HYBRID METHOD SARIMAX-LSTM PERFORMANCE ANALYSIS FOR FORECASTING ON CROSS-SECTIONAL HIERARCHICAL TIME SERIES DATA (CASE STUDY: SALES)

The advancements in technology have significantly facilitated various industrial sectors in accomplishing their tasks and aiding in critical decision-making for the future of companies, including those in the Food and Beverage (F&B) industry. In upper management, sales forecasting is essentia...

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Main Author: Yasmin Sumardi, Annisa
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/86177
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:86177
spelling id-itb.:861772024-09-15T05:55:21ZHYBRID METHOD SARIMAX-LSTM PERFORMANCE ANALYSIS FOR FORECASTING ON CROSS-SECTIONAL HIERARCHICAL TIME SERIES DATA (CASE STUDY: SALES) Yasmin Sumardi, Annisa Indonesia Theses forecasting, reconciliation process, SARIMA, SARIMAX, SARIMAX- LSTM, sales forecasting. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/86177 The advancements in technology have significantly facilitated various industrial sectors in accomplishing their tasks and aiding in critical decision-making for the future of companies, including those in the Food and Beverage (F&B) industry. In upper management, sales forecasting is essential as a foundation for making important decisions. This can be achieved through forecasting techniques, with SARIMA being one of the most effective models. However, despite its current performance, SARIMA has limitations: it cannot incorporate exogenous data into its predictions and fails to account for non-linear patterns in the data. Additionally, conventional forecasting processes typically focus on a single sequence type, whereas, in reality, multiple interconnected sequences often form a hierarchical structure. To address these issues, this study proposes a hybrid method, SARIMAX- LSTM. SARIMAX is an extension of SARIMA that can include exogenous data in its predictions, while LSTM handles the non-linear patterns of the data. This hybrid method is then applied to hierarchically structured data with a reconciliation process, which aligns the forecasting results within the hierarchical data structure. The findings demonstrate the improved performance of the hybrid SARIMAX-LSTM method on hierarchically structured data after reconciliation, compared to use SARIMA and SARIMAX alone. The hybrid method achieved a performance value of 10.2% (MAPE), representing a 4.0% improvement over the SARIMA model and 3.7% improvement over the SARIMAX model, using sales data from Brand B which is engaged in F&B. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description The advancements in technology have significantly facilitated various industrial sectors in accomplishing their tasks and aiding in critical decision-making for the future of companies, including those in the Food and Beverage (F&B) industry. In upper management, sales forecasting is essential as a foundation for making important decisions. This can be achieved through forecasting techniques, with SARIMA being one of the most effective models. However, despite its current performance, SARIMA has limitations: it cannot incorporate exogenous data into its predictions and fails to account for non-linear patterns in the data. Additionally, conventional forecasting processes typically focus on a single sequence type, whereas, in reality, multiple interconnected sequences often form a hierarchical structure. To address these issues, this study proposes a hybrid method, SARIMAX- LSTM. SARIMAX is an extension of SARIMA that can include exogenous data in its predictions, while LSTM handles the non-linear patterns of the data. This hybrid method is then applied to hierarchically structured data with a reconciliation process, which aligns the forecasting results within the hierarchical data structure. The findings demonstrate the improved performance of the hybrid SARIMAX-LSTM method on hierarchically structured data after reconciliation, compared to use SARIMA and SARIMAX alone. The hybrid method achieved a performance value of 10.2% (MAPE), representing a 4.0% improvement over the SARIMA model and 3.7% improvement over the SARIMAX model, using sales data from Brand B which is engaged in F&B.
format Theses
author Yasmin Sumardi, Annisa
spellingShingle Yasmin Sumardi, Annisa
HYBRID METHOD SARIMAX-LSTM PERFORMANCE ANALYSIS FOR FORECASTING ON CROSS-SECTIONAL HIERARCHICAL TIME SERIES DATA (CASE STUDY: SALES)
author_facet Yasmin Sumardi, Annisa
author_sort Yasmin Sumardi, Annisa
title HYBRID METHOD SARIMAX-LSTM PERFORMANCE ANALYSIS FOR FORECASTING ON CROSS-SECTIONAL HIERARCHICAL TIME SERIES DATA (CASE STUDY: SALES)
title_short HYBRID METHOD SARIMAX-LSTM PERFORMANCE ANALYSIS FOR FORECASTING ON CROSS-SECTIONAL HIERARCHICAL TIME SERIES DATA (CASE STUDY: SALES)
title_full HYBRID METHOD SARIMAX-LSTM PERFORMANCE ANALYSIS FOR FORECASTING ON CROSS-SECTIONAL HIERARCHICAL TIME SERIES DATA (CASE STUDY: SALES)
title_fullStr HYBRID METHOD SARIMAX-LSTM PERFORMANCE ANALYSIS FOR FORECASTING ON CROSS-SECTIONAL HIERARCHICAL TIME SERIES DATA (CASE STUDY: SALES)
title_full_unstemmed HYBRID METHOD SARIMAX-LSTM PERFORMANCE ANALYSIS FOR FORECASTING ON CROSS-SECTIONAL HIERARCHICAL TIME SERIES DATA (CASE STUDY: SALES)
title_sort hybrid method sarimax-lstm performance analysis for forecasting on cross-sectional hierarchical time series data (case study: sales)
url https://digilib.itb.ac.id/gdl/view/86177
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