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Maximizing profit in uplift modeling through regret-optimal policy learning strategies

Maximizing profit in uplift modeling through regret-optimal policy learning strategies

von Jon Henrik Rosenkranz
Softcover - 9783346917447
27,95 €
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Beschreibung

Bachelor Thesis from the year 2023 in the subject Computer Science - Commercial Information Technology, grade: 1.0, Humboldt-University of Berlin (Wirtschaftsinformatik), language: English, abstract: The aim of this study is to provide this framework as well as benchmark business performance of both Uplift Modeling and Reinforcement Learning. Furthermore, the framework will account for the essential requirements of profit maximization in real-world business scenarios that have rarely been covered in uplift literature. Specifically, it incorporates covariates that capture the expected revenue and costs associated with a given action, which are necessary to account for the heterogeneity in spending patterns and action costs.

Profit maximization is traditionally known as one of the key objectives of a firm and requires little explanation. In a marketing context, it translates to targeting only the relevant individuals, namely those that will react favorably to receiving a form of treatment. Identifying precisely those individuals has been subject of two distinct Machine Learning approaches that are associated with optimal decision-making: Uplift Modeling and Reinforcement Learning. Despite their shared focus, both techniques are fundamentally distinct from each other. Uplift Modeling utilizes labeled data to predict the uplift of an action, whereas Reinforcement Learning is an iterative, label-free technique that aims to determine the optimal decision, incorporating the uplift. However ¿ to date ¿ research has scarcely examined the comparative effectiveness of these two approaches, nor has it explored the feasibility of an integrated framework that leverages both disciplines.

Details

Verlag GRIN Verlag
Ersterscheinung 31. Juli 2023
Maße 21 cm x 14.8 cm x 0.5 cm
Gewicht 90 Gramm
Format Softcover
ISBN-13 9783346917447
Auflage 1. Auflage
Seiten 52