Online Grocery & Omnichannel Strategy: Predicting Home Delivery Adoption

The traditional way to reach customers in e-commerce is home delivery. Retailers have expanded fulfillment options to include picking up from a store, locker, 3rd-party collection point, and more. This study focuses on two channels: pick-up from the store and home delivery. Groceries present a uniq...

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Bibliographic Details
Main Authors: Alberts, Ryan Alexander, Lahad Abinader, Antoine
Language:en_US
Published: 2018
Online Access:http://hdl.handle.net/1721.1/118113
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author Alberts, Ryan Alexander
Lahad Abinader, Antoine
author_facet Alberts, Ryan Alexander
Lahad Abinader, Antoine
author_sort Alberts, Ryan Alexander
collection MIT
description The traditional way to reach customers in e-commerce is home delivery. Retailers have expanded fulfillment options to include picking up from a store, locker, 3rd-party collection point, and more. This study focuses on two channels: pick-up from the store and home delivery. Groceries present a unique category for eCommerce due to particularly onerous complications from last-mile delivery of fresh products. Existing research is lacking in comparisons of channel options in the context of online grocery that capture interactions of channel and customer attributes. This study identifies critical markets for home delivery of online grocery and provides insights into drivers of channel choice in this context. It does so by first modelling home delivery adoption – applying machine-learning algorithms to historical customer data – and then analyzing channel preferences via a Discrete Choice Experiment devised by the authors expressly for this study. The study quantifies the importance of geographic features in home delivery adoption, including density of existing online grocery customers and their distance from a store. The study also quantifies the likelihood of customer channel preference given varying channel attributes; for example, a customer is no more likely to choose pick-up from store if it is ready today vs. tomorrow.
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spelling mit-1721.1/1181132019-04-10T21:42:22Z Online Grocery & Omnichannel Strategy: Predicting Home Delivery Adoption Alberts, Ryan Alexander Lahad Abinader, Antoine The traditional way to reach customers in e-commerce is home delivery. Retailers have expanded fulfillment options to include picking up from a store, locker, 3rd-party collection point, and more. This study focuses on two channels: pick-up from the store and home delivery. Groceries present a unique category for eCommerce due to particularly onerous complications from last-mile delivery of fresh products. Existing research is lacking in comparisons of channel options in the context of online grocery that capture interactions of channel and customer attributes. This study identifies critical markets for home delivery of online grocery and provides insights into drivers of channel choice in this context. It does so by first modelling home delivery adoption – applying machine-learning algorithms to historical customer data – and then analyzing channel preferences via a Discrete Choice Experiment devised by the authors expressly for this study. The study quantifies the importance of geographic features in home delivery adoption, including density of existing online grocery customers and their distance from a store. The study also quantifies the likelihood of customer channel preference given varying channel attributes; for example, a customer is no more likely to choose pick-up from store if it is ready today vs. tomorrow. 2018-09-17T19:17:10Z 2018-09-17T19:17:10Z 2018 http://hdl.handle.net/1721.1/118113 en_US application/pdf
spellingShingle Alberts, Ryan Alexander
Lahad Abinader, Antoine
Online Grocery & Omnichannel Strategy: Predicting Home Delivery Adoption
title Online Grocery & Omnichannel Strategy: Predicting Home Delivery Adoption
title_full Online Grocery & Omnichannel Strategy: Predicting Home Delivery Adoption
title_fullStr Online Grocery & Omnichannel Strategy: Predicting Home Delivery Adoption
title_full_unstemmed Online Grocery & Omnichannel Strategy: Predicting Home Delivery Adoption
title_short Online Grocery & Omnichannel Strategy: Predicting Home Delivery Adoption
title_sort online grocery omnichannel strategy predicting home delivery adoption
url http://hdl.handle.net/1721.1/118113
work_keys_str_mv AT albertsryanalexander onlinegroceryomnichannelstrategypredictinghomedeliveryadoption
AT lahadabinaderantoine onlinegroceryomnichannelstrategypredictinghomedeliveryadoption