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The Kernel Matrix Diffie-Hellman Assumption

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We put forward a new family of computational assumptions, the Kernel Matrix Diffie-Hellman Assumption. Given some matrix A sampled from some distribution D, the kernel assumption says that it is hard to find "in the exponent" a nonzero vector in the kernel of A~T. This family is a natural computational analogue of the Matrix Decisional Diffie-Hellman Assumption (MDDH), proposed by Escala et al. As such it allows to extend the advantages of their algebraic framework to computational assumptions. The k-Decisional Linear Assumption is an example of a family of decisional assumptions of strictly increasing hardness when k grows. We show that for any such family of MDDH assumptions, the corresponding Kernel assumptions are also strictly increasingly weaker. This requires ruling out the existence of some black-box reductions between flexible problems (i.e., computational problems with a non unique solution).
机译:我们提出了一系列新的计算假设,内核矩阵Diffie-Hellman假设。给定一些矩阵a从某个分布d中采样,内核假设说明很难在〜t内核中的非零向量中找到“指数”。这个家庭是亚太地雷拉等人提出的矩阵决策队的矩阵毁灭性衍射地狱般的地狱假设(MDDH)的自然计算模拟。因此,它允许将其代数框架的优点扩展到计算假设。 K-抵抗线性假设是当K增长时严格增加硬度的判断假设系列的一个例子。我们表明,对于任何这样的MDDH假设,相应的内核假设也严格越来越弱。这需要判断出在灵活问题(即,具有非唯一解决方案的计算问题之间的一些黑匣子缩短的存在。

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