# Designing effective explainable AI: a human-centered evaluation of explanation formats in financial decision-making

**Authors:** Henry Maathuis, Marcel Stalenhoef, Sieuwert van Otterloo, Raymond Zwaal, Kees van Montfort, Danielle Sent

PMC · DOI: 10.3389/frai.2026.1668029 · 2026-03-05

## TL;DR

This paper explores how different visual explanations of AI decisions are perceived by users and stakeholders in finance, revealing a trade-off between simplicity and completeness.

## Contribution

It introduces a human-centered evaluation framework for XAI in finance, highlighting stakeholder preferences and trade-offs.

## Key findings

- End-users prefer concise, contextually visual explanations like decision rules or risk plots.
- Stakeholders such as compliance officers favor more complete, technically detailed explanations.
- Visual encoding choices significantly impact the effectiveness of AI explanations for different groups.

## Abstract

As artificial intelligence (AI) systems are increasingly deployed in high-risk financial decision-making contexts, the demand for transparency and interpretability becomes critical. Explainable AI (XAI) has emerged as a key research domain addressing these needs. While most existing XAI studies emphasize objective quality measures such as correctness and completeness of explanations, they often overlook the role of end-user requirements and the broader ecosystem of stakeholders. This study presents a human-centered evaluation of different visual explanation designs in financial AI applications, assessing their effectiveness. A two-phase mixed-method evaluation was conducted, combining user studies with end-users and a stakeholder workshop, to rank visual prototypes across four explanation types: feature importance, counterfactuals, contrastive/similar examples, and rule-based explanations. A key finding is the divergence between end-users and other stakeholders—including compliance officers, XAI consultants, and developers—with end-users indicating a preference for concise, contextually visual explanations (e.g., small sets of decision rules or risk plots relative to similar cases), while other stakeholders often favor more complete, technically detailed representations. This highlights a critical trade-off between interpretability and completeness. This suggests that visual encoding choices may affect the effectiveness of AI explanations across different stakeholder groups.

## Full-text entities

- **Diseases:** XAI (MESH:C538243)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Figures

1 figure with captions in the complete paper: https://tomesphere.com/paper/PMC12999942/full.md

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Source: https://tomesphere.com/paper/PMC12999942