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Research is funded by the DARPA ITMANET project, Motorola, as well as the National Science Foundation. See also the Information Theory page.
Sofia Kyriazopoulou-Panagiotopoulou, Ioannis Kontoyiannis, and Sean Meyn, Control Variates as Screening Functions VALUETOOLS 2008 - Third International Conference on Performance Evaluation Methodologies and Tools. October 20-24, 2008, Athens, Greece. Vivek Borkar and Sean Meyn, Oja's Algorithm for Graph Clustering and Markov Spectral Decomposition. George Mathew and Sean Meyn, Shannon meets Bellman: Feature based Markovian models for detection and optimization George Mathew, Sean Meyn, Andrzej Banaszuk, Waveform Relaxation and Graph Decomposition. I. Kontoyiannis , L. A. Lastras-Montaño , S. P. Meyn, Exponential bounds and stopping rules for MCMC and general Markov chains. Proceedings of the 1st international conference on Performance evaluation methodolgies and tools, October 11-13, 2006, Pisa, Italy. G. Fort, S. Meyn, E. Moulines, and P. Priouret, The ODE methods for Markov chain stability with applications to MCMC I. Kontoyiannis and S.P. Meyn, Computable Exponential Bounds for Screened Estimation and Simulation E. Abbe, M. Medard, S. P. Meyn, and L. Zheng, Finding the Best Mismatched Detector for Channel Coding and Hypothesis Testing C. Pandit, and S.P. Meyn, Worst-Case Large-Deviations Asymptotics with Application to Queueing and Information Theory. Stochastic Processes and Applications 116(5) pp. 724-756, 2006. C. Pandit, J. Huang, S. Meyn, V. Veeravalli, Extremal Distributions in Information Theory and Hypothesis Testing. Proceedings of the IEEE Information Theory Workshop, San Antonio, Texas, October 24-29, 2004. V. Tadic, S.P. Meyn and R. Tempo, Randomized Algorithms for Semi-Infinite Programming Problems. Probabilistic and Randomized Methods for Design under Uncertainty, Springer Verlag, 2005. V. Tadic and S.P. Meyn, Asymptotic Properties of Two Time-Scale Stochastic Approximation Algorithms with Constant Step Sizes, Proceedings of the 2003 American Control Conference June 4 to 6, 2003. J. Huang, Kontoyiannis, I. and S.P. Meyn, The O.D.E. Method and Spectral Theory of Markov Operators (also available in pdf format), Proceedings of the Second Kansas Workshop on Stochastic Theory - Adaptive Control, 2001 V. Borkar and S.P. Meyn, The O.D.E. Method for Convergence of Stochastic Approximation and Reinforcement Learning, SIAM J. Control, Vol. 38, no.2, 2000, pp. 447-69. S.R. Rayadurgam and S.P. Meyn, Bounds on Achievable Performance in Adaptive Control, IEEE Transactions on Automatic Control, Vol 44, No 4, pp. 670--682, 1999. L.J. Brown, S.P. Meyn, and R. Weber, Adaptive Dead-Time Compensation with Applications, IEEE J. Control Systems Technology, vol 6, pp. 335-349, 1998. S.P. Meyn and L. J. Brown, Model Reference Adaptive Control of Time Varying and Stochastic Systems, IEEE Transactions on Automatic Control, Vol. 38, pp. 1738--1753, 1993 |
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