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Using Copulas in Data Mining Based on the Observational Calculus
- 1.0447829 - ÚI 2016 RIV US eng J - Článek v odborném periodiku
Holeňa, Martin - Bajer, L. - Ščavnický, M.
Using Copulas in Data Mining Based on the Observational Calculus.
IEEE Transactions on Knowledge and Data Engineering. Roč. 27, č. 10 (2015), s. 2851-2864. ISSN 1041-4347. E-ISSN 1558-2191
Grant CEP: GA ČR GA13-17187S
Grant ostatní: SLU(CZ) SGS/21/2014
Institucionální podpora: RVO:67985807
Klíčová slova: data mining * observational calculus * generalized quantifiers * joint probability distribution * copulas * hierarchical Archimedean copulas
Kód oboru RIV: IN - Informatika
Impakt faktor: 2.476, rok: 2015
The objective of the paper is a contribution to data mining within the framework of the observational calculus, through introducing generalized quantifiers related to copulas. Fitting copulas to multidimensional data is an increasingly important method for analyzing dependencies, and the proposed quantifiers of observational calculus assess the results of estimating the structure of joint distributions of continuous variables by means of hierarchical Archimedean copulas. To this end, the existing theory of hierarchical Archimedean copulas has been slightly extended in the paper: It has been proven that sufficient conditions for the function defining a hierarchical Archimedean copula to be indeed a copula, which have so far been rigorously established only for the special case of fully nested Archimedean copulas, hold in general. These conditions allow us to define three new generalized quantifiers, which are then thoroughly validated on four benchmark data sets and one data set from a real-world application. The paper concludes by comparing the proposed quantifiers to a more traditional approach—maximum weight spanning trees.
Trvalý link: http://hdl.handle.net/11104/0249603
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