Título Automatic Eligibility of Sellers in an Online Marketplace: A Case Study of Amazon Algorithm
Autores GÓMEZ LOSADA, ALVARO, Asencio-Cortes, Gualberto , Duch-Brown, Nestor
Publicación externa Si
Medio INFORMATION
Alcance Article
Naturaleza Científica
Cuartil SJR 2
Impacto SJR 0.662
Fecha de publicacion 01/02/2022
ISI 000761394500001
DOI 10.3390/info13020044
Abstract Purchase processes on Amazon Marketplace begin at the Buy Box, which represents the buy click process through which numerous sellers compete. This study aimed to estimate empirically the relevant seller characteristics that Amazon could consider featuring in the Buy Box. To that end, 22 product categories from Italy\'s Amazon web page were studied over a ten-month period, and the sellers were analyzed through their products featured in the Buy Box. Two different experiments were proposed and the results were analyzed using four classification algorithms (a neural network, random forest, support vector machine, and C5.0 decision trees) and a rule-based classification. The first experiment aimed to characterize sellers unspecifically by predicting their change at the Buy Box. The second one aimed to predict which seller would be featured in it. Both experiments revealed that the customer experience and the dynamics of the sellers\' prices were important features of the Buy Box. Additionally, we proposed a set of default features that Amazon could consider when no information about sellers was available. We also proposed the possible existence of a relationship or composition among important features that could be used for sellers to be featured in the Buy Box.
Palabras clave Amazon Marketplace; Buy Box algorithm; classification; feature importance estimation; decision support mechanisms
Miembros de la Universidad Loyola

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