Retrieval-Augmented Generation (RAG) integrates LLMs with external sources, offering advanced capabilities for information access and decision-making. However, contradictions in retrieved evidence can result in inconsistent or untrustworthy outputs, which is especially problematic in enterprise settings where compliance, governance, and accountability are critical. Existing benchmarks for contradiction detection are limited to sentence-level analysis and do not capture the complexity of enterprise documents such as contracts, financial filings, compliance reports, or policy manuals. To address this limitation, we propose ContraGen, a contradiction-aware benchmark framework tailored to enterprise domain. The framework generates synthetic enterprise-style documents with embedded contradictions, enabling systematic evaluation of both intra-document and cross-document consistency. Automated contradiction mining is combined with human-in-the-loop validation to ensure high accuracy. Our contributions include generating realistic enterprise documents, modeling a taxonomy of contradiction types common in business processes, enabling controlled creation of self- and pairwise contradictions, developing a contradiction-aware retrieval evaluation pipeline and embedding human oversight to reflect domain-specific judgment complexity. This work establishes a foundation for more trustworthy and accountable RAG systems in enterprise information-seeking applications, where detecting and resolving contradictions is essential for reducing risk and ensuring compliance.
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