在黑盒场景下,使用模型功能窃取方法生成盗版模型已经对云端模型的安全性和知识产权保护构成严重威胁。针对扰动和软化标签(变温)等现有的模型窃取防御技术可能导致模型输出中置信度最大值的类别发生改变,进而影响原始任务中模型性能的...在黑盒场景下,使用模型功能窃取方法生成盗版模型已经对云端模型的安全性和知识产权保护构成严重威胁。针对扰动和软化标签(变温)等现有的模型窃取防御技术可能导致模型输出中置信度最大值的类别发生改变,进而影响原始任务中模型性能的问题,提出一种基于暗知识保护的模型功能窃取防御方法,称为DKP(defending against model stealing attacks based on Dark Knowledge Protection)。首先,利用待保护的云端模型对测试样本进行处理,以获得样本的初始置信度分布向量;然后,在模型输出层之后添加暗知识保护层,通过分区变温调节softmax机制对初始置信度分布向量进行扰动处理;最后,得到经过防御的置信度分布向量,从而降低模型信息泄露的风险。使用所提方法在4个公开数据集上取得了显著的防御效果,尤其在博客数据集上使盗版模型的准确率降低了17.4个百分点,相比之下对后验概率进行噪声扰动的方法仅能降低约2个百分点。实验结果表明,所提方法解决了现有扰动、软化标签等主动防御方法存在的问题,在不影响测试样本分类结果的前提下,通过扰动云端模型输出的类别概率分布特征,成功降低了盗版模型的准确率,实现了对云端模型机密性的可靠保障。展开更多
BACKGROUND Portal vein arterialization(PVA)has been used in liver transplantation(LT)to maximize oxygen delivery when arterial circulation is compromised or has been used as an alternative reperfusion technique for co...BACKGROUND Portal vein arterialization(PVA)has been used in liver transplantation(LT)to maximize oxygen delivery when arterial circulation is compromised or has been used as an alternative reperfusion technique for complex portal vein thrombosis(PVT).The effect of PVA on portal perfusion and primary graft dysfunction(PGD)has not been assessed.All patients receiving PVA and LT at the Fundacion Santa Fe de Bogota between 2011 and 2022 were analyzed.To account for the time-sensitive effects of graft perfusion,patients were classified into two groups:prereperfusion(pre-PVA),if the arterioportal anastomosis was performed before graft revascularization,and postreperfusion(post-PVA),if PVA was performed afterward.The pre-PVA rationale contemplated poor portal hemodynamics,severe vascular steal,or PVT.Post-PVA was considered if graft hypoperfusion became evident.Conservative interventions were attempted before PVA.展开更多
文摘在黑盒场景下,使用模型功能窃取方法生成盗版模型已经对云端模型的安全性和知识产权保护构成严重威胁。针对扰动和软化标签(变温)等现有的模型窃取防御技术可能导致模型输出中置信度最大值的类别发生改变,进而影响原始任务中模型性能的问题,提出一种基于暗知识保护的模型功能窃取防御方法,称为DKP(defending against model stealing attacks based on Dark Knowledge Protection)。首先,利用待保护的云端模型对测试样本进行处理,以获得样本的初始置信度分布向量;然后,在模型输出层之后添加暗知识保护层,通过分区变温调节softmax机制对初始置信度分布向量进行扰动处理;最后,得到经过防御的置信度分布向量,从而降低模型信息泄露的风险。使用所提方法在4个公开数据集上取得了显著的防御效果,尤其在博客数据集上使盗版模型的准确率降低了17.4个百分点,相比之下对后验概率进行噪声扰动的方法仅能降低约2个百分点。实验结果表明,所提方法解决了现有扰动、软化标签等主动防御方法存在的问题,在不影响测试样本分类结果的前提下,通过扰动云端模型输出的类别概率分布特征,成功降低了盗版模型的准确率,实现了对云端模型机密性的可靠保障。
文摘BACKGROUND Portal vein arterialization(PVA)has been used in liver transplantation(LT)to maximize oxygen delivery when arterial circulation is compromised or has been used as an alternative reperfusion technique for complex portal vein thrombosis(PVT).The effect of PVA on portal perfusion and primary graft dysfunction(PGD)has not been assessed.All patients receiving PVA and LT at the Fundacion Santa Fe de Bogota between 2011 and 2022 were analyzed.To account for the time-sensitive effects of graft perfusion,patients were classified into two groups:prereperfusion(pre-PVA),if the arterioportal anastomosis was performed before graft revascularization,and postreperfusion(post-PVA),if PVA was performed afterward.The pre-PVA rationale contemplated poor portal hemodynamics,severe vascular steal,or PVT.Post-PVA was considered if graft hypoperfusion became evident.Conservative interventions were attempted before PVA.