With the increasing collection of users' data, protecting individual privacy has gained more interest. Differential Privacy is a strong concept of protecting individuals. Naive Bayes is one of the popular machine learning algorithm, used as a baseline for many tasks. In this work, we have provided a differentially private Naive Bayes classifier that adds noise proportional to the Smooth Sensitivity of its parameters. We have compared our result to Vaidya, Shafiq, Basu, and Hong in which they have scaled the noise to the global sensitivity of the parameters. Our experiment results on the real-world datasets show that the accuracy of our method has improved significantly while still preserving $\varepsilon$-differential privacy.
翻译:随着用户数据的收集不断增多,保护个人隐私的工作越来越受关注。不同的隐私是保护个人的强有力概念。Nive Bayes是流行的机器学习算法之一,用作许多任务的基线。在这项工作中,我们提供了一种差异化的私人Nive Bayes分类法,增加了与其参数的光滑敏感性相称的噪音。我们将我们的结果与Vaidya、Shafiq、Basu和Hong进行了比较,它们将噪音与参数的全球敏感性进行了缩放。我们对真实世界数据集的实验结果表明,我们的方法的准确性已经大大提高,同时仍然保留了美元和瓦雷普西隆的隐私。