Forecasting Seasonal Footwear Demand Using Machine Learning

The fashion industry has been facing many challenges when it comes to forecasting demand for new products. The macroeconomic shifts in the industry have contributed to short product lifecycles and the obsolescence of the retail calendar, and consequently an increase in demand variability. This proje...

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Main Authors: Kharfan, Majd, Chan, Vicky Wing Kei
Format: Other
Language:en_US
Published: Massachusetts Institute of Technology 2018
Online Access:http://hdl.handle.net/1721.1/117612
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author Kharfan, Majd
Chan, Vicky Wing Kei
author_facet Kharfan, Majd
Chan, Vicky Wing Kei
author_sort Kharfan, Majd
collection MIT
description The fashion industry has been facing many challenges when it comes to forecasting demand for new products. The macroeconomic shifts in the industry have contributed to short product lifecycles and the obsolescence of the retail calendar, and consequently an increase in demand variability. This project tackles this problem from a demand forecasting perspective by recommending two frameworks leveraging machine learning techniques that help fashion retailers in forecasting demand for new products. The point-of-sale (POS) data of a leading U.S.-based footwear retailer was analyzed to identify significant predictor variables influencing demand for footwear products. These variables were then used to build two models, a general model and a three-step model, utilizing product, calendar and price attributes for predicting demand. Clustering and classification were used under the three-step model to identify look-alike products. Regression trees, random forests, k-nearest neighbors, linear regression and neural networks were used in building the prediction models. The results show that the two forecasting models based on machine learning techniques achieve better forecast accuracy compared to the company’s current performance. In addition, the proposed methodology offers visibility into the underlying factors that impact demand, with insights into the importance of the different predictor variables and their influence on forecast accuracy. Finally, the project results demonstrate the value of forecast customization based on product characteristics.
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spelling mit-1721.1/1176122019-04-10T08:39:33Z Forecasting Seasonal Footwear Demand Using Machine Learning Kharfan, Majd Chan, Vicky Wing Kei The fashion industry has been facing many challenges when it comes to forecasting demand for new products. The macroeconomic shifts in the industry have contributed to short product lifecycles and the obsolescence of the retail calendar, and consequently an increase in demand variability. This project tackles this problem from a demand forecasting perspective by recommending two frameworks leveraging machine learning techniques that help fashion retailers in forecasting demand for new products. The point-of-sale (POS) data of a leading U.S.-based footwear retailer was analyzed to identify significant predictor variables influencing demand for footwear products. These variables were then used to build two models, a general model and a three-step model, utilizing product, calendar and price attributes for predicting demand. Clustering and classification were used under the three-step model to identify look-alike products. Regression trees, random forests, k-nearest neighbors, linear regression and neural networks were used in building the prediction models. The results show that the two forecasting models based on machine learning techniques achieve better forecast accuracy compared to the company’s current performance. In addition, the proposed methodology offers visibility into the underlying factors that impact demand, with insights into the importance of the different predictor variables and their influence on forecast accuracy. Finally, the project results demonstrate the value of forecast customization based on product characteristics. 2018-09-04T15:42:24Z 2018-09-04T15:42:24Z 2018 Other http://hdl.handle.net/1721.1/117612 en_US application/pdf Massachusetts Institute of Technology
spellingShingle Kharfan, Majd
Chan, Vicky Wing Kei
Forecasting Seasonal Footwear Demand Using Machine Learning
title Forecasting Seasonal Footwear Demand Using Machine Learning
title_full Forecasting Seasonal Footwear Demand Using Machine Learning
title_fullStr Forecasting Seasonal Footwear Demand Using Machine Learning
title_full_unstemmed Forecasting Seasonal Footwear Demand Using Machine Learning
title_short Forecasting Seasonal Footwear Demand Using Machine Learning
title_sort forecasting seasonal footwear demand using machine learning
url http://hdl.handle.net/1721.1/117612
work_keys_str_mv AT kharfanmajd forecastingseasonalfootweardemandusingmachinelearning
AT chanvickywingkei forecastingseasonalfootweardemandusingmachinelearning