Artifact r-cran-spatstat.linnet_3.1-5-1_amd64

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deb_fields:
  Architecture: amd64
  Depends: r-api-4.0, r-cran-spatstat.data (>= 3.0-4), r-cran-spatstat.geom (>= 3.2-9),
    r-cran-spatstat.random (>= 3.2-3), r-cran-spatstat.explore (>= 3.2-7), r-cran-spatstat.model
    (>= 3.2-11), r-cran-spatstat.utils (>= 3.0-4), r-cran-matrix, r-cran-spatstat.sparse
    (>= 3.0-3), libc6 (>= 2.4)
  Description: |-
    linear networks functionality of the 'spatstat' family of GNU R
     Defines types of spatial data on a linear network and provides
     functionality for geometrical operations, data analysis and modelling
     of data on a linear network, in the 'spatstat' family of packages.
     Contains definitions and support for linear networks, including
     creation of networks, geometrical measurements, topological
     connectivity, geometrical operations such as inserting and deleting
     vertices, intersecting a network with another object, and interactive
     editing of networks. Data types defined on a network include point
     patterns, pixel images, functions, and tessellations. Exploratory
     methods include kernel estimation of intensity on a network, K-
     functions and pair correlation functions on a network, simulation
     envelopes, nearest neighbour distance and empty space distance,
     relative risk estimation with cross-validated bandwidth selection.
     Formal hypothesis tests of random pattern (chi-squared, Kolmogorov-
     Smirnov, Monte Carlo, Diggle-Cressie-Loosmore-Ford, Dao-Genton, two-
     stage Monte Carlo) and tests for covariate effects (Cox-Berman-Waller-
     Lawson, Kolmogorov-Smirnov, ANOVA) are also supported. Parametric
     models can be fitted to point pattern data using the function lppm()
     similar to glm(). Only Poisson models are implemented so far. Models
     may involve dependence on covariates and dependence on marks. Models
     are fitted by maximum likelihood. Fitted point process models can be
     simulated, automatically. Formal hypothesis tests of a fitted model are
     supported (likelihood ratio test, analysis of deviance, Monte Carlo
     tests) along with basic tools for model selection (stepwise(), AIC())
     and variable selection (sdr). Tools for validating the fitted model
     include simulation envelopes, residuals, residual plots and Q-Q plots,
     leverage and influence diagnostics, partial residuals, and added
     variable plots. Random point patterns on a network can be generated
     using a variety of models.
  Homepage: https://cran.r-project.org/package=spatstat.linnet
  Installed-Size: '1610'
  Maintainer: Debian R Packages Maintainers <r-pkg-team@alioth-lists.debian.net>
  Package: r-cran-spatstat.linnet
  Priority: optional
  Recommends: r-cran-goftest, r-cran-locfit, r-cran-spatstat (>= 3.0)
  Section: gnu-r
  Version: 3.1-5-1
srcpkg_name: r-cran-spatstat.linnet
srcpkg_version: 3.1-5-1

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