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Inverted Dirichlet distribution

In statistics, the inverted Dirichlet distribution is a multivariate generalization of the beta prime distribution, and is related to the Dirichlet distribution. It was first described by Tiao and Cuttman in 1965.[1]

The distribution has a density function given by

The distribution has applications in statistical regression and arises naturally when considering the multivariate Student distribution. It can be characterized[2] by its mixed moments:

provided that and .

The inverted Dirichlet distribution is conjugate to the negative multinomial distribution if a generalized form of odds ratio is used instead of the categories' probabilities- if the negative multinomial parameter vector is given by , by changing parameters of the negative multinomial to where .

T. Bdiri et al. have developed several models that use the inverted Dirichlet distribution to represent and model non-Gaussian data. They have introduced finite [3][4] and infinite [5] mixture models of inverted Dirichlet distributions using the Newton–Raphson technique to estimate the parameters and the Dirichlet process to model infinite mixtures. T. Bdiri et al. have also used the inverted Dirichlet distribution to propose an approach to generate Support Vector Machine kernels [6] basing on Bayesian inference and another approach to establish hierarchical clustering.[7][8]

References edit

  1. ^ Tiao, George (1965). "The inverted Dirichlet distribution with applications". Journal of the American Statistical Association. 60 (311): 793–805. doi:10.1080/01621459.1965.10480828.
  2. ^ Ghorbel, M. (2010). "On the inverted Dirichlet distribution". Communications in Statistics - Theory and Methods. 39: 21–37. doi:10.1080/03610920802627062. S2CID 122956752.
  3. ^ Bdiri, Taoufik; Nizar, Bouguila (2012). "Positive vectors clustering using inverted Dirichlet finite mixture models". Expert Systems with Applications. 39 (2): 1869–1882. doi:10.1016/j.eswa.2011.08.063.
  4. ^ Bdiri, Taoufik; Bouguila, Nizar (2011). "Learning Inverted Dirichlet Mixtures for Positive Data Clustering". Rough Sets, Fuzzy Sets, Data Mining and Granular Computing. Lecture Notes in Computer Science. Vol. 6743. pp. 265–272. doi:10.1007/978-3-642-21881-1_42. ISBN 978-3-642-21880-4.
  5. ^ Bdiri, Taoufik; Bouguila, Nizar (2011). "An Infinite Mixture of Inverted Dirichlet Distributions". Neural Information Processing. Lecture Notes in Computer Science. Vol. 7063. pp. 71–78. doi:10.1007/978-3-642-24958-7_9. ISBN 978-3-642-24957-0.
  6. ^ Bdiri, Taoufik; Nizar, Bouguila (2013). "Bayesian learning of inverted Dirichlet mixtures for SVM kernels generation" (PDF). Neural Computing and Applications. 23 (5): 1443–1458. doi:10.1007/s00521-012-1094-z. S2CID 254025619.
  7. ^ Bdiri, Taoufik; Bouguila, Nizar; Ziou, Djemel (2014). "Object clustering and recognition using multi-finite mixtures for semantic classes and hierarchy modeling". Expert Systems with Applications. 41 (4): 1218–1235. doi:10.1016/j.eswa.2013.08.005.
  8. ^ Bdiri, Taoufik; Bouguila, Nizar; Ziou, Djemel (2013). "Visual Scenes Categorization Using a Flexible Hierarchical Mixture Model Supporting Users Ontology". 2013 IEEE 25th International Conference on Tools with Artificial Intelligence. pp. 262–267. doi:10.1109/ICTAI.2013.48. ISBN 978-1-4799-2972-6. S2CID 1236111.


inverted, dirichlet, distribution, statistics, inverted, dirichlet, distribution, multivariate, generalization, beta, prime, distribution, related, dirichlet, distribution, first, described, tiao, cuttman, 1965, distribution, density, function, given, x1ν1, xk. In statistics the inverted Dirichlet distribution is a multivariate generalization of the beta prime distribution and is related to the Dirichlet distribution It was first described by Tiao and Cuttman in 1965 1 The distribution has a density function given by p x1 xk G n1 nk 1 j 1k 1G nj x1n1 1 xknk 1 1 i 1kxi j 1k 1nj xi gt 0 displaystyle p left x 1 ldots x k right frac Gamma left nu 1 cdots nu k 1 right prod j 1 k 1 Gamma left nu j right x 1 nu 1 1 cdots x k nu k 1 times left 1 sum i 1 k x i right sum j 1 k 1 nu j qquad x i gt 0 The distribution has applications in statistical regression and arises naturally when considering the multivariate Student distribution It can be characterized 2 by its mixed moments E i 1kxiqi G nk 1 j 1kqj G nk 1 j 1kG nj qj G nj displaystyle E left prod i 1 k x i q i right frac Gamma left nu k 1 sum j 1 k q j right Gamma left nu k 1 right prod j 1 k frac Gamma left nu j q j right Gamma left nu j right provided that qj gt nj 1 j k displaystyle q j gt nu j 1 leqslant j leqslant k and nk 1 gt q1 qk displaystyle nu k 1 gt q 1 ldots q k The inverted Dirichlet distribution is conjugate to the negative multinomial distribution if a generalized form of odds ratio is used instead of the categories probabilities if the negative multinomial parameter vector is given by p displaystyle p by changing parameters of the negative multinomial to xi pip0 i 1 k displaystyle x i frac p i p 0 i 1 ldots k where p0 1 i 1kpi displaystyle p 0 1 sum i 1 k p i T Bdiri et al have developed several models that use the inverted Dirichlet distribution to represent and model non Gaussian data They have introduced finite 3 4 and infinite 5 mixture models of inverted Dirichlet distributions using the Newton Raphson technique to estimate the parameters and the Dirichlet process to model infinite mixtures T Bdiri et al have also used the inverted Dirichlet distribution to propose an approach to generate Support Vector Machine kernels 6 basing on Bayesian inference and another approach to establish hierarchical clustering 7 8 References edit Tiao George 1965 The inverted Dirichlet distribution with applications Journal of the American Statistical Association 60 311 793 805 doi 10 1080 01621459 1965 10480828 Ghorbel M 2010 On the inverted Dirichlet distribution Communications in Statistics Theory and Methods 39 21 37 doi 10 1080 03610920802627062 S2CID 122956752 Bdiri Taoufik Nizar Bouguila 2012 Positive vectors clustering using inverted Dirichlet finite mixture models Expert Systems with Applications 39 2 1869 1882 doi 10 1016 j eswa 2011 08 063 Bdiri Taoufik Bouguila Nizar 2011 Learning Inverted Dirichlet Mixtures for Positive Data Clustering Rough Sets Fuzzy Sets Data Mining and Granular Computing Lecture Notes in Computer Science Vol 6743 pp 265 272 doi 10 1007 978 3 642 21881 1 42 ISBN 978 3 642 21880 4 Bdiri Taoufik Bouguila Nizar 2011 An Infinite Mixture of Inverted Dirichlet Distributions Neural Information Processing Lecture Notes in Computer Science Vol 7063 pp 71 78 doi 10 1007 978 3 642 24958 7 9 ISBN 978 3 642 24957 0 Bdiri Taoufik Nizar Bouguila 2013 Bayesian learning of inverted Dirichlet mixtures for SVM kernels generation PDF Neural Computing and Applications 23 5 1443 1458 doi 10 1007 s00521 012 1094 z S2CID 254025619 Bdiri Taoufik Bouguila Nizar Ziou Djemel 2014 Object clustering and recognition using multi finite mixtures for semantic classes and hierarchy modeling Expert Systems with Applications 41 4 1218 1235 doi 10 1016 j eswa 2013 08 005 Bdiri Taoufik Bouguila Nizar Ziou Djemel 2013 Visual Scenes Categorization Using a Flexible Hierarchical Mixture Model Supporting Users Ontology 2013 IEEE 25th International Conference on Tools with Artificial Intelligence pp 262 267 doi 10 1109 ICTAI 2013 48 ISBN 978 1 4799 2972 6 S2CID 1236111 nbsp This statistics related article is a stub You can help Wikipedia by expanding it vte Retrieved from https en wikipedia org w index php title Inverted Dirichlet distribution amp oldid 1199289184, wikipedia, wiki, book, books, library,

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