| Literature DB >> 31258220 |
Esra Suel1, Nicolò Daina1, John W Polak1.
Abstract
Despite growing prevalence of online shopping, its impacts on mobility are poorly understood. This partially results from the lack of sufficiently detailed data. In this paper we address this gap using consumer panel data, a new dataset for this context. We analyse one year long longitudinal grocery shopping purchase data from London shoppers to investigate the effects of online shopping on overall shopping activity patterns and personal trips. We characterise the temporal structure of shopping demand by means of the duration between shopping episodes using hazard-based duration models. These models have been used to study inter-shopping spells for traditional shopping in the literature, however effects of online shopping were not considered. Here, we differentiate between shopping events and shopping trips. The former refers to all types of shopping activity including both online and in-store, while the latter is restricted to physical shopping trips. Separate models were estimated for each and results suggest potential substitution effects between online and in-store in the context of grocery shopping. We find that having shopped online since the last shopping trip significantly reduces the likelihood of a physical shopping trip. We do not observe the same effect for inter-event durations. Hence, shopping online does not have a significant effect on overall shopping activity frequency, yet affects shopping trip rates. This is a key finding and suggests potential substitution between online shopping and physical trips to the store. Additional insights on which factors, including basket size and demographics, affect inter-shopping durations are also drawn.Entities:
Keywords: Consumer panel data; Hazard-based duration models; Intershopping duration; Online shopping; Travel demand modelling; Trip frequency
Year: 2017 PMID: 31258220 PMCID: PMC6560787 DOI: 10.1007/s11116-017-9838-3
Source DB: PubMed Journal: Transportation (Amst) ISSN: 0049-4488 Impact factor: 5.192
Fig. 1Histogram plots for inter-shopping-event and inter-shopping-trip durations
Descriptive statistics for the sample
| Number of households | 168 | |
| Mean age (main shopper) | 51.01 | |
| Mean household (HH) size | 2.50 | |
| Online adopters (based on the year before) | 66 (39.29%) | |
| Online shoppers (based on the year of analysis) | 73 (43.45%) | |
| Number of shopping events | 24099 | |
| Online shopping events | 1140 (4.73%) | |
Estimation results for inter-shopping-event durations
| Proportional hazard (fixed effects only) | ||||
|---|---|---|---|---|
| coef | exp(coef) | z-value |
| |
| Household size | 0.1295 | 1.138 | 3.94 | 0.0001 |
| Age (main shopper) | 0.0102 | 1.010 | 3.06 | 0.0022 |
| Basket size (previous shopping occasion) | − 0.0106 | 0.989 | − 10.87 | < 2e−16 |
| Online dummy (previous shopping occasion) | − 0.2117 | 0.809 | − 2.22 | 0.0265 |
| Online adopter dummy | 0.1878 | 1.207 | 2.21 | 0.0273 |
Computed using the profile likelihood method (Therneau 2015)
Estimation results for inter-shopping-trip durations
| Proportional hazard (fized effects only) | ||||
|---|---|---|---|---|
| coef | exp(coef) | z-value |
| |
| Household size | 0.1300 | 1.139 | 3.91 | 0.0001 |
| Age (main shopper) | 0.0099 | 1.010 | 2.95 | 0.0032 |
| Basket size (previous shopping occasion) | − 0.0108 | 0.989 | − 10.43 | < 2e−16 |
| Online dummy (previous shopping occasion) | − 0.8463 | 0.429 | − 10.22 | < 2e−16 |
| Online adopter dummy | 0.2103 | 1.234 | 2.47 | 0.0135 |
Computed using the profile likelihood method (Therneau 2015)