Volume 33, Issue 21
Research Article

Epitope profiling via mixture modeling of ranked data

Cristina Mollica

Corresponding Author

Dipartimento di Scienze Statistiche, Sapienza Università di Roma, Piazzale A. Moro 5, (00185) Roma, Italy

Correspondence to: Cristina Mollica, Dipartimento di Scienze Statistiche, Sapienza Università di Roma, Piazzale A. Moro 5, (00185) Roma, Italy.

E‐mail: cristina.mollica@uniroma1.it

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Luca Tardella

Dipartimento di Scienze Statistiche, Sapienza Università di Roma, Piazzale A. Moro 5, (00185) Roma, Italy

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First published: 05 June 2014
Citations: 8

Abstract

We propose the use of probability models for ranked data as a useful alternative to a quantitative data analysis to investigate the outcome of bioassay experiments when the preliminary choice of an appropriate normalization method for the raw numerical responses is difficult or subject to criticism. We review standard distance‐based and multistage ranking models and propose an original generalization of the Plackett–Luce model to account for the order of the ranking elicitation process. The usefulness of the novel model is illustrated with its maximum likelihood estimation for a real data set. Specifically, we address the heterogeneous nature of the experimental units via model‐based clustering and detail the necessary steps for a successful likelihood maximization through a hybrid version of the expectation–maximization algorithm. The performance of the mixture model using the new distribution as mixture components is then compared with alternative mixture models for random rankings. A discussion on the interpretation of the identified clusters and a comparison with more standard quantitative approaches are finally provided. Copyright © 2014 John Wiley & Sons, Ltd.

Number of times cited according to CrossRef: 8

  • PLMIX: an package for modelling and clustering partially ranked data , Journal of Statistical Computation and Simulation, 10.1080/00949655.2020.1711909, (1-35), (2020).
  • Bayesian analysis of ranking data with the Extended Plackett–Luce model, Statistical Methods & Applications, 10.1007/s10260-020-00519-5, (2020).
  • Modelling rankings in R: the PlackettLuce package, Computational Statistics, 10.1007/s00180-020-00959-3, (2020).
  • Model-Based Learning from Preference Data, Annual Review of Statistics and Its Application, 10.1146/annurev-statistics-031017-100213, 6, 1, (329-354), (2019).
  • Analysis of ranking data, Wiley Interdisciplinary Reviews: Computational Statistics, 10.1002/wics.1483, 11, 6, (2019).
  • Revealing Subgroup Structure in Ranked Data Using a Bayesian WAND, Journal of the American Statistical Association, 10.1080/01621459.2019.1665528, (1-14), (2019).
  • Emulation of Utility Functions Over a Set of Permutations: Sequencing Reliability Growth Tasks, Technometrics, 10.1080/00401706.2017.1377637, 60, 3, (273-285), (2018).
  • Bayesian Plackett–Luce Mixture Models for Partially Ranked Data, Psychometrika, 10.1007/s11336-016-9530-0, 82, 2, (442-458), (2016).

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