Abstract

The usual candidate distributions for modeling compositions, the Dirichlet and the logistic normal distribution, do not include zero components in their support. Methods have been developed and refined for dealing with zeros that are rounded, or due to a value being below a detection level. Methods have also been developed for zeros in compositions arising from count data. However, essential zeros, cases where a component is truly absent, in continuous compositions are still a problem.The most promising approach is based on extending the logistic normal distribution to model essential zeros using a mixture of additive logistic normal distributions of different dimension, related by common parameters. We continue this approach, and by imposing an additional constraint, develop a likelihood, and show ways of estimating parameters for location and dispersion. The proposed likelihood, conditional on parameters for the probability of zeros, is a mixture of additive logistic normal distributions of different dimensions whose location and dispersion parameters are projections of a common location or dispersion parameter. For some simple special cases, we contrast the relative efficiency of different location estimators.

Highlights

  • An essential zero in compositional data is a zero component which is not caused by rounding or some other difficulty in measurement, but rather, is genuinely believed to be zero

  • We develop an approach proposed by Aitchison and Kay (2003) to extend the logistic normal distribution to accommodate essential zeros

  • Our goal is to develop a model for data like these by extending the additive logistic normal distribution

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Summary

Introduction

An essential zero in compositional data is a zero component which is not caused by rounding or some other difficulty in measurement, but rather, is genuinely believed to be zero. This is fundamentally a different problem than that addressed by recent work on rounded zeros, or below-detection level zeros, such as in Palarea-Albaladejo and Martın-Fernandez (2015) and references therein. Aitchison (1986) and Aitchison and Kay (2003) note that a key feature compositional data is that ratios of the components contain all pertinent information about the composition Essential zeros complicate this feature in that

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