analisis hubungan produksi padi dan indikator enso di kabupaten tabanan dengan pendekatan copula

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ID: 236951
2016
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Abstract
Dependence relationship between two or more variables is an issue that is often studied in the science of probability and statistics. Pearson correlation is often the easiest option to measure dependencies between variables. It is well known, that Pearson correlation assumes that the variable under study must be normally distributed. However, in reality this is not the case; for example, data in fields such as climatology and meteorology, insurance, and financial. Copula is a tool that can be used to model the joint distribution because it does not require the assumption of normality of the data so that it is resilient against a wide range of data. In this study, we discussed the application of copula in modeling the structure of dependencies between two variables: the production of rice and El-Nino Southern Oscillation (ENSO) indicator per period in Tabanan Regency. The best dependency model structure is given by the Frank copula of the Archimedean copula family with estimation parameter,  ? = 2,817 and the loglikelihood value of 3,47.
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udayani2016e-jurnalanalisis Use this key to autocite in the manuscript while using SciMatic Manuscript Manager or Thesis Manager
Authors ;LUH GEDE UDAYANI;I WAYAN SUMARJAYA;MADE SUSILAWATI
Journal brain: broad research in artificial intelligence and neuroscience
Year 2016
DOI
10.24843/MTK.2016.v05.i04.p136
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