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    },
    {
      "page": "tidy_beta",
      "title": "Tidy Randomly Generated Beta Distribution Tibble",
      "concept": [
        "Beta",
        "Continuous Distribution"
      ],
      "topics": [
        "tidy_beta"
      ]
    },
    {
      "page": "tidy_binomial",
      "title": "Tidy Randomly Generated Binomial Distribution Tibble",
      "concept": [
        "Binomial",
        "Discrete Distribution"
      ],
      "topics": [
        "tidy_binomial"
      ]
    },
    {
      "page": "tidy_bootstrap",
      "title": "Bootstrap Empirical Data",
      "concept": [
        "Bootstrap"
      ],
      "topics": [
        "tidy_bootstrap"
      ]
    },
    {
      "page": "tidy_burr",
      "title": "Tidy Randomly Generated Burr Distribution Tibble",
      "concept": [
        "Burr",
        "Continuous Distribution"
      ],
      "topics": [
        "tidy_burr"
      ]
    },
    {
      "page": "tidy_cauchy",
      "title": "Tidy Randomly Generated Cauchy Distribution Tibble",
      "concept": [
        "Cauchy",
        "Continuous Distribution"
      ],
      "topics": [
        "tidy_cauchy"
      ]
    },
    {
      "page": "tidy_chisquare",
      "title": "Tidy Randomly Generated Chisquare (Non-Central) Distribution Tibble",
      "concept": [
        "Chisquare",
        "Continuous Distribution"
      ],
      "topics": [
        "tidy_chisquare"
      ]
    },
    {
      "page": "tidy_combine_distributions",
      "title": "Combine Multiple Tidy Distributions of Different Types",
      "concept": [
        "Multiple Distribution"
      ],
      "topics": [
        "tidy_combine_distributions"
      ]
    },
    {
      "page": "tidy_combined_autoplot",
      "title": "Automatic Plot of Combined Multi Dist Data",
      "concept": [
        "Autoplot"
      ],
      "topics": [
        "tidy_combined_autoplot"
      ]
    },
    {
      "page": "tidy_distribution_comparison",
      "title": "Compare Empirical Data to Distributions",
      "concept": [
        "Empirical"
      ],
      "topics": [
        "tidy_distribution_comparison"
      ]
    },
    {
      "page": "tidy_distribution_summary_tbl",
      "title": "Tidy Distribution Summary Statistics Tibble",
      "concept": [
        "Summary Statistics",
        "Table Data"
      ],
      "topics": [
        "tidy_distribution_summary_tbl"
      ]
    },
    {
      "page": "tidy_empirical",
      "title": "Tidy Empirical",
      "topics": [
        "tidy_empirical"
      ]
    },
    {
      "page": "tidy_exponential",
      "title": "Tidy Randomly Generated Exponential Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "Exponential"
      ],
      "topics": [
        "tidy_exponential"
      ]
    },
    {
      "page": "tidy_f",
      "title": "Tidy Randomly Generated F Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "F Distribution"
      ],
      "topics": [
        "tidy_f"
      ]
    },
    {
      "page": "tidy_four_autoplot",
      "title": "Automatic Plot of Density Data",
      "concept": [
        "Autoplot"
      ],
      "topics": [
        "tidy_four_autoplot"
      ]
    },
    {
      "page": "tidy_gamma",
      "title": "Tidy Randomly Generated Gamma Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "Gamma"
      ],
      "topics": [
        "tidy_gamma"
      ]
    },
    {
      "page": "tidy_generalized_beta",
      "title": "Tidy Randomly Generated Generalized Beta Distribution Tibble",
      "concept": [
        "Beta",
        "Continuous Distribution"
      ],
      "topics": [
        "tidy_generalized_beta"
      ]
    },
    {
      "page": "tidy_generalized_pareto",
      "title": "Tidy Randomly Generated Generalized Pareto Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "Pareto"
      ],
      "topics": [
        "tidy_generalized_pareto"
      ]
    },
    {
      "page": "tidy_geometric",
      "title": "Tidy Randomly Generated Geometric Distribution Tibble",
      "concept": [
        "Discrete Distribution",
        "Geometric"
      ],
      "topics": [
        "tidy_geometric"
      ]
    },
    {
      "page": "tidy_hypergeometric",
      "title": "Tidy Randomly Generated Hypergeometric Distribution Tibble",
      "concept": [
        "Discrete Distribution",
        "Hypergeometric"
      ],
      "topics": [
        "tidy_hypergeometric"
      ]
    },
    {
      "page": "tidy_inverse_burr",
      "title": "Tidy Randomly Generated Inverse Burr Distribution Tibble",
      "concept": [
        "Burr",
        "Continuous Distribution",
        "Inverse Distribution"
      ],
      "topics": [
        "tidy_inverse_burr"
      ]
    },
    {
      "page": "tidy_inverse_exponential",
      "title": "Tidy Randomly Generated Inverse Exponential Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "Exponential",
        "Inverse Distribution"
      ],
      "topics": [
        "tidy_inverse_exponential"
      ]
    },
    {
      "page": "tidy_inverse_gamma",
      "title": "Tidy Randomly Generated Inverse Gamma Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "Gamma",
        "Inverse Distribution"
      ],
      "topics": [
        "tidy_inverse_gamma"
      ]
    },
    {
      "page": "tidy_inverse_normal",
      "title": "Tidy Randomly Generated Inverse Gaussian Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "Gaussian",
        "Inverse Distribution"
      ],
      "topics": [
        "tidy_inverse_normal"
      ]
    },
    {
      "page": "tidy_inverse_pareto",
      "title": "Tidy Randomly Generated Inverse Pareto Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "Inverse Distribution",
        "Pareto"
      ],
      "topics": [
        "tidy_inverse_pareto"
      ]
    },
    {
      "page": "tidy_inverse_weibull",
      "title": "Tidy Randomly Generated Inverse Weibull Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "Inverse Distribution",
        "Weibull"
      ],
      "topics": [
        "tidy_inverse_weibull"
      ]
    },
    {
      "page": "tidy_kurtosis_vec",
      "title": "Compute Kurtosis of a Vector",
      "concept": [
        "Statistic",
        "Vector Function"
      ],
      "topics": [
        "tidy_kurtosis_vec"
      ]
    },
    {
      "page": "tidy_logistic",
      "title": "Tidy Randomly Generated Logistic Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "Logistic"
      ],
      "topics": [
        "tidy_logistic"
      ]
    },
    {
      "page": "tidy_lognormal",
      "title": "Tidy Randomly Generated Lognormal Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "Lognormal"
      ],
      "topics": [
        "tidy_lognormal"
      ]
    },
    {
      "page": "tidy_mcmc_sampling",
      "title": "Tidy MCMC Sampling",
      "concept": [
        "Utility"
      ],
      "topics": [
        "tidy_mcmc_sampling"
      ]
    },
    {
      "page": "tidy_mixture_density",
      "title": "Tidy Mixture Data",
      "concept": [
        "Mixture Data"
      ],
      "topics": [
        "tidy_mixture_density"
      ]
    },
    {
      "page": "tidy_multi_dist_autoplot",
      "title": "Automatic Plot of Multi Dist Data",
      "concept": [
        "Autoplot"
      ],
      "topics": [
        "tidy_multi_dist_autoplot"
      ]
    },
    {
      "page": "tidy_multi_single_dist",
      "title": "Generate Multiple Tidy Distributions of a single type",
      "concept": [
        "Multiple Distribution"
      ],
      "topics": [
        "tidy_multi_single_dist"
      ]
    },
    {
      "page": "tidy_negative_binomial",
      "title": "Tidy Randomly Generated Negative Binomial Distribution Tibble",
      "concept": [
        "Binomial",
        "Discrete Distribution",
        "Negative Distribution"
      ],
      "topics": [
        "tidy_negative_binomial"
      ]
    },
    {
      "page": "tidy_normal",
      "title": "Tidy Randomly Generated Gaussian Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "Gaussian"
      ],
      "topics": [
        "tidy_normal"
      ]
    },
    {
      "page": "tidy_paralogistic",
      "title": "Tidy Randomly Generated Paralogistic Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "Logistic"
      ],
      "topics": [
        "tidy_paralogistic"
      ]
    },
    {
      "page": "tidy_pareto",
      "title": "Tidy Randomly Generated Pareto Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "Pareto"
      ],
      "topics": [
        "tidy_pareto"
      ]
    },
    {
      "page": "tidy_pareto1",
      "title": "Tidy Randomly Generated Pareto Single Parameter Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "Pareto"
      ],
      "topics": [
        "tidy_pareto1"
      ]
    },
    {
      "page": "tidy_poisson",
      "title": "Tidy Randomly Generated Poisson Distribution Tibble",
      "concept": [
        "Discrete Distribution",
        "Poisson"
      ],
      "topics": [
        "tidy_poisson"
      ]
    },
    {
      "page": "tidy_random_walk",
      "title": "Tidy Random Walk",
      "topics": [
        "tidy_random_walk"
      ]
    },
    {
      "page": "tidy_random_walk_autoplot",
      "title": "Automatic Plot of Random Walk Data",
      "concept": [
        "Autoplot"
      ],
      "topics": [
        "tidy_random_walk_autoplot"
      ]
    },
    {
      "page": "tidy_range_statistic",
      "title": "Get the range statistic",
      "concept": [
        "Statistic"
      ],
      "topics": [
        "tidy_range_statistic"
      ]
    },
    {
      "page": "tidy_scale_zero_one_vec",
      "title": "Vector Function Scale to Zero and One",
      "concept": [
        "Vector Function"
      ],
      "topics": [
        "tidy_scale_zero_one_vec"
      ]
    },
    {
      "page": "tidy_skewness_vec",
      "title": "Compute Skewness of a Vector",
      "concept": [
        "Statistic",
        "Vector Function"
      ],
      "topics": [
        "tidy_skewness_vec"
      ]
    },
    {
      "page": "tidy_stat_tbl",
      "title": "Tidy Stats of Tidy Distribution",
      "concept": [
        "Statistic"
      ],
      "topics": [
        "tidy_stat_tbl"
      ]
    },
    {
      "page": "tidy_t",
      "title": "Tidy Randomly Generated T Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "T Distribution"
      ],
      "topics": [
        "tidy_t"
      ]
    },
    {
      "page": "tidy_triangular",
      "title": "Generate Tidy Data from Triangular Distribution",
      "concept": [
        "Continuous Distribution",
        "Triangular"
      ],
      "topics": [
        "tidy_triangular"
      ]
    },
    {
      "page": "tidy_uniform",
      "title": "Tidy Randomly Generated Uniform Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "Uniform"
      ],
      "topics": [
        "tidy_uniform"
      ]
    },
    {
      "page": "tidy_weibull",
      "title": "Tidy Randomly Generated Weibull Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "Weibull"
      ],
      "topics": [
        "tidy_weibull"
      ]
    },
    {
      "page": "tidy_zero_truncated_binomial",
      "title": "Tidy Randomly Generated Binomial Distribution Tibble",
      "concept": [
        "Binomial",
        "Discrete Distribution",
        "Zero Truncated Distribution"
      ],
      "topics": [
        "tidy_zero_truncated_binomial"
      ]
    },
    {
      "page": "tidy_zero_truncated_geometric",
      "title": "Tidy Randomly Generated Zero Truncated Geometric Distribution Tibble",
      "concept": [
        "Continuous Distribution",
        "Geometric",
        "Zero Truncated Distribution"
      ],
      "topics": [
        "tidy_zero_truncated_geometric"
      ]
    },
    {
      "page": "tidy_zero_truncated_negative_binomial",
      "title": "Tidy Randomly Generated Binomial Distribution Tibble",
      "concept": [
        "Binomial",
        "Discrete Distribution",
        "Zero Truncated Negative Distribution"
      ],
      "topics": [
        "tidy_zero_truncated_negative_binomial"
      ]
    },
    {
      "page": "tidy_zero_truncated_poisson",
      "title": "Tidy Randomly Generated Zero Truncated Poisson Distribution Tibble",
      "concept": [
        "Discrete Distribution",
        "Poisson",
        "Zero Truncated Distribution"
      ],
      "topics": [
        "tidy_zero_truncated_poisson"
      ]
    },
    {
      "page": "triangle_plot",
      "title": "Triangle Distribution PDF Plot",
      "concept": [
        "Visualization"
      ],
      "topics": [
        "triangle_plot"
      ]
    },
    {
      "page": "util_bernoulli_param_estimate",
      "title": "Estimate Bernoulli Parameters",
      "concept": [
        "Bernoulli",
        "Parameter Estimation"
      ],
      "topics": [
        "util_bernoulli_param_estimate"
      ]
    },
    {
      "page": "util_bernoulli_stats_tbl",
      "title": "Distribution Statistics",
      "concept": [
        "Bernoulli",
        "Distribution Statistics"
      ],
      "topics": [
        "util_bernoulli_stats_tbl"
      ]
    },
    {
      "page": "util_beta_aic",
      "title": "Calculate Akaike Information Criterion (AIC) for Beta Distribution",
      "concept": [
        "Utility"
      ],
      "topics": [
        "util_beta_aic"
      ]
    },
    {
      "page": "util_beta_param_estimate",
      "title": "Estimate Beta Parameters",
      "concept": [
        "Beta",
        "Parameter Estimation"
      ],
      "topics": [
        "util_beta_param_estimate"
      ]
    },
    {
      "page": "util_beta_stats_tbl",
      "title": "Distribution Statistics",
      "concept": [
        "Beta",
        "Distribution Statistics"
      ],
      "topics": [
        "util_beta_stats_tbl"
      ]
    },
    {
      "page": "util_binomial_aic",
      "title": "Calculate Akaike Information Criterion (AIC) for Binomial Distribution",
      "concept": [
        "Utility"
      ],
      "topics": [
        "util_binomial_aic"
      ]
    },
    {
      "page": "util_binomial_param_estimate",
      "title": "Estimate Binomial Parameters",
      "concept": [
        "Binomial",
        "Parameter Estimation"
      ],
      "topics": [
        "util_binomial_param_estimate"
      ]
    },
    {
      "page": "util_binomial_stats_tbl",
      "title": "Distribution Statistics",
      "concept": [
        "Binomial",
        "Distribution Statistics"
      ],
      "topics": [
        "util_binomial_stats_tbl"
      ]
    },
    {
      "page": "util_burr_param_estimate",
      "title": "Estimate Burr Parameters",
      "concept": [
        "Burr",
        "Parameter Estimation"
      ],
      "topics": [
        "util_burr_param_estimate"
      ]
    },
    {
      "page": "util_burr_stats_tbl",
      "title": "Distribution Statistics",
      "concept": [
        "Burr",
        "Distribution Statistics"
      ],
      "topics": [
        "util_burr_stats_tbl"
      ]
    },
    {
      "page": "util_cauchy_aic",
      "title": "Calculate Akaike Information Criterion (AIC) for Cauchy Distribution",
      "concept": [
        "Utility"
      ],
      "topics": [
        "util_cauchy_aic"
      ]
    },
    {
      "page": "util_cauchy_param_estimate",
      "title": "Estimate Cauchy Parameters",
      "concept": [
        "Cauchy",
        "Parameter Estimation"
      ],
      "topics": [
        "util_cauchy_param_estimate"
      ]
    },
    {
      "page": "util_cauchy_stats_tbl",
      "title": "Distribution Statistics",
      "concept": [
        "Cauchy",
        "Distribution Statistics"
      ],
      "topics": [
        "util_cauchy_stats_tbl"
      ]
    },
    {
      "page": "util_chisq_aic",
      "title": "Calculate Akaike Information Criterion (AIC) for Chi-Square Distribution",
      "concept": [
        "Utility"
      ],
      "topics": [
        "util_chisq_aic"
      ]
    },
    {
      "page": "util_chisquare_param_estimate",
      "title": "Estimate Chisquare Parameters",
      "concept": [
        "Chisquare",
        "Parameter Estimation"
      ],
      "topics": [
        "util_chisquare_param_estimate"
      ]
    },
    {
      "page": "util_chisquare_stats_tbl",
      "title": "Distribution Statistics",
      "concept": [
        "Chisquare",
        "Distribution Statistics"
      ],
      "topics": [
        "util_chisquare_stats_tbl"
      ]
    },
    {
      "page": "util_exponential_aic",
      "title": "Calculate Akaike Information Criterion (AIC) for Exponential Distribution",
      "concept": [
        "Utility"
      ],
      "topics": [
        "util_exponential_aic"
      ]
    },
    {
      "page": "util_exponential_param_estimate",
      "title": "Estimate Exponential Parameters",
      "concept": [
        "Exponential",
        "Parameter Estimation"
      ],
      "topics": [
        "util_exponential_param_estimate"
      ]
    },
    {
      "page": "util_exponential_stats_tbl",
      "title": "Distribution Statistics",
      "concept": [
        "Distribution Statistics",
        "Exponential"
      ],
      "topics": [
        "util_exponential_stats_tbl"
      ]
    },
    {
      "page": "util_f_aic",
      "title": "Calculate Akaike Information Criterion (AIC) for F Distribution",
      "concept": [
        "Utility"
      ],
      "topics": [
        "util_f_aic"
      ]
    },
    {
      "page": "util_f_param_estimate",
      "title": "Estimate F Distribution Parameters",
      "concept": [
        "F Distribution",
        "Parameter Estimation"
      ],
      "topics": [
        "util_f_param_estimate"
      ]
    },
    {
      "page": "util_f_stats_tbl",
      "title": "Distribution Statistics",
      "concept": [
        "Distribution Statistics",
        "F Distribution"
      ],
      "topics": [
        "util_f_stats_tbl"
      ]
    },
    {
      "page": "util_gamma_aic",
      "title": "Calculate Akaike Information Criterion (AIC) for Gamma Distribution",
      "concept": [
        "Utility"
      ],
      "topics": [
        "util_gamma_aic"
      ]
    },
    {
      "page": "util_gamma_param_estimate",
      "title": "Estimate Gamma Parameters",
      "concept": [
        "Gamma",
        "Parameter Estimation"
      ],
      "topics": [
        "util_gamma_param_estimate"
      ]
    },
    {
      "page": "util_gamma_stats_tbl",
      "title": "Distribution Statistics",
      "concept": [
        "Distribution Statistics",
        "Gamma"
      ],
      "topics": [
        "util_gamma_stats_tbl"
      ]
    },
    {
      "page": "util_generalized_beta_aic",
      "title": "Calculate Akaike Information Criterion (AIC) for Generalized Beta Distribution",
      "concept": [
        "Utility"
      ],
      "topics": [
        "util_generalized_beta_aic"
      ]
    },
    {
      "page": "util_generalized_beta_param_estimate",
      "title": "Estimate Generalized Beta Parameters",
      "concept": [
        "Generalized Beta",
        "Parameter Estimation"
      ],
      "topics": [
        "util_generalized_beta_param_estimate"
      ]
    },
    {
      "page": "util_generalized_beta_stats_tbl",
      "title": "Distribution Statistics",
      "concept": [
        "Distribution Statistics",
        "Generalized Beta"
      ],
      "topics": [
        "util_generalized_beta_stats_tbl"
      ]
    },
    {
      "page": "util_generalized_pareto_aic",
      "title": "Calculate Akaike Information Criterion (AIC) for Generalized Pareto Distribution",
      "concept": [
        "Utility"
      ],
      "topics": [
        "util_generalized_pareto_aic"
      ]
    },
    {
      "page": "util_generalized_pareto_param_estimate",
      "title": "Estimate Generalized Pareto Parameters",
      "concept": [
        "Generalized Pareto",
        "Parameter Estimation"
      ],
      "topics": [
        "util_generalized_pareto_param_estimate"
      ]
    },
    {
      "page": "util_generalized_pareto_stats_tbl",
      "title": "Distribution Statistics",
      "concept": [
        "Distribution Statistics",
        "Generalized Pareto"
      ],
      "topics": [
        "util_generalized_pareto_stats_tbl"
      ]
    },
    {
      "page": "util_geometric_aic",
      "title": "Calculate Akaike Information Criterion (AIC) for Geometric Distribution",
      "concept": [
        "Utility"
      ],
      "topics": [
        "util_geometric_aic"
      ]
    },
    {
      "page": "util_geometric_param_estimate",
      "title": "Estimate Geometric Parameters",
      "concept": [
        "Geometric",
        "Parameter Estimation"
      ],
      "topics": [
        "util_geometric_param_estimate"
      ]
    },
    {
      "page": "util_geometric_stats_tbl",
      "title": "Distribution Statistics",
      "concept": [
        "Distribution Statistics",
        "Geometric"
      ],
      "topics": [
        "util_geometric_stats_tbl"
      ]
    },
    {
      "page": "util_hypergeometric_aic",
      "title": "Calculate Akaike Information Criterion (AIC) for Hypergeometric Distribution",
      "concept": [
        "Utility"
      ],
      "topics": [
        "util_hypergeometric_aic"
      ]
    },
    {
      "page": "util_hypergeometric_param_estimate",
      "title": "Estimate Hypergeometric Parameters",
      "concept": [
        "Hypergeometric",
        "Parameter Estimation"
      ],
      "topics": [
        "util_hypergeometric_param_estimate"
      ]
    },
    {
      "page": "util_hypergeometric_stats_tbl",
      "title": "Distribution Statistics",
      "concept": [
        "Distribution Statistics",
        "Hypergeometric"
      ],
      "topics": [
        "util_hypergeometric_stats_tbl"
      ]
    },
    {
      "page": "util_inverse_burr_aic",
      "title": "Calculate Akaike Information Criterion (AIC) for Inverse Burr Distribution",
      "concept": [
        "Utility"
      ],
      "topics": [
        "util_inverse_burr_aic"
      ]
    },
    {
      "page": "util_inverse_burr_param_estimate",
      "title": "Estimate Inverse Burr Parameters",
      "concept": [
        "Inverse Burr",
        "Parameter Estimation"
      ],
      "topics": [
        "util_inverse_burr_param_estimate"
      ]
    },
    {
      "page": "util_inverse_burr_stats_tbl",
      "title": "Distribution Statistics",
      "concept": [
        "Distribution Statistics",
        "Inverse Burr"
      ],
      "topics": [
        "util_inverse_burr_stats_tbl"
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    {
      "page": "util_inverse_pareto_aic",
      "title": "Calculate Akaike Information Criterion (AIC) for Inverse Pareto Distribution",
      "concept": [
        "Utility"
      ],
      "topics": [
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    {
      "page": "util_inverse_pareto_param_estimate",
      "title": "Estimate Inverse Pareto Parameters",
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        "Parameter Estimation"
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    {
      "page": "util_inverse_pareto_stats_tbl",
      "title": "Distribution Statistics",
      "concept": [
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        "Inverse Pareto"
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    {
      "page": "util_inverse_weibull_aic",
      "title": "Calculate Akaike Information Criterion (AIC) for Inverse Weibull Distribution",
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    {
      "page": "util_inverse_weibull_param_estimate",
      "title": "Estimate Inverse Weibull Parameters",
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        "Parameter Estimation"
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    {
      "page": "util_inverse_weibull_stats_tbl",
      "title": "Distribution Statistics",
      "concept": [
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        "Inverse Weibull"
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    {
      "page": "util_logistic_aic",
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      "page": "util_logistic_param_estimate",
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        "Logistic"
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      "page": "util_lognormal_aic",
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      "title": "Estimate Lognormal Parameters",
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      "page": "util_negative_binomial_aic",
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        "Utility"
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    {
      "page": "util_negative_binomial_param_estimate",
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        "Parameter Estimation"
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      "page": "util_negative_binomial_stats_tbl",
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      "concept": [
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        "Distribution Statistics",
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      "page": "util_normal_aic",
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        "Model Selection with AIC",
        "What is AIC?",
        "AIC Functions",
        "Visualization of Fitted Distributions",
        "Basic Visualization",
        "Customizing the Comparison Plot",
        "Multiple Distribution Overlay",
        "Advanced Techniques",
        "1. Goodness-of-Fit Tests",
        "2. QQ Plot Validation",
        "3. Residual Analysis",
        "Statistics Tables",
        "Distribution Statistics",
        "Best Practices",
        "1. Always Visualize",
        "2. Check Sample Size",
        "3. Try Multiple Distributions",
        "4. Validate Assumptions",
        "5. Consider Data Characteristics",
        "6. Document Your Process",
        "Common Issues and Solutions",
        "Issue: Parameters Don't Make Sense",
        "Issue: Large Difference Between MLE and MVUE",
        "Issue: Poor Fit Quality",
        "Available Functions",
        "Continuous Distributions",
        "Discrete Distributions",
        "Next Steps"
      ],
      "created": "2025-12-11 19:08:06",
      "modified": "2025-12-11 19:08:06",
      "commits": 1
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