The foundations of cost-sensitive causal classification
Wouter Verbeke, Diego Olaya, Jeroen Berrevoets, Sam Verboven, Sebasti\'an Maldonado

TL;DR
This paper develops a unified evaluation framework that integrates cost-sensitive and causal classification, enabling better decision-making in operational business processes by considering both costs and causal effects.
Contribution
It introduces a comprehensive framework that unifies cost-sensitive and causal classification, including new performance measures and theoretical insights.
Findings
Conventional classification is a special case of causal classification with one action.
The framework can evaluate existing and novel performance measures.
It facilitates maximizing profitability in decision-making processes.
Abstract
Classification is a well-studied machine learning task which concerns the assignment of instances to a set of outcomes. Classification models support the optimization of managerial decision-making across a variety of operational business processes. For instance, customer churn prediction models are adopted to increase the efficiency of retention campaigns by optimizing the selection of customers that are to be targeted. Cost-sensitive and causal classification methods have independently been proposed to improve the performance of classification models. The former considers the benefits and costs of correct and incorrect classifications, such as the benefit of a retained customer, whereas the latter estimates the causal effect of an action, such as a retention campaign, on the outcome of interest. This study integrates cost-sensitive and causal classification by elaborating a unifying…
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Taxonomy
TopicsCustomer churn and segmentation · Imbalanced Data Classification Techniques · Consumer Market Behavior and Pricing
