Please use this identifier to cite or link to this item: https://publication.npru.ac.th/jspui/handle/123456789/1919
Title: Model Prediction for the Number of Foreign Workers using Data Mining Techniques and Statistical Analysis
Other Titles: การสร้างตัวแบบพยากรณ์จานวนแรงงานข้ามชาติโดยใช้เทคนิคเหมืองข้อมูล และการวิเคราะห์ทางสถิติ
Authors: Pukaewngam, Sunanchana
Huekkunthod, Natthatida
Khanthakamon, Thanaporn
Lisawadi, Supranee
Keywords: Data Mining
Multiple Linear Regression
Decision Tree
Vector Machine and Foreign Workers
Issue Date: 14-Jul-2023
Publisher: The 15th NPRU National Academic Conference Nakhon Pathom Rajabhat University
Series/Report no.: Proceedings of the 15th NPRU National Academic Conference;432
Abstract: This research aims to study the factors that affect the entry of foreign workers in Thailand and to create an appropriate statistical model for forecasting the number of foreign workers in Thailand. With multiple linear regression, decision tree, and support vector regression methods using information from the foreign workers in Prof. 2011 – 2021 for 132 months, there are a total of 9 related factors, including the minimum wage, the unemployment rate, the gross domestic product value, the effective exchange rate, the inflation rate, the export value, the import value, the number of Thai workers authorized to work abroad and the number of foreign workers in the past unit of time. The research process is carried out in accordance with the 5 steps standard procedures for data mining (CRISP-DM). To analyze related factors, the statistical package is used, and the effectiveness of the model will be tested using the WEKA program. There are 3 criteria for measuring the performance of the prediction: Root Mean Square Error (RMSE), Mean Absolute Error (MAE) and Coefficient of Multiple Determination (R2). The results showed that factors affecting the entry of foreign workers in Thailand are the minimum wages, the inflation rate, the unemployment rates, the gross domestic product value and the number of foreign workers in the past unit of time. The performance measurement of the model found that the support vector regression methods had the lowest MAE and RMSE, 15.7566 and 7.7770, respectively, and had R2 of 0.8847, which is the 2nd largest after multiple linear regression. Therefore, support vector regression technique is the most effective and most suitable for forecasting the number of foreign workers in Thailand.
URI: https://publication.npru.ac.th/jspui/handle/123456789/1919
ISBN: 978-974-7063-43-1
Appears in Collections:Proceedings of the 15th NPRU National Academic Conference

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