Distilling common randomness from bipartite quantum states
Igor Devetak, Andreas Winter
ISIT 2003
Solving real-world classification and recognition problems requires a principled way of modeling the physical phenomena generating the observed data and the uncertainty in it. The uncertainty originates from the fact that many data generation aspects are influenced by nondirectly measurable variables or are too complex to model and hence are treated as random fluctuations. For example, in speech production, uncertainty could arise from vocal tract variations among different people or corruption by noise. The goal of modeling is to establish a generalization from the set of observed data such that accurate inference (classification, decision, recognition) can be made about the data yet to be observed, which we refer to as unseen data. © 2012 IEEE.
Igor Devetak, Andreas Winter
ISIT 2003
J. LaRue, C. Ting
Proceedings of SPIE 1989
S.F. Fan, W.B. Yun, et al.
Proceedings of SPIE 1989
Arnon Amir, Michael Lindenbaum
IEEE Transactions on Pattern Analysis and Machine Intelligence