PARTIAL LEAST SQUARE PATH MODELING (PLS PM) ANALYSIS WITH RESPONSE BASED UNIT SEGMENTATION IN PARTIAL LEAST SQUARE (REBUS PLS)

Partial Least Square Path Modeling (PLS PM) is an effective analysis method, because it can be used on any type of data scale and more flexible assumption requirements. In estimation using PLS PM, the basic principle used in the data is assumed to be homogeneous in all units of the observation set....

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Main Author: Ayudhia Sasmito, Karina
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/73518
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:73518
spelling id-itb.:735182023-06-21T08:14:08ZPARTIAL LEAST SQUARE PATH MODELING (PLS PM) ANALYSIS WITH RESPONSE BASED UNIT SEGMENTATION IN PARTIAL LEAST SQUARE (REBUS PLS) Ayudhia Sasmito, Karina Indonesia Theses PLS PM, REBUS PLS, unobserved heterogeneity INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/73518 Partial Least Square Path Modeling (PLS PM) is an effective analysis method, because it can be used on any type of data scale and more flexible assumption requirements. In estimation using PLS PM, the basic principle used in the data is assumed to be homogeneous in all units of the observation set. This implies that the treatment of data ignores the existence of a group structure and all units are assumed to be well represented by a single estimation model in the entire sample called the global model. If the assumed homogeneity in the structural model does not hold in the data model, then incorrect/incomplete conclusions will be obtained. So that a solution is needed for the existence of diversity in the data or heterogeneity. To overcome this heterogeneity, using Response Based Unit Segmentation in Partial Least Square (REBUS PLS) is an iteration algorithm to overcome heterogeneity in measurement and structural equation models. This study analyzes the PLS PM model with REBUS PLS in the structural model of the effect of communication and transparency relationships on the quality of public services, a case study of the Bugis Village Office. There are three latent variables, namely communication, transparency and public service quality. In addition, the exogenous variable of communication consists of five indicators, the endogenous variable of transparency consists of four indicators and the endogenous variable of public service quality consists of five indicators. The results of applying REBUS PLS to the PLS PM model of the effect of communication and transparency on the quality of public services show that observation units can be grouped into two and three segments. If two segments are formed, the ????2 and GoF values of each local model have better values than the ????2 and GoF of the global model. If there are three segments, then one of the local models shows lower ????2and GoF values than the global model. The formation of these segments on the unit of observation indicates that there is heterogeneity in the global model. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Partial Least Square Path Modeling (PLS PM) is an effective analysis method, because it can be used on any type of data scale and more flexible assumption requirements. In estimation using PLS PM, the basic principle used in the data is assumed to be homogeneous in all units of the observation set. This implies that the treatment of data ignores the existence of a group structure and all units are assumed to be well represented by a single estimation model in the entire sample called the global model. If the assumed homogeneity in the structural model does not hold in the data model, then incorrect/incomplete conclusions will be obtained. So that a solution is needed for the existence of diversity in the data or heterogeneity. To overcome this heterogeneity, using Response Based Unit Segmentation in Partial Least Square (REBUS PLS) is an iteration algorithm to overcome heterogeneity in measurement and structural equation models. This study analyzes the PLS PM model with REBUS PLS in the structural model of the effect of communication and transparency relationships on the quality of public services, a case study of the Bugis Village Office. There are three latent variables, namely communication, transparency and public service quality. In addition, the exogenous variable of communication consists of five indicators, the endogenous variable of transparency consists of four indicators and the endogenous variable of public service quality consists of five indicators. The results of applying REBUS PLS to the PLS PM model of the effect of communication and transparency on the quality of public services show that observation units can be grouped into two and three segments. If two segments are formed, the ????2 and GoF values of each local model have better values than the ????2 and GoF of the global model. If there are three segments, then one of the local models shows lower ????2and GoF values than the global model. The formation of these segments on the unit of observation indicates that there is heterogeneity in the global model.
format Theses
author Ayudhia Sasmito, Karina
spellingShingle Ayudhia Sasmito, Karina
PARTIAL LEAST SQUARE PATH MODELING (PLS PM) ANALYSIS WITH RESPONSE BASED UNIT SEGMENTATION IN PARTIAL LEAST SQUARE (REBUS PLS)
author_facet Ayudhia Sasmito, Karina
author_sort Ayudhia Sasmito, Karina
title PARTIAL LEAST SQUARE PATH MODELING (PLS PM) ANALYSIS WITH RESPONSE BASED UNIT SEGMENTATION IN PARTIAL LEAST SQUARE (REBUS PLS)
title_short PARTIAL LEAST SQUARE PATH MODELING (PLS PM) ANALYSIS WITH RESPONSE BASED UNIT SEGMENTATION IN PARTIAL LEAST SQUARE (REBUS PLS)
title_full PARTIAL LEAST SQUARE PATH MODELING (PLS PM) ANALYSIS WITH RESPONSE BASED UNIT SEGMENTATION IN PARTIAL LEAST SQUARE (REBUS PLS)
title_fullStr PARTIAL LEAST SQUARE PATH MODELING (PLS PM) ANALYSIS WITH RESPONSE BASED UNIT SEGMENTATION IN PARTIAL LEAST SQUARE (REBUS PLS)
title_full_unstemmed PARTIAL LEAST SQUARE PATH MODELING (PLS PM) ANALYSIS WITH RESPONSE BASED UNIT SEGMENTATION IN PARTIAL LEAST SQUARE (REBUS PLS)
title_sort partial least square path modeling (pls pm) analysis with response based unit segmentation in partial least square (rebus pls)
url https://digilib.itb.ac.id/gdl/view/73518
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