University
CALL FOR SPECIAL SESSIONS
MLSP is seeking original, high quality pro-posals for Special Sessions, to be includedin the technical program along with the reg-ular track. Special Sessions are expected toaddress research in focused, emerging, or in-terdisciplinary areas of particular interest, notcovered already by traditional MLSP sessions.
SCHEDULE
Special session call deadline March 19Paper submission deadline April 19Decision notification June 30Camera-ready paper deadline July 25Advance registration deadline August 22
CALL FOR PAPERSThe 30th MLSP workshop, an annual event organized by the IEEE Signal Pro-cessing Society MLSP Technical Committee, will present the most recent andexciting advances in machine learning for signal processing through keynotetalks, tutorials, as well as special and regular single-track sessions. Prospec-tive authors are invited to submit papers on relevant algorithms and applica-tions including, but not limited to:
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• Learning theory and modeling
• Neural networks and deep learning
• Bayesian Learning and modeling
• Sequential learning, sequential decisionmethods
• Information-theoretic learning
• Graphical and kernel models
• Bounds on performance
• Source separation and independentcomponent analysis
• Signal detection, pattern recognition andclassification
• Tensor and structured matrix methods
• Machine learning for big data
• Large scale learning
• Dictionary learning, subspace andmanifold learning
• Semi-supervised and unsupervisedlearning
• Active and reinforcement learning
• Learning from multimodal data
• Resource efficient machine learning
• Cognitive information processing
• Bioinformatics applications
• Biomedical applications and neuralengineering
• Speech and audio processing applications
• Image and video processing applications
• Intelligent multimedia and web processing
• Communications applications
• Other applications including socialnetworks, games, smart grid, security andprivacy
Prospective authors are invited to submit a paper using the electronic sub-mission procedure that will be available at http://ieeemlsp.cc. The presentedpapers will be published in and indexed by IEEE Xplore.
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