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Journal ArticleDOI

Inferences from Multinomial Data: Learning About a Bag of Marbles

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TLDR
In this article, the imprecise Dirichlet model is proposed for multinomial data in cases where there is no prior information and the probabilities are expressed in terms of posterior upper and lower probabilities.
Abstract
A new method is proposed for making inferences from multinomial data in cases where there is no prior information. A paradigm is the problem of predicting the colour of the next marble to be drawn from a bag whose contents are (initially) completely unknown. In such problems we may be unable to formulate a sample space because we do not know what outcomes are possible. This suggests an invariance principle : inferences based on observations should not depend on the sample space in which the observations and future events of interest are represented. Objective Bayesian methods do not satisfy this principle. This paper describes a statistical model, called the imprecise Dirichlet model, for drawing coherent inferences from multinomial data. Inferences are expressed in terms of posterior upper and lower probabilities. The probabilities are initially vacuous, reflecting prior ignorance, but they become more precise as the number of observations increases. This model does satisfy the invariance principle. Two sets of data are analysed in detail. In the first example one red marble is observed in six drawings from a bag. Inferences from the imprecise Dirichlet model are compared with objective Bayesian and frequentist inferences. The second example is an analysis of data from medical trials which compared two treatments for cardiorespiratory failure in newborn babies. There are two problems : to draw conclusions about which treatment is more effective and to decide when the randomized trials should be terminated. This example shows how the imprecise Dirichlet model can be used to analyse data in the form of a contingency table.

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Citations
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Journal ArticleDOI

Representation theorems for partially exchangeable random variables

TL;DR: In this paper, representation theorems for both finite and countable sequences of random variables that are considered to be partially exchangeable are presented in terms of sets of desirable gambles, a very general framework for modelling uncertainty.
Journal ArticleDOI

An empirical Bayes approach to normalization and differential abundance testing for microbiome data.

TL;DR: Extensive simulations and gut microbiome data applications are conducted to demonstrate the superior performance of the empirical Bayes method over other normalization methods, and over commonly-used methods for differential abundance testing.
Journal ArticleDOI

Bruno de Finetti and imprecision: Imprecise probability does not exist!

TL;DR: Several of de Finetti's fundamental contributions are reviewed and his few, but mostly critical remarks about the prospects for a theory of imprecise probabilities are discussed, given the limited development of imp recursion theory as that was known to him.
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AdaptativeCC4.5: Credal C4.5 with a rough class noise estimator

TL;DR: A rough procedure is solved via a rough procedure to estimate the level of class noise in the training data and it is presented a direct method that has an equivalent performance than the one of the CC4.5 when it is used with the best value of its parameter for each level ofclass noise.
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A robust algorithm for explaining unreliable machine learning survival models using the Kolmogorov-Smirnov bounds.

TL;DR: The robust maximin strategy is used, which aims to minimize the average distance between cumulative hazard functions of the explained black-box model and of the approximating Cox model, and to maximize the distance over all cumulative hazards functions in the interval produced by the Kolmogorov-Smirnov bounds.
References
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Journal ArticleDOI

Bootstrap Methods: Another Look at the Jackknife

TL;DR: In this article, the authors discuss the problem of estimating the sampling distribution of a pre-specified random variable R(X, F) on the basis of the observed data x.
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TL;DR: In this paper, the authors introduce the concept of direct probabilities, approximate methods and simplifications, and significant importance tests for various complications, including one new parameter, and various complications for frequency definitions and direct methods.
Journal ArticleDOI

A Bayesian Analysis of Some Nonparametric Problems

TL;DR: In this article, a class of prior distributions, called Dirichlet process priors, is proposed for nonparametric problems, for which treatment of many non-parametric statistical problems may be carried out, yielding results that are comparable to the classical theory.
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Bayesian inference in statistical analysis

TL;DR: In this article, the effect of non-normality on inference about a population mean with generalizations was investigated. But the authors focused on the effect on the mean with information from more than one source.