Hierarchical Time Series Forecasting with Bayesian Modeling
- URL: http://arxiv.org/abs/2308.14719v1
- Date: Mon, 28 Aug 2023 17:20:47 GMT
- Title: Hierarchical Time Series Forecasting with Bayesian Modeling
- Authors: Gal Elgavish
- Abstract summary: Time series are often hierarchically structured, e.g., a company sales might be broken down into different regions, and each region into different stores.
In some cases the number of series in the hierarchy is too big to fit in a single model to produce forecasts in relevant time, and a decentralized approach is beneficial.
One way to do this is to train independent forecasting models for each series and for some summary statistics series implied by the hierarchy (e.g. the sum of all series) and to pass those models to a reconciliation algorithm to improve those forecasts by sharing information between the series.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We encounter time series data in many domains such as finance, physics,
business, and weather. One of the main tasks of time series analysis, one that
helps to take informed decisions under uncertainty, is forecasting. Time series
are often hierarchically structured, e.g., a company sales might be broken down
into different regions, and each region into different stores. In some cases
the number of series in the hierarchy is too big to fit in a single model to
produce forecasts in relevant time, and a decentralized approach is beneficial.
One way to do this is to train independent forecasting models for each series
and for some summary statistics series implied by the hierarchy (e.g. the sum
of all series) and to pass those models to a reconciliation algorithm to
improve those forecasts by sharing information between the series.
In this work we focus on the reconciliation step, and propose a method to do
so from a Bayesian perspective - Bayesian forecast reconciliation. We also
define the common case of linear Gaussian reconciliation, where the forecasts
are Gaussian and the hierarchy has linear structure, and show that we can
compute reconciliation in closed form. We evaluate these methods on synthetic
and real data sets, and compare them to other work in this field.
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