AI RESEARCH
Safe Transformer: An Explicit Safety Bit For Interpretable And Controllable Alignment
arXiv CS.LG
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ArXi:2603.06727v1 Announce Type: new Current safety alignment methods encode safe behavior implicitly within model parameters, creating a fundamental opacity: we cannot easily inspect why a model refuses a request, nor intervene when its safety judgments fail. We propose Safe Transformer, a modular approach that augments pre-trained language models by inserting a discrete information bottleneck containing an explicit safety bit between transformer layers. The safety bit serves as both an interpretable signal of the model's safety classification and a controllable switch: through contrastive.