Abstract
Bike Sharing Systems play a central role in what is identified to be one of the six pillars of a Smart City: smart mobility. Motivated by a freely available dataset, we discuss the employment of two robust model-based classifiers for pre- dicting the occurrence of situations in which a bike station is either empty or full, thus possibly creating demand loss and customer dissatisfaction. Experiments on BikeMi stations located in the central area of Milan are provided to underline the benefits of the proposed methods.
Original language | English |
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Title of host publication | Smart Statistics for Smart Applications |
Pages | 737-742 |
Number of pages | 6 |
Publication status | Published - 2019 |
Event | Smart Statistics for Smart Applications - Milano Duration: 18 Jun 2019 → 21 Jun 2019 |
Conference
Conference | Smart Statistics for Smart Applications |
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City | Milano |
Period | 18/6/19 → 21/6/19 |
Keywords
- Bike Sharing System
- Robust Classification
- Impartial Trimming
- Smart Mobility