All Explanations are Wrong, But Many Are Useful: Exploring the Rashomon Explanation Set with Large Language Models
Explaining machine-learning models is increasingly important for decision-making and consumer trust, yet it is widely believed to come at a cost: existing Explainable AI (XAI) methods suffer from a persistent accuracy-explainability trade-off. We argue that this trade-off is not fundamental, but an artifact of treating explanation and prediction as separate objectives; when properly coupled, they become complementary, so that equipping a model to explain itself improves, rather than degrades, its accuracy. We introduce the Rashomon Explanation paradigm, which builds a set of faithful, predicti
Lineage graph
Paper → model → repo connections mined from source citations (Tier-1 exact match).
Why these links exist
Every edge carries a method, confidence, and the source snippet that justified it — so bad links are debuggable.
- PossiblePossibly related (embedding) · 50%Comparing the algorithmic fidelity of large language models in predicting human decision making: a case study of vaccination choice - Nature →
- PossiblePossibly related (embedding) · 46%Explainable machine learning to predict immunotherapy outcomes in metastatic renal cell carcinoma - Meet-URO 15-AI study - Nature →
- PossiblePossibly related (embedding) · 46%Why Microsoft, Amazon, Google and Meta are spending billions on AI: Explained | Hindustan Times - Hindustan Times →
- PossiblePossibly related (embedding) · 46%Top 7 Explainable AI Companies Driving Transparent And Responsible AI Adoption - SNS Insider →
- PossiblePossibly related (embedding) · 52%explainX/explainx →
- LinkedLinked via arxiv author · 85%Pan Li →
“All Explanations are Wrong, But Many Are Useful: Exploring the Rashomon Explanation Set with Large Language Models”
