COCOA: Cost-Optimized COunterfactuAl explanation method Articles uri icon

publication date

  • June 2024

start page

  • 1

end page

  • 15

issue

  • 120616

volume

  • 670

International Standard Serial Number (ISSN)

  • 0020-0255

Electronic International Standard Serial Number (EISSN)

  • 1872-6291

abstract

  • The use of artificial intelligence for decision support and automation has shown tremendous potential in many areas. The ability to explain the decisions made by a machine learning algorithm is fundamental to facilitating the widespread use of this type of tool. There are many important real-world problems where the cost of the decisions depends on the characteristics of each example: these are called example-dependent cost (EDC) problems. For this type of classification problem, an appropriate formulation that takes into account the decision costs is fundamental both for the design of the classifier and for the explanation of its decisions. In this paper, we propose COCOA, an explanation method designed for EDC problems based on a Bayesian discriminant. The proposed method can provide counterfactual samples generated by considering decision costs. The COCOA method provides valid and plausible counterfactuals with a high success rate, which can be actionable, diverse, and sparse, achieving a remarkable improvement in terms of cost over five state-of-the-art methods on six real-world datasets.

subjects

  • Telecommunications

keywords

  • explainability; counterfactual; example-dependent; costs; classification; bayesian discriminant