Nonlinear Principal Component Analysis with Mixed Data Formative Indicator Models in Path Analysis

Rindu Hardianti, Solimun Solimun, Nurjannah Nurjannah, Rosita Hamdan

Abstract


This research aims to obtain the main component score of the latent variable ability to pay, determine the strongest indicators forming the ability to pay on a mixed scale based on predetermined indicators, and model the ability to pay on time as mediated by fear of paying using path analysis. The data used is secondary data obtained through distributing questionnaires with a mixed data scale. The sampling technique used in the research was purposive sampling. The number of samples used in the research was 100 customers. The method used is nonlinear principal component analysis with path analysis modeling. The results of this research show that of the five indicators formed by the Principal Component, 74.8% of diversity or information is able to be stored, while 25.20% of diversity or other information is not stored (wasted). Credit term is the strongest indicator that forms the ability to pay variable. The variable ability to pay mortgage has a significant effect on payments by mediating the fear of being late in paying with a coefficient of determination of 73.63%.

 


Keywords


Nonlinear Principal Component Analysis; Path Analysis; Mixed Data; Formative Indicator Models.

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References


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DOI: https://doi.org/10.31764/jtam.v8i1.17559

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