9,301 research outputs found
Optimal Binary Search Trees with Near Minimal Height
Suppose we have n keys, n access probabilities for the keys, and n+1 access
probabilities for the gaps between the keys. Let h_min(n) be the minimal height
of a binary search tree for n keys. We consider the problem to construct an
optimal binary search tree with near minimal height, i.e.\ with height h <=
h_min(n) + Delta for some fixed Delta. It is shown, that for any fixed Delta
optimal binary search trees with near minimal height can be constructed in time
O(n^2). This is as fast as in the unrestricted case.
So far, the best known algorithms for the construction of height-restricted
optimal binary search trees have running time O(L n^2), whereby L is the
maximal permitted height. Compared to these algorithms our algorithm is at
least faster by a factor of log n, because L is lower bounded by log n
Exact solution for the Green's function describing time-dependent thermal Comptonization
We obtain an exact, closed-form expression for the time-dependent Green's
function solution to the Kompaneets equation. The result, which is expressed as
the integral of a product of two Whittaker functions, describes the evolution
in energy space of a photon distribution that is initially monoenergetic.
Effects of spatial transport within a homogeneous scattering cloud are also
included within the formalism. The Kompaneets equation that we solve includes
both the recoil and energy diffusion terms, and therefore our solution for the
Green's function approaches the Wien spectrum at large times. We show that the
Green's function can be used to generate all of the previously known
steady-state and time-dependent solutions to the Kompaneets equation. The new
solution allows the direct determination of the spectrum, without the need to
numerically solve the partial differential equation. Based upon the Green's
function, we obtain a new time-dependent solution for the photon distribution
resulting from the reprocessing of an optically thin bremsstrahlung initial
spectrum with a low-energy cutoff. The new bremsstrahlung solution possesses a
finite photon number density, and therefore it displays proper equilibration to
a Wien spectrum at large times. The relevance of our results for the
interpretation of emission from variable X-ray sources is discussed, with
particular attention to the production of hard X-ray time lags, and the Compton
broadening of narrow features such as iron lines.Comment: text plus 9 figures, MNRAS 2003, in pres
Normalization Integrals of Orthogonal Heun Functions
A formula for evaluating the quadratic normalization integrals of orthogonal
Heun functions over the real interval 0 <= x <= 1 is derived using a simple
limiting procedure based upon the associated differential equation. The
resulting expression gives the value of the normalization integral explicitly
in terms of the local power-series solutions about x=0 and x=1 and their
derivatives. This provides an extremely efficient alternative to numerical
integration for the development of an orthonormal basis using Heun functions,
because all of the required information is available as a by-product of the
search for the eigenvalues of the differential equation.
02.30.Gp; 02.30.Hq; 02.70.-c; 02.60.JhComment: 12 pages; no figure
A new perspective on the Propagation-Separation approach: Taking advantage of the propagation condition
The Propagation-Separation approach is an iterative procedure for pointwise
estimation of local constant and local polynomial functions. The estimator is
defined as a weighted mean of the observations with data-driven weights. Within
homogeneous regions it ensures a similar behavior as non-adaptive smoothing
(propagation), while avoiding smoothing among distinct regions (separation). In
order to enable a proof of stability of estimates, the authors of the original
study introduced an additional memory step aggregating the estimators of the
successive iteration steps. Here, we study theoretical properties of the
simplified algorithm, where the memory step is omitted. In particular, we
introduce a new strategy for the choice of the adaptation parameter yielding
propagation and stability for local constant functions with sharp
discontinuities.Comment: 28 pages, 5 figure
Implications of Gamma-Ray Transparency Constraints in Blazars: Minimum Distances and Gamma-Ray Collimation
We develop a general expression for the gamma-gamma absorption coefficient
for gamma-rays propagating in an arbitrary direction at an arbitrary point in
space above an X-ray emitting accretion disk. The X-ray intensity is assumed to
vary as a power law in energy and radius between the outer disk radius and the
inner radius, which is the radius of marginal stability for a Schwarzschild
black hole. We use our result for the absorption coefficient to calculate the
gamma-gamma optical depth for gamma-rays created at an arbitrary height and
propagating at an arbitrary angle relative to the disk axis. As an application,
we use our formalism to compute the minimum distance between the central black
hole and the site of production of the gamma-rays detected by EGRET during the
June 1991 flare of 3C 279. Our results indicate that the ``focusing'' of the
gamma-rays along the disk axis due to pair production is strong enough to
explain the observed degree of alignment in blazar sources. If the gamma-rays
are produced isotropically in gamma-ray blazars, then these objects should
appear as bright MeV sources when viewed along off-axis lines of sight.Comment: 23 pages, tex, figures available on request to [email protected]
On Quasi-Newton Forward--Backward Splitting: Proximal Calculus and Convergence
We introduce a framework for quasi-Newton forward--backward splitting
algorithms (proximal quasi-Newton methods) with a metric induced by diagonal
rank- symmetric positive definite matrices. This special type of
metric allows for a highly efficient evaluation of the proximal mapping. The
key to this efficiency is a general proximal calculus in the new metric. By
using duality, formulas are derived that relate the proximal mapping in a
rank- modified metric to the original metric. We also describe efficient
implementations of the proximity calculation for a large class of functions;
the implementations exploit the piece-wise linear nature of the dual problem.
Then, we apply these results to acceleration of composite convex minimization
problems, which leads to elegant quasi-Newton methods for which we prove
convergence. The algorithm is tested on several numerical examples and compared
to a comprehensive list of alternatives in the literature. Our quasi-Newton
splitting algorithm with the prescribed metric compares favorably against
state-of-the-art. The algorithm has extensive applications including signal
processing, sparse recovery, machine learning and classification to name a few.Comment: arXiv admin note: text overlap with arXiv:1206.115
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