{
  "_id": "6a1ee07eb401979e73410806",
  "Package": "GMDH",
  "Type": "Package",
  "Title": "Short Term Forecasting via GMDH-Type Neural Network Algorithms",
  "Version": "1.6",
  "Date": "2016-09-20",
  "Author": "Osman Dag, Ceylan Yozgatligil",
  "Maintainer": "Osman Dag <osman.dag@hacettepe.edu.tr>",
  "Description": "Group method of data handling (GMDH) - type neural network\nalgorithm is the heuristic self-organization method for\nmodelling the complex systems. In this package, GMDH-type\nneural network algorithms are applied to make short term\nforecasting for a univariate time series.",
  "License": "GPL (>= 2)",
  "NeedsCompilation": "no",
  "Packaged": {
    "Date": "2026-05-20 07:19:02 UTC",
    "User": "root"
  },
  "Repository": "https://cran.r-universe.dev",
  "Date/Publication": "2016-09-20 15:38:59 UTC",
  "RemoteUrl": "https://github.com/cran/GMDH",
  "RemoteRef": "HEAD",
  "RemoteSha": "18954e7bf5f500e7f7fa573325564bb3ac87e39a",
  "MD5sum": "d924067b8bf8e6188d16edfa9ab50587",
  "_user": "cran",
  "_type": "src",
  "_file": "GMDH_1.6.tar.gz",
  "_fileid": "54d3521b640d9b03d4bbe0ea962a2fb1e4c603c8eac6deea5282afe36c749cde",
  "_filesize": 96981,
  "_sha256": "54d3521b640d9b03d4bbe0ea962a2fb1e4c603c8eac6deea5282afe36c749cde",
  "_created": "2026-05-20T07:19:02.000Z",
  "_published": "2026-06-02T13:54:06.048Z",
  "_distro": "noble",
  "_jobs": [
    {
      "job": 79087128364,
      "time": 99,
      "config": "linux-devel-x86_64",
      "r": "4.7.0",
      "check": "OK",
      "artifact": "7103642989"
    },
    {
      "job": 79087128987,
      "time": 98,
      "config": "linux-release-x86_64",
      "r": "4.6.0",
      "check": "OK",
      "artifact": "7103642783"
    },
    {
      "job": 79087127351,
      "time": 153,
      "config": "source",
      "r": "4.6.0",
      "check": "OK",
      "artifact": "7103611123"
    },
    {
      "job": 79087127335,
      "time": 108,
      "config": "wasm-release",
      "r": "4.6.0",
      "check": "OK",
      "artifact": "7359688728"
    }
  ],
  "_buildurl": "https://github.com/r-universe/cran/actions/runs/26147502381",
  "_status": "success",
  "_host": "GitHub-Actions",
  "_upstream": "https://github.com/cran/GMDH",
  "_commit": {
    "id": "18954e7bf5f500e7f7fa573325564bb3ac87e39a",
    "author": "Osman Dag <osman.dag@hacettepe.edu.tr>",
    "committer": "cran-robot <csardi.gabor+cran@gmail.com>",
    "message": "version 1.6\n",
    "time": 1474385939
  },
  "_maintainer": {
    "name": "Osman Dag",
    "email": "osman.dag@hacettepe.edu.tr"
  },
  "_registered": true,
  "_dependencies": [
    {
      "package": "R",
      "version": ">= 3.2.5",
      "role": "Depends"
    },
    {
      "package": "MASS",
      "role": "Imports"
    },
    {
      "package": "stats",
      "role": "Imports"
    },
    {
      "package": "utils",
      "role": "Imports"
    }
  ],
  "_owner": "cran",
  "_selfowned": false,
  "_usedby": 0,
  "_updates": [],
  "_tags": [],
  "_stars": 2,
  "_userbio": {
    "uuid": 6899542,
    "type": "organization",
    "name": "cran",
    "description": "Unofficial read-only mirror of all CRAN R packages"
  },
  "_downloads": {
    "count": 319,
    "source": "https://cranlogs.r-pkg.org/downloads/total/last-month/GMDH"
  },
  "_mentions": 1,
  "_searchresults": 8,
  "_rbuild": "4.6.0",
  "_assets": [
    "extra/citation.cff",
    "extra/citation.html",
    "extra/citation.json",
    "extra/citation.txt",
    "extra/contents.json",
    "extra/GMDH.html",
    "manual.pdf"
  ],
  "_realowner": "cran",
  "_cranurl": false,
  "_releases": [
    {
      "version": "1.0",
      "date": "2014-11-25"
    },
    {
      "version": "1.1",
      "date": "2015-07-20"
    },
    {
      "version": "1.2",
      "date": "2015-12-28"
    },
    {
      "version": "1.3",
      "date": "2016-03-07"
    },
    {
      "version": "1.4",
      "date": "2016-04-22"
    },
    {
      "version": "1.5",
      "date": "2016-05-04"
    },
    {
      "version": "1.6",
      "date": "2016-09-20"
    }
  ],
  "_exports": [
    "fcast"
  ],
  "_datasets": [
    {
      "name": "cancer",
      "title": "Cancer Data",
      "object": "cancer",
      "file": "cancer.rda",
      "class": [
        "ts"
      ],
      "fields": [],
      "table": false,
      "tojson": true
    }
  ],
  "_help": [
    {
      "page": "GMDH",
      "title": "Short Term Forecasting via GMDH-Type Neural Network Algorithms",
      "topics": [
        "GMDH-package"
      ]
    },
    {
      "page": "cancer",
      "title": "Cancer Data",
      "topics": [
        "cancer"
      ]
    },
    {
      "page": "fcast",
      "title": "A Function to Make Short Term Forecasting via GMDH-Type Neural Network Algorithms",
      "topics": [
        "fcast"
      ]
    }
  ],
  "_rundeps": [
    "MASS"
  ],
  "_score": 1.3010299956639813,
  "_indexed": true,
  "_nocasepkg": "gmdh",
  "_universes": [
    "cran"
  ],
  "_binaries": [
    {
      "r": "4.7.0",
      "os": "linux",
      "version": "1.6",
      "date": "2026-05-20T07:20:47.000Z",
      "distro": "noble",
      "commit": "18954e7bf5f500e7f7fa573325564bb3ac87e39a",
      "fileid": "249613daeeae4cf54d04983ab9d3ebb527862b37431f3e644c025a027ebaa0a7",
      "status": "success",
      "check": "OK",
      "buildurl": "https://github.com/r-universe/cran/actions/runs/26147502381"
    },
    {
      "r": "4.6.0",
      "os": "linux",
      "version": "1.6",
      "date": "2026-05-20T07:20:46.000Z",
      "distro": "noble",
      "commit": "18954e7bf5f500e7f7fa573325564bb3ac87e39a",
      "fileid": "f5b962d844f9fd307156667cc56eeddcd401c7c7b15747e8e8108347ae7f314f",
      "status": "success",
      "check": "OK",
      "buildurl": "https://github.com/r-universe/cran/actions/runs/26147502381"
    },
    {
      "r": "4.6.0",
      "os": "wasm",
      "version": "1.6",
      "date": "2026-06-02T13:53:39.000Z",
      "commit": "18954e7bf5f500e7f7fa573325564bb3ac87e39a",
      "fileid": "6ecdbcaf435ad61c9fa17c1c83d78d3f796224cc5b4b7ec28aa3b99bfa3ef5d6",
      "status": "success",
      "buildurl": "https://github.com/r-universe/cran/actions/runs/26147502381"
    }
  ]
}