Artifact liblip-dev_2.0.0-4_arm64

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  Architecture: arm64
  Depends: liblip2t64 (= 2.0.0-4), libtnt-dev
  Description: |-
    reliable interpolation of multivariate scattered data
     Lip interpolates scattered multivariate data with a Lipschitz function.
     .
     Methods of interpolation of multivariate scattered data are scarce.
     The programming library Lip implements a
     new method by G. Beliakov, which relies on building reliable lower and
     upper approximations of Lipschitz functions. If we assume that the
     function that we want to interpolate is Lipschitz-continuous, we can
     provide tight bounds on its values at any point, in the worse case
     scenario. Thus we obtain the interpolant, which approximates the unknown
     Lipschitz function f  best in the worst case scenario. This translates
     into reliable learning of f, something that other methods cannot do (the
     error of approximation of most other methods can be infinitely large,
     depending on what f generated the data).
     .
     Lipschitz condition implies that the rate of change of the function is
     bounded:
     .
     |f(x)-f(y)|<M||x-y||.
     .
     It is easily interpreted as the largest slope of the function f. f needs
     not be differentiable.
     .
     The interpolant based on the Lipschitz properties of the function is
     piecewise linear, it possesses many useful properties, and it is shown
     that it is the best possible approximation to f in the worst case
     scenario. The value of the interpolant depends on the data points in the
     immediate neigbourhood of the point in question, and in this sense, the
     method is similar to the natural neighbour interpolation.
     .
     There are two methods of construction and evaluation of the interpolant.
     The explicit method processes all data points to find the neighbours of
     the point in question. It does not require any preprocessing, but the
     evaluation of the interpolant has linear complexity O(K) in terms of the
     number of data.
     .
     "Fast" method requires substantial preprocessing in the case of more
     than 3-4 variables, but then it provides O(log K) evaluation time, and
     thus is suitable for very large data sets (K of order of 500000) and
     modest dimension (n=1-4). For larger dimension, explicit method becomes
     practically more efficient. The class library Lip implements both fast
     and explicit methods.
  Homepage: http://www.deakin.edu.au/~gleb/lip.html
  Installed-Size: '278'
  Maintainer: Debian QA Group <packages@qa.debian.org>
  Package: liblip-dev
  Priority: optional
  Section: libdevel
  Source: liblip
  Version: 2.0.0-4
srcpkg_name: liblip
srcpkg_version: 2.0.0-4

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binary package System mirror sid from https://deb.debian.org/debian - 1 month, 1 week ago 1 week, 4 days
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