CLAICYMAOct 28, 2025

Can LLMs Write Faithfully? An Agent-Based Evaluation of LLM-generated Islamic Content

arXiv:2510.24438v11 citationsh-index: 30
Originality Incremental advance
AI Analysis

This addresses the problem of unreliable AI-generated content for Muslims seeking Islamic guidance, though it is incremental as it pilots an evaluation framework.

The study evaluated GPT-4o, Ansari AI, and Fanar on generating Islamic content, finding GPT-4o scored highest in Islamic Accuracy (3.93/5) and Citation (3.38/5), but all models fell short in reliably producing accurate content.

Large language models are increasingly used for Islamic guidance, but risk misquoting texts, misapplying jurisprudence, or producing culturally inconsistent responses. We pilot an evaluation of GPT-4o, Ansari AI, and Fanar on prompts from authentic Islamic blogs. Our dual-agent framework uses a quantitative agent for citation verification and six-dimensional scoring (e.g., Structure, Islamic Consistency, Citations) and a qualitative agent for five-dimensional side-by-side comparison (e.g., Tone, Depth, Originality). GPT-4o scored highest in Islamic Accuracy (3.93) and Citation (3.38), Ansari AI followed (3.68, 3.32), and Fanar lagged (2.76, 1.82). Despite relatively strong performance, models still fall short in reliably producing accurate Islamic content and citations -- a paramount requirement in faith-sensitive writing. GPT-4o had the highest mean quantitative score (3.90/5), while Ansari AI led qualitative pairwise wins (116/200). Fanar, though trailing, introduces innovations for Islamic and Arabic contexts. This study underscores the need for community-driven benchmarks centering Muslim perspectives, offering an early step toward more reliable AI in Islamic knowledge and other high-stakes domains such as medicine, law, and journalism.

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