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💬 프롬프트 라이브러리 📖 AI 용어 사전 🔗 유용한 링크

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Credible Interval

An interval within which an unknown parameter lies with a specified posterior probability, analogous to the frequentist confidence interval but with a direct probabilistic interpretation.

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Bayesian Null Hypothesis

A specific model often defined by a point value for a parameter (e.g., null effect), against which an alternative hypothesis is compared via a Bayes factor.

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Spike-and-Slab Model

A variable selection approach using a mixture prior distribution, with a point mass at zero (the spike) and a continuous distribution (the slab) for non-zero coefficients.

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Sequential Bayesian Hypothesis Test

A method where data is analyzed as it is collected, allowing for an early decision based on the evolution of the Bayes factor or the posterior probability.

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Likelihood Principle

The principle that all the information about the parameters contained in the data is provided by the likelihood function, fundamental to Bayesian inference.

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Lindley's Paradox

A phenomenon where a frequentist hypothesis test may reject the null hypothesis while a Bayesian test, based on the Bayes factor, strongly supports this same hypothesis, often due to large sample sizes.

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Jeffreys' Scale

A heuristic interpretative scale for the values of the Bayes factor, providing qualitative thresholds (weak, moderate, strong) to assess the weight of evidence in favor of a hypothesis.

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Jeffreys Prior

A non-informative prior distribution, designed to be invariant under reparameterization and proportional to the square root of the determinant of the Fisher information.

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ABC Method (Approximate Bayesian Computation)

A Bayesian inference technique used when the likelihood is intractable, approximating the likelihood by simulating data from candidate parameters and comparing them to the observed data.

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Predictive Information Loss (Predictive Information Criterion)

A Bayesian model selection criterion that evaluates a model's predictive ability by penalizing complexity through the Kullback-Leibler divergence between the predictive distribution and the true data distribution.

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Reference Prior

A prior distribution designed to have minimal impact on posterior inference, often used in hypothesis testing to ensure the Bayes factor is not unduly influenced by the choice of prior.

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