Footwear quality evaluation using decision tree and logistic regression models

The quality of footwear is important for manufacturers and customers. It provides a comfort protection to human foot, especially who have problem with systemic disease. However, the low state of footwear quality could lead to dissatisfaction among customers. The objectives of the study are to determ...

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Main Author: Tan, Swee Choon
Format: Thesis
Language:en
Published: 2022
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Online Access:https://etd.uum.edu.my/10131/1/s824479_01.pdf
https://etd.uum.edu.my/10131/
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author Tan, Swee Choon
author_facet Tan, Swee Choon
author_sort Tan, Swee Choon
building UUM Library
collection Institutional Repository
content_provider Universiti Utara Malaysia
content_source UUM Electronic Theses
continent Asia
country Malaysia
description The quality of footwear is important for manufacturers and customers. It provides a comfort protection to human foot, especially who have problem with systemic disease. However, the low state of footwear quality could lead to dissatisfaction among customers. The objectives of the study are to determine the rank factors that affect the quality of footwear using decision tree methods. Then, various types of decision trees and logistic regression model are developed to gain the best classification model for predicting footwear quality performance. Besides that, logistic regression has also been used to determine the relationship between the factors and the footwear quality performance. The data related to bubble, air trap, material problem, length out of standard, improper of mould clean, colour deviation, change model or mould, machine setting and mould setting has been observed and recorded. In six-month period, there are 1528 daily data has been collected. Based on the nine factors, the most important factors are change model or mould followed by mould setting and air trap. The analysis showed that Decision Tree with Gini algorithm (three branches) in the first method prevails against the other methods with misclassification rate of 0.1307. The model can be implemented to determine the best solution to improve the quality and performance of the footwear product.
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spelling my.uum.etd-101312025-09-03T01:22:26Z https://etd.uum.edu.my/10131/ Footwear quality evaluation using decision tree and logistic regression models Tan, Swee Choon HF5415.33 Consumer Behavior. The quality of footwear is important for manufacturers and customers. It provides a comfort protection to human foot, especially who have problem with systemic disease. However, the low state of footwear quality could lead to dissatisfaction among customers. The objectives of the study are to determine the rank factors that affect the quality of footwear using decision tree methods. Then, various types of decision trees and logistic regression model are developed to gain the best classification model for predicting footwear quality performance. Besides that, logistic regression has also been used to determine the relationship between the factors and the footwear quality performance. The data related to bubble, air trap, material problem, length out of standard, improper of mould clean, colour deviation, change model or mould, machine setting and mould setting has been observed and recorded. In six-month period, there are 1528 daily data has been collected. Based on the nine factors, the most important factors are change model or mould followed by mould setting and air trap. The analysis showed that Decision Tree with Gini algorithm (three branches) in the first method prevails against the other methods with misclassification rate of 0.1307. The model can be implemented to determine the best solution to improve the quality and performance of the footwear product. 2022 Thesis NonPeerReviewed text en https://etd.uum.edu.my/10131/1/s824479_01.pdf Tan, Swee Choon (2022) Footwear quality evaluation using decision tree and logistic regression models. Masters thesis, Universiti Utara Malaysia.
spellingShingle HF5415.33 Consumer Behavior.
Tan, Swee Choon
Footwear quality evaluation using decision tree and logistic regression models
title Footwear quality evaluation using decision tree and logistic regression models
title_full Footwear quality evaluation using decision tree and logistic regression models
title_fullStr Footwear quality evaluation using decision tree and logistic regression models
title_full_unstemmed Footwear quality evaluation using decision tree and logistic regression models
title_short Footwear quality evaluation using decision tree and logistic regression models
title_sort footwear quality evaluation using decision tree and logistic regression models
topic HF5415.33 Consumer Behavior.
url https://etd.uum.edu.my/10131/1/s824479_01.pdf
https://etd.uum.edu.my/10131/
url_provider http://etd.uum.edu.my/