UNDERSTANDING ONLINE PURCHASES WITH EXPLAINABLE MACHINE LEARNING

Understanding Online Purchases with Explainable Machine Learning

Understanding Online Purchases with Explainable Machine Learning

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Customer profiling in e-commerce is a powerful tool that enables organizations to create personalized offers through direct marketing.One crucial objective of marigold velvet curtains customer profiling is to predict whether a website visitor will make a purchase, thereby generating revenue.Machine learning models are the most accurate means to achieve this objective.

However, the opaque nature of these models may deter companies from adopting them.Instead, they may prefer simpler models that allow for a clear understanding of the customer attributes that contribute to a purchase.In this study, we show that companies need not compromise on prediction accuracy to understand their online customers.

By leveraging website data from a multinational communications service provider, we establish that the most pertinent customer attributes can be readily extracted from a black box model.Specifically, we show that the features that measure customer activity within the e-commerce platform are the milwaukee 2981-20 most reliable predictors of conversions.Moreover, we uncover significant nonlinear relationships between customer features and the likelihood of conversion.

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