Log In Sign Up

Machine learning applications in time series hierarchical forecasting

by   Mahdi Abolghasemi, et al.

Hierarchical forecasting (HF) is needed in many situations in the supply chain (SC) because managers often need different levels of forecasts at different levels of SC to make a decision. Top-Down (TD), Bottom-Up (BU) and Optimal Combination (COM) are common HF models. These approaches are static and often ignore the dynamics of the series while disaggregating them. Consequently, they may fail to perform well if the investigated group of time series are subject to large changes such as during the periods of promotional sales. We address the HF problem of predicting real-world sales time series that are highly impacted by promotion. We use three machine learning (ML) models to capture sales variations over time. Artificial neural networks (ANN), extreme gradient boosting (XGboost), and support vector regression (SVR) algorithms are used to estimate the proportions of lower-level time series from the upper level. We perform an in-depth analysis of 61 groups of time series with different volatilities and show that ML models are competitive and outperform some well-established models in the literature.


page 1

page 2

page 3

page 4


Hierarchically Regularized Deep Forecasting

Hierarchical forecasting is a key problem in many practical multivariate...

Demand forecasting in supply chain: The impact of demand volatility in the presence of promotion

The demand for a particular product or service is typically associated w...

Time Series Regression

This paper introduces Time Series Regression (TSR): a little-studied tas...

Application of machine learning to gas flaring

Currently in the petroleum industry, operators often flare the produced ...

A Trainable Reconciliation Method for Hierarchical Time-Series

In numerous applications, it is required to produce forecasts for multip...

PSO based Neural Networks vs. Traditional Statistical Models for Seasonal Time Series Forecasting

Seasonality is a distinctive characteristic which is often observed in m...