Author:
Ginanjar Irlandia,Sunengsih N,Sudartianto
Abstract
Abstract
If the row and column categories of a contingency table sequentially seen, as objects and variables, then they are object data with discrete variables. Often from objects obtained additional data in the form of continuous variables. Based on these discrete and continuous variables, the more accurate method is necessary to analyse the associations between these variables. Treating discrete data as continuous is wrong, so this article aims to analyse the association of data in the form of / x 2 contingency tables with additional data that is continuous. From the data in the form of / x 2 contingency table, it converted using the simplification of correspondence analysis (SoCA), so that continuous principal coordinates obtained. Furthermore, the association between continuous variables was analysed using the cosine value of the angle between the two vectors. Case studies use poverty data in Indonesia, which published by the Central Statistics Agency (BPS-Statistics Indonesia). Data in the form of contingency tables are people population lived in poverty based on province and area of residence (urban or rural). Additional variables are poverty depth index, severity index, Gini ratio, food poverty line and non-food poverty line. The results of the analysis obtained information that in urban areas tend to have high Gini ratio, food poverty lines and non-food poverty lines, for rural areas tend to have a high poverty depth and severity index.
Subject
General Physics and Astronomy
Reference14 articles.
1. Quality of life in mental health services with a focus on psychiatric rehabilitation practice;Verrusio;Ann Ist Super Sanità,2011
2. The Copula Bayesian Network with Mixed Discrete and Continuous Nodes to Forecast Railway Disruption Lengths;Zilko;6th International Conference on Railway Operations Modelling and Analysis,2015
3. Inferring functional connectivities of networks with discrete and continuous observables;Hosaka,2014
4. Inference in hybrid Bayesian networks with large discrete and continuous domains;Mori;Expert Syst. Appl.,2016