{"data":{"id":"cf38e212-44fa-43d7-89cd-2b9d0d3cbb62","title":"Robust Trusted Conflictive Multiview Collaborative Contrastive Learning","summary":"This paper proposes RCMCL (Robust Trusted Conflictive Multiview Collaborative Contrastive Learning), a method to improve AI models that learn from multiple sources of data (multiview learning) when those sources conflict or misalign with each other. The approach uses evidential deep neural networks (a technique that estimates uncertainty in predictions) and contrastive learning (a training method that teaches the model to recognize similar and different examples) to make the model more reliable and accurate even when the data sources provide contradictory information.","solution":"N/A -- no mitigation discussed in source.","labels":["research"],"sourceUrl":"http://ieeexplore.ieee.org/document/11391645","publishedAt":"2026-02-11T13:19:36.000Z","cveId":null,"cweIds":null,"cvssScore":null,"cvssSeverity":null,"severity":"info","attackType":[],"issueType":"research","affectedPackages":null,"affectedVendors":[],"affectedVendorsRaw":[],"classifierModel":"claude-haiku-4-5-20251001","classifierPromptVersion":"v3","cvssVector":null,"attackVector":null,"attackComplexity":null,"privilegesRequired":null,"userInteraction":null,"exploitMaturity":null,"epssScore":null,"patchAvailable":null,"disclosureDate":"2026-02-11T13:19:36.000Z","capecIds":null,"crossRefCount":0,"attackSophistication":"moderate","impactType":null,"aiComponentTargeted":"model","llmSpecific":false,"classifierConfidence":0.85,"researchCategory":"peer_reviewed","atlasIds":null}}