Towards Accountability in Machine Learning Applications: A System-Testing Approach

ZEW Discussion Paper No. 22-001 // 2022
ZEW Discussion Paper No. 22-001 // 2022

Towards Accountability in Machine Learning Applications: A System-Testing Approach

A rapidly expanding universe of technology-focused startups is trying to change and improve the way real estate markets operate. The undisputed predictive power of machine learning (ML) models often plays a crucial role in the ‘disruption’ of traditional processes. However, an accountability gap prevails: How do the models arrive at their predictions? Do they do what we hope they do – or are corners cut? Training ML models is a software development process at heart. We suggest to follow a dedicated software testing framework and to verify that the ML model performs as intended. Illustratively, we augment two ML image classifiers with a system testing procedure based on local interpretable model-agnostic explanation (LIME) techniques. Analyzing the classifications sheds light on some of the factors that determine the behavior of the systems.

Towards Accountability in Machine Learning Applications: A System-Testing Approach, ZEW Discussion Paper No. 22-001, Mannheim.

Authors Wayne Xinwei Wan // Thies Lindenthal