Enhancing forecast accuracy for lumpy demand using hybrid machine learning model

Demand forecasting is a critical aspect of supply chain management, underpinning decision-making processes that span from strategic operations planning to daily workload management. Given its importance, substantial research efforts have been devoted to developing and optimizing forecasting tools to...

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Main Author: Le, Thi Chau Giang
Other Authors: Rajesh Piplani
Format: Thesis-Master by Coursework
Language:English
Published: Nanyang Technological University 2025
Subjects:
Online Access:https://hdl.handle.net/10356/182354
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author Le, Thi Chau Giang
author2 Rajesh Piplani
author_facet Rajesh Piplani
Le, Thi Chau Giang
author_sort Le, Thi Chau Giang
collection NTU
description Demand forecasting is a critical aspect of supply chain management, underpinning decision-making processes that span from strategic operations planning to daily workload management. Given its importance, substantial research efforts have been devoted to developing and optimizing forecasting tools to enhance supply chain efficiency. However, much of this research has focused on regular demand due to its prevalence, leaving a significant gap in addressing irregular and sporadic demand patterns. These patterns, known as intermittent or lumpy demand, are characterized by frequent zero-demand intervals interspersed with unpredictable spikes, posing substantial challenges in inventory management. This is especially problematic for the retail industry, where profit margins are narrow and slow-moving, high-value, or niche products often experience lumpy demand. Traditional forecasting methods, such as Croston’s method, have been widely used for these scenarios but fall short in achieving high accuracy due to the difficulty in predicting both the timing and magnitude of demand spikes. To overcome these limitations, this research introduces a hybrid forecasting model that integrates Croston’s method with a Boosting framework — a machine learning technique that iteratively corrects residual errors to enhance predictive performance. By applying this hybrid approach to real-world retail data, the study demonstrates improved accuracy in forecasting lumpy demand, offering retailers a robust tool to better manage unpredictable demand patterns. This model not only reduces the risk of stockouts and overstocking but also addresses a critical gap in retail demand forecasting, providing a practical and effective solution for handling erratic, low-frequency demand.
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spelling ntu-10356/1823542025-02-01T16:53:55Z Enhancing forecast accuracy for lumpy demand using hybrid machine learning model Le, Thi Chau Giang Rajesh Piplani School of Mechanical and Aerospace Engineering MRPiplani@ntu.edu.sg Engineering Lumpy demand forecasting Hybrid model Machine learning XGBoost Croston's model Supply chain engineering Sporadic demand Forecast accuracy Forecasting algorithm Demand forecasting is a critical aspect of supply chain management, underpinning decision-making processes that span from strategic operations planning to daily workload management. Given its importance, substantial research efforts have been devoted to developing and optimizing forecasting tools to enhance supply chain efficiency. However, much of this research has focused on regular demand due to its prevalence, leaving a significant gap in addressing irregular and sporadic demand patterns. These patterns, known as intermittent or lumpy demand, are characterized by frequent zero-demand intervals interspersed with unpredictable spikes, posing substantial challenges in inventory management. This is especially problematic for the retail industry, where profit margins are narrow and slow-moving, high-value, or niche products often experience lumpy demand. Traditional forecasting methods, such as Croston’s method, have been widely used for these scenarios but fall short in achieving high accuracy due to the difficulty in predicting both the timing and magnitude of demand spikes. To overcome these limitations, this research introduces a hybrid forecasting model that integrates Croston’s method with a Boosting framework — a machine learning technique that iteratively corrects residual errors to enhance predictive performance. By applying this hybrid approach to real-world retail data, the study demonstrates improved accuracy in forecasting lumpy demand, offering retailers a robust tool to better manage unpredictable demand patterns. This model not only reduces the risk of stockouts and overstocking but also addresses a critical gap in retail demand forecasting, providing a practical and effective solution for handling erratic, low-frequency demand. Master's degree 2025-01-27T08:23:27Z 2025-01-27T08:23:27Z 2024 Thesis-Master by Coursework Le, T. C. G. (2024). Enhancing forecast accuracy for lumpy demand using hybrid machine learning model. Master's thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/182354 https://hdl.handle.net/10356/182354 en application/pdf Nanyang Technological University
spellingShingle Engineering
Lumpy demand forecasting
Hybrid model
Machine learning
XGBoost
Croston's model
Supply chain engineering
Sporadic demand
Forecast accuracy
Forecasting algorithm
Le, Thi Chau Giang
Enhancing forecast accuracy for lumpy demand using hybrid machine learning model
title Enhancing forecast accuracy for lumpy demand using hybrid machine learning model
title_full Enhancing forecast accuracy for lumpy demand using hybrid machine learning model
title_fullStr Enhancing forecast accuracy for lumpy demand using hybrid machine learning model
title_full_unstemmed Enhancing forecast accuracy for lumpy demand using hybrid machine learning model
title_short Enhancing forecast accuracy for lumpy demand using hybrid machine learning model
title_sort enhancing forecast accuracy for lumpy demand using hybrid machine learning model
topic Engineering
Lumpy demand forecasting
Hybrid model
Machine learning
XGBoost
Croston's model
Supply chain engineering
Sporadic demand
Forecast accuracy
Forecasting algorithm
url https://hdl.handle.net/10356/182354
work_keys_str_mv AT lethichaugiang enhancingforecastaccuracyforlumpydemandusinghybridmachinelearningmodel