Retail in High Definition: Monitoring Customer Assistance Through Video Analytics

Musalem, Andres; Olivares, Marcelo; Schilkrut, Ariel

Abstract

Problem definition: We consider the development of an efficient and scalable video-analytics approach to measure customer assistance and its mediating role in the relationship between staffing levels and revenues. Academic/practical relevance: Staffing decisions account for a large portion of a retailer's operational costs. Researchers have studied the extent to which an increase in staffing levels translates into greater revenues, without emphasizing the underlying mechanisms that generate this potential improvement, such as assisting customers. Methodology: We use econometric methods, including survival-analysis techniques, to analyze data gathered from in-store video recordings of customer visits to stores of a women's apparel chain. Results: We find that, under average store conditions, a 25% increase in labor yields a 16% increase in store revenues. An increase in the assistance of customers while searching, browsing, or trying products mediates approximately 50% of this increase, while the remainder originates from other activities, such as helping customers at the checkout counter. Moreover, we find that this form of assistance has a significant and positive impact on both conversion and ticket size. Managerial implications: Our approach can be used to explain heterogeneity in employee productivity across stores, to monitor and detect unexpected deviations in customer-assistance levels, and to measure the productivity of multitasking agents for the different functions that they perform.

Más información

Título según WOS: Retail in High Definition: Monitoring Customer Assistance Through Video Analytics
Título de la Revista: M&SOM-MANUFACTURING & SERVICE OPERATIONS MANAGEMENT
Volumen: 23
Número: 5
Editorial: INFORMS
Fecha de publicación: 2021
Página de inicio: 1025
Página final: 1042
DOI:

10.1287/msom.2020.0865

Notas: ISI