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    "introNAs",
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    "loadings.boots",
    "loadings.mvdareg",
    "loadingsplot",
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        "mvdalab"
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      "topics": [
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      "title": "Graphical Summary Information Pertaining to the Loadings",
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      "topics": [
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        "summary.mvdareg.default"
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    },
    {
      "page": "plusminus.fit",
      "title": "PlusMinus (Mas-o-Menos)",
      "topics": [
        "plusminus.fit"
      ]
    },
    {
      "page": "plusminus.loo",
      "title": "Leave-one-out routine for 'plusminus' objects",
      "topics": [
        "plusminus.loo"
      ]
    },
    {
      "page": "plusMinusDat",
      "title": "plusMinusDat data set",
      "topics": [
        "plusMinusDat"
      ]
    },
    {
      "page": "plusminusFit",
      "title": "Plus-Minus (Mas-o-Menos) Classifier",
      "topics": [
        "plusminusFit",
        "summary.plusminus",
        "summary.plusminus.default"
      ]
    },
    {
      "page": "predict.mvdareg",
      "title": "Model Predictions From a plsFit Model",
      "topics": [
        "predict.mvdareg"
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    },
    {
      "page": "print.mvdalab",
      "title": "Print Methods for mvdalab Objects",
      "topics": [
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    },
    {
      "page": "print.plusminus",
      "title": "Print Methods for plusminus Objects",
      "topics": [
        "print.plusminus"
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    },
    {
      "page": "proCrustes",
      "title": "Comparison of n-point Configurations vis Procrustes Analysis",
      "topics": [
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        "proCrustes"
      ]
    },
    {
      "page": "R2s",
      "title": "Cross-validated R2, R2 for X, and R2 for Y for PLS models",
      "topics": [
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        "R2s"
      ]
    },
    {
      "page": "ScoreContrib",
      "title": "Generates a score contribution plot",
      "topics": [
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      ]
    },
    {
      "page": "scoresplot",
      "title": "2D Graph of the scores",
      "topics": [
        "scoresplot"
      ]
    },
    {
      "page": "SeqimputeEM",
      "title": "Sequential Expectation Maximization (EM) for imputation of missing values.",
      "topics": [
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        "SeqimputeEM"
      ]
    },
    {
      "page": "smc",
      "title": "Significant Multivariate Correlation",
      "topics": [
        "print.smc",
        "smc",
        "smc.error",
        "smc.modeled"
      ]
    },
    {
      "page": "smc.acfTest",
      "title": "Test of the Residual Significant Multivariate Correlation Matrix for the presence of Autocorrelation",
      "topics": [
        "smc.acfTest"
      ]
    },
    {
      "page": "sr",
      "title": "Selectivity Ratio",
      "topics": [
        "print.sr",
        "sr",
        "sr.error",
        "sr.modeled"
      ]
    },
    {
      "page": "T2",
      "title": "Generates a Hotelling's T2 Graph",
      "topics": [
        "T2"
      ]
    },
    {
      "page": "Wang_Chen",
      "title": "Bivariate process data.",
      "topics": [
        "Wang_Chen"
      ]
    },
    {
      "page": "Wang_Chen_Sim",
      "title": "Simulated process data from a plastics manufacturer.",
      "topics": [
        "Wang_Chen_Sim"
      ]
    },
    {
      "page": "weight.boots",
      "title": "BCa Summaries for the weights of an mvdareg object",
      "topics": [
        "weight.boots"
      ]
    },
    {
      "page": "weights",
      "title": "Extract Summary Information Pertaining to the Bootstrapped weights",
      "topics": [
        "weights.mvdareg"
      ]
    },
    {
      "page": "weightsplot",
      "title": "Extract Graphical Summary Information Pertaining to the Weights",
      "topics": [
        "weightsplot"
      ]
    },
    {
      "page": "weightsplot2D",
      "title": "Extract a 2-Dimensional Graphical Summary Information Pertaining to the weights of a PLS Analysis",
      "topics": [
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      ]
    },
    {
      "page": "wrtpls.fit",
      "title": "Weight Randomization Test PLS",
      "topics": [
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      ]
    },
    {
      "page": "Xresids",
      "title": "Generates a Graph of the X-residuals",
      "topics": [
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      ]
    },
    {
      "page": "XresidualContrib",
      "title": "Generates the squared prediction error contributions and contribution plot",
      "topics": [
        "XresidualContrib"
      ]
    },
    {
      "page": "y.loadings",
      "title": "Extract Summary Information Pertaining to the y-loadings",
      "topics": [
        "y.loadings"
      ]
    },
    {
      "page": "y.loadings.boots",
      "title": "Extract Summary Information Pertaining to the y-loadings",
      "topics": [
        "y.loadings.boots"
      ]
    }
  ],
  "_readme": "https://github.com/cran/mvdalab/raw/HEAD/README.md",
  "_rundeps": [
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    "R6",
    "rbibutils",
    "RColorBrewer",
    "Rcpp",
    "RcppArmadillo",
    "RcppEigen",
    "Rdpack",
    "reformulas",
    "reshape2",
    "rlang",
    "S7",
    "scales",
    "sn",
    "SparseM",
    "stringi",
    "stringr",
    "survival",
    "tibble",
    "tidyr",
    "tidyselect",
    "timeDate",
    "urca",
    "utf8",
    "vctrs",
    "viridisLite",
    "withr",
    "zoo"
  ],
  "_score": 2.59659709562646,
  "_indexed": true,
  "_nocasepkg": "mvdalab",
  "_universes": [
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  ],
  "_binaries": [
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      "os": "linux",
      "version": "1.7",
      "date": "2026-05-26T08:15:58.000Z",
      "distro": "noble",
      "commit": "21e9983ecc4b15df922058de38bf3d7748cae2cb",
      "fileid": "64175afa8afee8e3aa0a2d0c6640c6a18ea1c1ca3ca9c7813d29b74ac87f7430",
      "status": "success",
      "check": "OK",
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      "r": "4.6.0",
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    {
      "r": "4.6.0",
      "os": "wasm",
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      "date": "2026-05-26T08:16:19.000Z",
      "commit": "21e9983ecc4b15df922058de38bf3d7748cae2cb",
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      "buildurl": "https://github.com/r-universe/cran/actions/runs/26440471464"
    }
  ]
}