Abstract
Home delivery services require the attendance of the customer during delivery. Hence, retailers and customers mutually agree on a delivery time window in the booking process. However, when a customer requests a time window, it is not clear how much accepting the ongoing request significantly reduces the availability of time windows for future customers. In this paper, we explore using historical order data to manage scarce delivery capacities efficiently. We propose a sampling-based customer acceptance approach that is fed with different combinations of these data to assess the impact of the current request on route efficiency and the ability to accept future requests. We propose a data-science process to investigate the best use of historical order data in terms of recency and amount of sampling data. We identify features that help to improve the acceptance decision as well as the retailer’s revenue. We demonstrate our approach with large amounts of real historical order data from two cities served by an online grocery in Germany.
Original language | English |
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Pages (from-to) | 295-330 |
Number of pages | 36 |
Journal | OR Spectrum |
Volume | 46 |
Early online date | 1 Apr 2023 |
DOIs | |
Publication status | Published - Jun 2024 |
Austrian Fields of Science 2012
- 502017 Logistics
Keywords
- Attended home delivery
- Data-driven customer acceptance
- Historical data
- Sampling
- Vehicle routing with time windows