【资源目录】:


├──1-bayesian-statistics

| ├──01_probability-and-bayes-theorem

| | ├──01_module-overview

| | ├──02_probability

| | ├──03_bayes-theorem

| | └──04_review-of-distributions

| ├──02_statistical-inference

| | ├──01_module-overview

| | ├──02_frequentist-inference

| | └──03_bayesian-inference

| ├──03_priors-and-models-for-discrete-data

| | ├──01_module-overview

| | ├──02_priors

| | ├──03_bernoulli-binomial-data

| | └──04_poisson-data

| └──04_models-for-continuous-data

| | ├──01_module-overview

| | ├──02_exponential-data

| | ├──03_normal-data

| | ├──04_alternative-priors

| | ├──05_linear-regression

| | └──06_course-conclusion

├──2-mcmc-bayesian-statistics

| ├──01_statistical-modeling-and-monte-carlo-estimation

| | ├──01_module-overview

| | ├──02_1-statistical-modeling

| | ├──03_2-bayesian-modeling

| | ├──04_3-monte-carlo-estimation

| | └──05_background-for-lesson-4

| ├──02_markov-chain-monte-carlo-mcmc

| | ├──01_module-overview

| | ├──02_4-metropolis-hastings

| | ├──03_jags

| | ├──04_5-gibbs-sampling

| | └──05_6-assessing-convergence

| ├──03_common-statistical-models

| | ├──01_module-overview

| | ├──02_7-linear-regression

| | ├──03_8-anova

| | ├──04_9-logistic-regression

| | └──05_multiple-factor-anova

| ├──04_count-data-and-hierarchical-modeling

| | ├──01_module-overview

| | ├──02_10-poisson-regression

| | ├──03_11-hierarchical-modeling

| | └──04_mixture-models

| └──05_capstone-project

| | └──01_course-conclusion

├──3-mixture-models

| ├──01_basic-concepts-on-mixture-models

| | ├──01_introduction

| | ├──02_the-r-environment-for-statistical-computing

| | ├──03_definition-of-mixture-models

| | └──04_likelihood-function-for-mixture-models

| ├──02_maximum-likelihood-estimation-for-mixture-models

| | └──01_the-em-algorithm-for-mixture-models

| ├──03_bayesian-estimation-for-mixture-models

| | └──01_markov-chain-monte-carlo-algorithms-for-mixture-models

| ├──04_applications-of-mixture-models

| | ├──01_density-estimation

| | ├──02_clustering

| | └──03_classification

| ├──05_practical-considerations

| | ├──01_computational-considerations-for-mixture-models

| | └──02_determining-the-number-of-components-in-a-mixture-model

| └──06_Resources

| | └──01_notes-on-finite-mixture-models

├──4-bayesian-statistics-time-series-analysis

| ├──01_week-1-introduction-to-time-series-and-the-ar-1-process

| | ├──01_introduction

| | ├──02_stationarity-the-acf-and-the-pacf

| | ├──03_the-ar-1-process-definition-and-properties

| | └──04_the-ar-1-maximum-likelihood-estimation-and-bayesian-inference

| ├──02_week-2-the-ar-p-process

| | ├──01_the-general-ar-p-process

| | └──02_bayesian-inference-in-the-ar-p

| ├──03_week-3-normal-dynamic-linear-models-part-i

| | ├──01_the-normal-dynamic-linear-model-definition-model-classes-and-the-superposition

| | └──02_bayesian-inference-in-the-ndlm-part-i

| └──04_week-4-normal-dynamic-linear-models-part-ii

| | ├──01_seasonal-ndlms

| | ├──02_bayesian-inference-in-the-ndlm-part-ii

| | └──03_case-studies

└──5-bayesian-statistics-capstone

| ├──01_bayesian-conjugate-analysis-for-autogressive-time-series-models

| | └──01_week-1

| ├──02_model-selection-criteria

| | └──01_week-2

| ├──03_bayesian-location-mixture-of-ar-p-model

| | └──01_week-3

| └──04_peer-reviewed-data-analysis-project

| | └──01_week-4

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