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Forecasting intermittent and sparse time series: A unified probabilistic framework via deep renewal processes
Author(s) -
Ali Caner Türkmen,
Tim Januschowski,
Yuyang Wang,
Ali Taylan Cemgil
Publication year - 2021
Publication title -
plos one
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.99
H-Index - 332
ISSN - 1932-6203
DOI - 10.1371/journal.pone.0259764
Subject(s) - computer science , exponential smoothing , probabilistic logic , timestamp , time series , intermittency , demand forecasting , probabilistic forecasting , recurrent neural network , smoothing , cluster analysis , artificial neural network , artificial intelligence , machine learning , operations research , mathematics , physics , computer security , turbulence , computer vision , thermodynamics
Intermittency are a common and challenging problem in demand forecasting. We introduce a new, unified framework for building probabilistic forecasting models for intermittent demand time series, which incorporates and allows to generalize existing methods in several directions. Our framework is based on extensions of well-established model-based methods to discrete-time renewal processes, which can parsimoniously account for patterns such as aging, clustering and quasi-periodicity in demand arrivals. The connection to discrete-time renewal processes allows not only for a principled extension of Croston-type models, but additionally for a natural inclusion of neural network based models—by replacing exponential smoothing with a recurrent neural network. We also demonstrate that modeling continuous-time demand arrivals, i.e., with a temporal point process, is possible via a trivial extension of our framework. This leads to more flexible modeling in scenarios where data of individual purchase orders are directly available with granular timestamps. Complementing this theoretical advancement, we demonstrate the efficacy of our framework for forecasting practice via an extensive empirical study on standard intermittent demand data sets, in which we report predictive accuracy in a variety of scenarios.

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