Enacting Alternating Least Square Algorithm to Estimate Model Fit of Sem Generalized Structured Component Analysis

Structural Equation Modeling (SEM) is a statistical modeling technique that combines three methods, namely factor analysis, path analysis and regression analysis to test a theoretical model in social science, psychology and manage-ment. Covariance-based SEM is a parametric SEM that must meet several...

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Main Authors: Steffani, Cylvia Nissa, Gunardi, Gunardi
Format: Article
Language:English
Published: Horizon Research Publishing 2022
Subjects:
Online Access:https://repository.ugm.ac.id/278907/1/Steffani_MIPA.pdf
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author Steffani, Cylvia Nissa
Gunardi, Gunardi
author_facet Steffani, Cylvia Nissa
Gunardi, Gunardi
author_sort Steffani, Cylvia Nissa
collection UGM
description Structural Equation Modeling (SEM) is a statistical modeling technique that combines three methods, namely factor analysis, path analysis and regression analysis to test a theoretical model in social science, psychology and manage-ment. Covariance-based SEM is a parametric SEM that must meet several parametric assumptions such as, multivariate nor-mally distributed data, large sample sizes and independent ob-servations, so that, variance-based SEM was developed to over-come the problem of covariance SEM, namely the Generalized Structured Component Analysis (GSCA) method. This study aims to implement the GSCA method on fac-tors data that are expected to have an effect on the level of behavioral intention towards online food delivery services and to examine the significance of the mediating variable on the structural relationship. The results of hypothesis testing with a 95% confidence level showed that the quality of convenience motivation, prior online purchase experience, and attitude towards online food delivery services had a significant effect on behavioral intentions towards online food delivery services. The fit value is above 0, 523 which indicates that the model is able to explain around 52, 3% of the variation of the data. Furthermore, the hedonic motivation variable has a significant effect on convenience motivation. Post usage usefulness and prior online purchase experience variables significantly affected the attitudes towards online food delivery services. The proposed model using GSCA achieves a much better result (good fit) compared with the previous model using Confirmatory Factor Analysis (CFA) with marginal fit.
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spelling oai:generic.eprints.org:2789072023-10-19T07:34:01Z https://repository.ugm.ac.id/278907/ Enacting Alternating Least Square Algorithm to Estimate Model Fit of Sem Generalized Structured Component Analysis Steffani, Cylvia Nissa Gunardi, Gunardi Mathematics and Applied Sciences Structural Equation Modeling (SEM) is a statistical modeling technique that combines three methods, namely factor analysis, path analysis and regression analysis to test a theoretical model in social science, psychology and manage-ment. Covariance-based SEM is a parametric SEM that must meet several parametric assumptions such as, multivariate nor-mally distributed data, large sample sizes and independent ob-servations, so that, variance-based SEM was developed to over-come the problem of covariance SEM, namely the Generalized Structured Component Analysis (GSCA) method. This study aims to implement the GSCA method on fac-tors data that are expected to have an effect on the level of behavioral intention towards online food delivery services and to examine the significance of the mediating variable on the structural relationship. The results of hypothesis testing with a 95% confidence level showed that the quality of convenience motivation, prior online purchase experience, and attitude towards online food delivery services had a significant effect on behavioral intentions towards online food delivery services. The fit value is above 0, 523 which indicates that the model is able to explain around 52, 3% of the variation of the data. Furthermore, the hedonic motivation variable has a significant effect on convenience motivation. Post usage usefulness and prior online purchase experience variables significantly affected the attitudes towards online food delivery services. The proposed model using GSCA achieves a much better result (good fit) compared with the previous model using Confirmatory Factor Analysis (CFA) with marginal fit. Horizon Research Publishing 2022-10-25 Article PeerReviewed application/pdf en https://repository.ugm.ac.id/278907/1/Steffani_MIPA.pdf Steffani, Cylvia Nissa and Gunardi, Gunardi (2022) Enacting Alternating Least Square Algorithm to Estimate Model Fit of Sem Generalized Structured Component Analysis. Horizon Research, 10 (6). pp. 1239-1246. ISSN 23322071 https://www.hrpub.org/journals/article_info.php?aid=12601 https://doi.org/10.13189/ms.2022.100610
spellingShingle Mathematics and Applied Sciences
Steffani, Cylvia Nissa
Gunardi, Gunardi
Enacting Alternating Least Square Algorithm to Estimate Model Fit of Sem Generalized Structured Component Analysis
title Enacting Alternating Least Square Algorithm to Estimate Model Fit of Sem Generalized Structured Component Analysis
title_full Enacting Alternating Least Square Algorithm to Estimate Model Fit of Sem Generalized Structured Component Analysis
title_fullStr Enacting Alternating Least Square Algorithm to Estimate Model Fit of Sem Generalized Structured Component Analysis
title_full_unstemmed Enacting Alternating Least Square Algorithm to Estimate Model Fit of Sem Generalized Structured Component Analysis
title_short Enacting Alternating Least Square Algorithm to Estimate Model Fit of Sem Generalized Structured Component Analysis
title_sort enacting alternating least square algorithm to estimate model fit of sem generalized structured component analysis
topic Mathematics and Applied Sciences
url https://repository.ugm.ac.id/278907/1/Steffani_MIPA.pdf
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