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  "Title": "Bayesian Rasch Analysis Using 'brms'",
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    "person_parameters",
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    "plot_icc",
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    "plot_residual_pca",
    "plot_stackedbars",
    "plot_targeting",
    "plot_targeting_hpcm",
    "plot_tile",
    "posterior_epred_hurdle_acat",
    "posterior_predict_hurdle_acat",
    "posterior_to_prior",
    "q3_post",
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    "q3_statistic_hpcm",
    "RMUreliability",
    "RMUreliability_hpcm"
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      "title": "Differential Item Functioning (DIF) Analysis for Bayesian IRT Models",
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        "dif_statistic"
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    },
    {
      "page": "fit_statistic_pcm",
      "title": "Posterior Predictive Item Fit Statistic for Bayesian IRT Models",
      "topics": [
        "fit_statistic_pcm"
      ]
    },
    {
      "page": "fit_statistic_rm",
      "title": "Posterior Predictive Item Fit Statistic for Binary Bayesian IRT Models",
      "topics": [
        "fit_statistic_rm"
      ]
    },
    {
      "page": "hurdle_acat",
      "title": "Hurdle Partial Credit Model Custom brms Family",
      "topics": [
        "hurdle_acat"
      ]
    },
    {
      "page": "infit_post",
      "title": "Summarize and Plot Posterior Predictive Infit Statistics",
      "topics": [
        "infit_post"
      ]
    },
    {
      "page": "infit_statistic",
      "title": "Posterior Predictive Infit Statistic for Bayesian IRT Models",
      "topics": [
        "infit_statistic"
      ]
    },
    {
      "page": "infit_statistic_hpcm",
      "title": "Posterior Predictive Infit Statistic for the Hurdle Partial Credit Model",
      "topics": [
        "infit_statistic_hpcm"
      ]
    },
    {
      "page": "item_parameters",
      "title": "Extract Item Parameters from a Bayesian Rasch Model",
      "topics": [
        "item_parameters"
      ]
    },
    {
      "page": "item_parameters_hpcm",
      "title": "Extract Item Parameters from a Hurdle Partial Credit Model",
      "topics": [
        "item_parameters_hpcm"
      ]
    },
    {
      "page": "item_restscore_post",
      "title": "Summarize and Plot Posterior Predictive Item-Restscore Associations",
      "topics": [
        "item_restscore_post"
      ]
    },
    {
      "page": "item_restscore_statistic",
      "title": "Posterior Predictive Item-Restscore Association for Bayesian IRT Models",
      "topics": [
        "item_restscore_statistic"
      ]
    },
    {
      "page": "person_parameters",
      "title": "Extract Person Parameters from a Bayesian Rasch Model",
      "topics": [
        "person_parameters"
      ]
    },
    {
      "page": "person_parameters_hpcm",
      "title": "Extract Person Parameters from a Hurdle Partial Credit Model",
      "topics": [
        "person_parameters_hpcm"
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    },
    {
      "page": "plot_bars",
      "title": "Item Response Distribution Bar Chart",
      "topics": [
        "plot_bars"
      ]
    },
    {
      "page": "plot_icc",
      "title": "Item Characteristic Curves with Class Intervals",
      "topics": [
        "plot_icc"
      ]
    },
    {
      "page": "plot_icc_hpcm",
      "title": "Item Characteristic Curves with Class Intervals for Hurdle PCM",
      "topics": [
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    },
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      "title": "Residual PCA Contrast Plot for Bayesian IRT Models",
      "topics": [
        "plot_residual_pca"
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    {
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      "title": "Stacked Bar Chart of Item Response Distributions",
      "topics": [
        "plot_stackedbars"
      ]
    },
    {
      "page": "plot_targeting",
      "title": "Person-Item Map (Targeting Plot) for Bayesian IRT Models",
      "topics": [
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      ]
    },
    {
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    },
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    },
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    },
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