767 research outputs found
Perfect state transfer in cubelike graphs
Suppose is a subset of non-zero vectors from the vector space
. The cubelike graph has as its vertex
set, and two elements of are adjacent if their difference is
in . If is the matrix with the elements of as its
columns, we call the row space of the code of . We use this code to
study perfect state transfer on cubelike graphs. Bernasconi et al have shown
that perfect state transfer occurs on at time if and only if the
sum of the elements of is not zero. Here we consider what happens when this
sum is zero. We prove that if perfect state transfer occurs on a cubelike
graph, then it must take place at time , where is the greatest
common divisor of the weights of the code words. We show that perfect state
transfer occurs at time if and only if D=2 and the code is
self-orthogonal.Comment: 10 pages, minor revision
Learning to Optimize under Non-Stationarity
We introduce algorithms that achieve state-of-the-art \emph{dynamic regret}
bounds for non-stationary linear stochastic bandit setting. It captures natural
applications such as dynamic pricing and ads allocation in a changing
environment. We show how the difficulty posed by the non-stationarity can be
overcome by a novel marriage between stochastic and adversarial bandits
learning algorithms. Defining and as the problem dimension, the
\emph{variation budget}, and the total time horizon, respectively, our main
contributions are the tuned Sliding Window UCB (\texttt{SW-UCB}) algorithm with
optimal dynamic regret, and the
tuning free bandit-over-bandit (\texttt{BOB}) framework built on top of the
\texttt{SW-UCB} algorithm with best
dynamic regret
A fiducial-aided data fusion method for the measurement of multiscale complex surfaces
Multiscale complex surfaces, possessing high form accuracy and geometric complexity, are widely used for various applications in fields such as telecommunications and biomedicines. Despite the development of multi-sensor technology, the stringent requirements of form accuracy and surface finish still present many challenges in their measurement and characterization. This paper presents a fiducial-aided data fusion method (FADFM), which attempts to address the challenge in modeling and fusion of the datasets from multiscale complex surfaces. The FADFM firstly makes use of fiducials, such as standard spheres, as reference data to form a fiducial-aided computer-aided design (FA-CAD) of the multiscale complex surface so that the established intrinsic surface feature can be used to carry out the surface registration. A scatter searching algorithm is employed to solve the nonlinear optimization problem, which attempts to find the global minimum of the transformation parameters in the transforming positions of the fiducials. Hence, a fused surface model is developed which takes into account both fitted surface residuals and fitted fiducial residuals based on Gaussian process modeling. The results of the simulation and measurement experiments show that the uncertainty of the proposed method was up to 3.97 Γ 10 β5 ΞΌm based on a surface with zero form error. In addition, there is a 72.5% decrease of the measurement uncertainty as compared with each individual sensor value and there is an improvement of more than 36.1% as compared with the Gaussian process-based data fusion technique in terms of root-mean-square (RMS) value. Moreover, the computation time of the fusion process is shortened by about 16.7%. The proposed method achieves final measuring results with better metrological quality than that obtained from each individual dataset, and it possesses the capability of reducing the measurement uncertainty and computational cost
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