15,730 research outputs found

    Solving systems of phaseless equations via Kaczmarz methods: A proof of concept study

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    We study the Kaczmarz methods for solving systems of quadratic equations, i.e., the generalized phase retrieval problem. The methods extend the Kaczmarz methods for solving systems of linear equations by integrating a phase selection heuristic in each iteration and overall have the same per iteration computational complexity. Extensive empirical performance comparisons establish the computational advantages of the Kaczmarz methods over other state-of-the-art phase retrieval algorithms both in terms of the number of measurements needed for successful recovery and in terms of computation time. Preliminary convergence analysis is presented for the randomized Kaczmarz methods

    Assignments of Ξ›Q\Lambda_Q and ΞQ\Xi_Q baryons in the heavy quark-light diquark picture

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    We apply a new mass formula which is derived analytically in the relativistic flux tube model to the mass spectra of Ξ›Q\Lambda_Q and ΞQ\Xi_Q (\emph{Q} = \emph{c} or \emph{b} quark) baryons. To this end, the heavy quark-light diquark picture is employed. We find that all masses of the available Ξ›Q\Lambda_Q and ΞQ\Xi_Q states can be understood well. The assignments to these states do not appear to contradict the strong decay properties. Ξ›c(2760)+\Lambda_c(2760)^+ and Ξc(2980)\Xi_c(2980) are assigned to the first radial excitations with JP=1/2+J^P = 1/2^+. Ξ›c(2940)+\Lambda_c(2940)^+ and Ξc(3123)\Xi_c(3123) might be the 2\emph{P} states. The Ξ›c(2880)+\Lambda_c(2880)^+ and Ξc(3080)\Xi_c(3080) are the good 1\emph{D} candidates with JP=5/2+J^P = 5/2^+. Ξc(3055)\Xi_c(3055) is likely to be a 1\emph{D} state with JP=3/2+J^P = 3/2^+. Ξ›b(5912)0\Lambda_b(5912)^0 and Ξ›b(5920)0\Lambda_b(5920)^0 favor the 1\emph{P} assignments with JP=1/2βˆ’J^P = 1/2^- and 3/2βˆ’3/2^-, respectively. We propose a search for the Ξ›~c2(5/2βˆ’)\tilde{\Lambda}_{c2}(5/2^-) state which can help to distinguish the diquark and three-body schemes.Comment: 9 tables, more discussions and references adde

    Many Hard Examples in Exact Phase Transitions with Application to Generating Hard Satisfiable Instances

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    This paper first analyzes the resolution complexity of two random CSP models (i.e. Model RB/RD) for which we can establish the existence of phase transitions and identify the threshold points exactly. By encoding CSPs into CNF formulas, it is proved that almost all instances of Model RB/RD have no tree-like resolution proofs of less than exponential size. Thus, we not only introduce new families of CNF formulas hard for resolution, which is a central task of Proof-Complexity theory, but also propose models with both many hard instances and exact phase transitions. Then, the implications of such models are addressed. It is shown both theoretically and experimentally that an application of Model RB/RD might be in the generation of hard satisfiable instances, which is not only of practical importance but also related to some open problems in cryptography such as generating one-way functions. Subsequently, a further theoretical support for the generation method is shown by establishing exponential lower bounds on the complexity of solving random satisfiable and forced satisfiable instances of RB/RD near the threshold. Finally, conclusions are presented, as well as a detailed comparison of Model RB/RD with the Hamiltonian cycle problem and random 3-SAT, which, respectively, exhibit three different kinds of phase transition behavior in NP-complete problems.Comment: 19 pages, corrected mistakes in Theorems 5 and

    Painless Breakups -- Efficient Demixing of Low Rank Matrices

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    Assume we are given a sum of linear measurements of ss different rank-rr matrices of the form y=βˆ‘k=1sAk(Xk)y = \sum_{k=1}^{s} \mathcal{A}_k ({X}_k). When and under which conditions is it possible to extract (demix) the individual matrices Xk{X}_k from the single measurement vector y{y}? And can we do the demixing numerically efficiently? We present two computationally efficient algorithms based on hard thresholding to solve this low rank demixing problem. We prove that under suitable conditions these algorithms are guaranteed to converge to the correct solution at a linear rate. We discuss applications in connection with quantum tomography and the Internet-of-Things. Numerical simulations demonstrate empirically the performance of the proposed algorithms
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