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Document type:
Zeitschriftenaufsatz
Author(s):
Haselbeck, Florian; Killinger, Jennifer; Menrad, Klaus; Hannus, Thomas; Grimm, Dominik G.
Non-TUM Co-author(s):
ja
Cooperation:
national
Title:
Machine Learning Outperforms Classical Forecasting on Horticultural Sales Predictions
Abstract:
Forecasting future demand is of high importance for many companies as it affects operational decisions. This is especially relevant for products with a short shelf life due to the potential disposal of unsold items. Horticultural products are highly influenced by this, however with limited attention in forecasting research so far. Beyond that, many forecasting competitions show a competitive performance of classical forecasting methods. For the first time, we empirically compared the performance...     »
Intellectual Contribution:
Discipline-based Research
Journal title:
Machine Learning with Applications
Year:
2022
Journal volume:
7
Year / month:
2022-01
Pages contribution:
100239
Covered by:
Scopus
Reviewed:
ja
Language:
en
Fulltext / DOI:
doi:10.1016/j.mlwa.2021.100239
Publisher:
Elsevier BV
E-ISSN:
2666-8270
Submitted:
22.10.2021
Accepted:
15.12.2021
Date of publication:
01.03.2022
Copyright statement:
CC BY
CC license:
by, http://creativecommons.org/licenses/by/4.0
Judgement review:
0
Peer reviewed:
Ja
Commissioned:
commissioned by government agency
Technology:
Ja
Interdisciplinarity:
Nein
Mission statement:
;
Ethics and Sustainability:
Nein
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