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Local Private Hypothesis Testing: Chi-Square Tests

机译:本地私人假设检验:卡方检验

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The local model for differential privacy is emerging as the reference model for practical applications of collecting and sharing sensitive information while satisfying strong privacy guarantees. In the local model, there is no trusted entity which is allowed to have each individual’s raw data as is assumed in the traditional curator model. Individuals’ data are usually perturbed before sharing them. We explore the design of private hypothesis tests in the local model, where each data entry is perturbed to ensure the privacy of each participant. Specifically, we analyze locally private chi-square tests for goodness of fit and independence testing.
机译:差分隐私的本地模型正在成为在满足强大的隐私保证的同时收集和共享敏感信息的实际应用的参考模型。在本地模型中,没有像传统策展人模型中所假定的那样允许每个实体都拥有原始数据的受信任实体。个人数据通常在共享之前会受到干扰。我们在本地模型中探索私人假设检验的设计,在该模型中,每个数据条目都会受到干扰,以确保每个参与者的隐私。具体来说,我们分析本地私人卡方检验的拟合优度和独立性检验。

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