TY - GEN
T1 - Demand Forecasting for Textile Products Using Machine Learning Methods
AU - Medina, Héctor
AU - Peña, Mario
AU - Siguenza-Guzman, Lorena
AU - Guamán, Rodrigo
N1 - Publisher Copyright:
© 2022, Springer Nature Switzerland AG.
PY - 2022
Y1 - 2022
N2 - Due to its close relationship with various operational decisions, market demand forecasting has been considered one of the essential activities in all organizations. Unfortunately, the textile industry has been the most difficulty generating forecasts, mainly due to the volatility caused in the market by short product life cycles, special events, and competitions. From the beginning, forecasting has been using traditional statistical methods. However, the increasing use of artificial intelligence has opened a new catalog of prediction methods currently being studied for their high precision. This study explores machine learning (ML) as a tool to generate forecasts for the textile industry, applying regression-focused algorithms such as Linear Regression, Ridge, Lasso, K-nearest neighbor, Support Vector Regression (SVR), and Random Forest (RF). To this end, time series were used as inputs for the models, supported by external variables such as Google Trends and special events. The results show that ML as a prediction method has higher precision than purely statistical basic prediction models. Additionally, SVR and Ridge models obtain a lower error in metrics such as MSE (0.09787 and 0.09682), RMSE (0.31285 and 0.31117), and RSE (0.32977 and 0.32800), respectively. Meanwhile, Google Trends reduces the MSE error by 2% and 15%, RMSE 1% and 7% and, RSE 1% and 7% for SVR and Ridge models, respectively.
AB - Due to its close relationship with various operational decisions, market demand forecasting has been considered one of the essential activities in all organizations. Unfortunately, the textile industry has been the most difficulty generating forecasts, mainly due to the volatility caused in the market by short product life cycles, special events, and competitions. From the beginning, forecasting has been using traditional statistical methods. However, the increasing use of artificial intelligence has opened a new catalog of prediction methods currently being studied for their high precision. This study explores machine learning (ML) as a tool to generate forecasts for the textile industry, applying regression-focused algorithms such as Linear Regression, Ridge, Lasso, K-nearest neighbor, Support Vector Regression (SVR), and Random Forest (RF). To this end, time series were used as inputs for the models, supported by external variables such as Google Trends and special events. The results show that ML as a prediction method has higher precision than purely statistical basic prediction models. Additionally, SVR and Ridge models obtain a lower error in metrics such as MSE (0.09787 and 0.09682), RMSE (0.31285 and 0.31117), and RSE (0.32977 and 0.32800), respectively. Meanwhile, Google Trends reduces the MSE error by 2% and 15%, RMSE 1% and 7% and, RSE 1% and 7% for SVR and Ridge models, respectively.
KW - Demand forecast
KW - Google trends
KW - Machine learning
KW - Textile industry
UR - https://www.scopus.com/pages/publications/85128490312
U2 - 10.1007/978-3-031-03884-6_23
DO - 10.1007/978-3-031-03884-6_23
M3 - Contribución a la conferencia
AN - SCOPUS:85128490312
SN - 9783031038839
T3 - Communications in Computer and Information Science
SP - 301
EP - 315
BT - Applied Technologies - 3rd International Conference, ICAT 2021, Proceedings
A2 - Botto-Tobar, Miguel
A2 - Montes León, Sergio
A2 - Torres-Carrión, Pablo
A2 - Zambrano Vizuete, Marcelo
A2 - Durakovic, Benjamin
PB - Springer Science and Business Media Deutschland GmbH
T2 - 3rd International Conference on Applied Technologies, ICAT 2021
Y2 - 27 October 2021 through 29 October 2021
ER -