Stochastic Processes for Physicists : Understanding Noisy Systems
نویسندگان
چکیده
[1] K. Jacobs. Stochastic Processes for Physicists: Understanding Noisy Systems. CUP, Cambridge, 2010. [2] Sze M. Tan, Colin Fox, and Geoff Nicholls. Inverse problems. Available at: http://home.comcast.net/ ̃szemengtan/, 1996. [3] Sze M. Tan. Linear systems. This text is made freely available by the author at: http://home.comcast.net/ ̃szemengtan/, 1996. [4] E. T. Jaynes. Probability Theory: The Logic of Science. CUP, Cambridge, 2003. [5] R. D. Rosenkrantz. E.T. Jaynes: Papers on Probability, Statistics, and Statistical Physics. Springer, New York, 1989. [6] H. Jeffreys. Scientific Inference. CUP, Cambridge, 1931. [7] H. Jeffreys. On the theory of errors and least squares. Proc. Roy. Soc., 138:48– 55, 1932. [8] H. Jeffreys. Theory of Probability. Clarendon Press, Oxford, 1931. [9] J. von Neumann. Wahrscheinlichkeitstheoretischer aufbau der quantenmechanik. Göttinger Nachrichten, pages 245–272, 1927. [10] L. Landau. Das dämpfungsproblem in der wallenmechanik. Z. Phys., 45:430– 441, 1995. [11] Charles H. Bennett, David P. DiVincenzo, Christopher A. Fuchs, Tal Mor, Eric Rains, Peter W. Shor, John A. Smolin, and William K. Wootters. Quantum nonlocality without entanglement. Phys. Rev. A, 59:1070–1091, 1999. [12] C. A. Fuchs and K. Jacobs. Information-tradeoff relations for finite-strength quantum measurements. Phys. Rev. A, 63:062305, 2001. [13] B. Schumacher, M. Westmoreland, and W. K. Wootters. Limitation on the amount of accessible information in a quantum channel. Phys. Rev. Lett., 76:3452, 1996.
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