We propose an operational measure of information leakage in a non-stochastic setting to formalize privacy against a brute-force guessing adversary. We use uncertain variables, non-probabilistic counterparts of random variables, to construct a guessing framework in which an adversary is interested in determining private information based on uncertain reports. We consider brute-force trial-and-error guessing in which an adversary can potentially check all the possibilities of the private information that are compatible with the available outputs to find the actual private realization. The ratio of the worst-case number of guesses for the adversary in the presence of the output and in the absence of it captures the reduction in the adversary's guessing complexity and is thus used as a measure of private information leakage. We investigate the relationship between the newly-developed measure of information leakage with the existing non-stochastic maximin information and stochastic maximal leakage that are shown arise in one-shot guessing.
翻译:我们提议在非随机环境中对信息泄漏进行操作性衡量,以正式确定隐私,对付猜想对手的野蛮力量。我们使用不确定变量,即随机变量的非概率对应方,来构建一个假设框架,让对手有兴趣根据不确定报告确定私人信息。我们考虑粗略的试探猜法,让对手有可能检查与现有输出相容的私人信息的所有可能性,以找到实际私下实现的情况。在输出和没有输出的情况下,对对手最坏的猜想数比率可以捕捉对手猜想复杂性的降低,从而用作衡量私人信息泄漏的一种尺度。我们调查新开发的信息泄漏量与现有非随机最大值信息之间的关系,以及一线猜想中显示的随机最大泄漏。