LGAIJan 8

On the Definition and Detection of Cherry-Picking in Counterfactual Explanations

arXiv:2601.04977v1h-index: 14
Originality Incremental advance
AI Analysis

This addresses a critical issue in AI interpretability for users and auditors, but it is incremental as it builds on existing counterfactual explanation methods.

The paper tackles the problem of cherry-picking in counterfactual explanations, where providers can select favorable examples to manipulate narratives, and finds that detection by auditors is extremely limited in practice, with cherry-picked explanations often statistically indistinguishable from baseline ones based on standard metrics.

Counterfactual explanations are widely used to communicate how inputs must change for a model to alter its prediction. For a single instance, many valid counterfactuals can exist, which leaves open the possibility for an explanation provider to cherry-pick explanations that better suit a narrative of their choice, highlighting favourable behaviour and withholding examples that reveal problematic behaviour. We formally define cherry-picking for counterfactual explanations in terms of an admissible explanation space, specified by the generation procedure, and a utility function. We then study to what extent an external auditor can detect such manipulation. Considering three levels of access to the explanation process: full procedural access, partial procedural access, and explanation-only access, we show that detection is extremely limited in practice. Even with full procedural access, cherry-picked explanations can remain difficult to distinguish from non cherry-picked explanations, because the multiplicity of valid counterfactuals and flexibility in the explanation specification provide sufficient degrees of freedom to mask deliberate selection. Empirically, we demonstrate that this variability often exceeds the effect of cherry-picking on standard counterfactual quality metrics such as proximity, plausibility, and sparsity, making cherry-picked explanations statistically indistinguishable from baseline explanations. We argue that safeguards should therefore prioritise reproducibility, standardisation, and procedural constraints over post-hoc detection, and we provide recommendations for algorithm developers, explanation providers, and auditors.

Foundations

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