Secure Exchanging of Various Data Types Used for Classification Purposes

M. Alkalai, Wisam H. Benamer
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Abstract

Frequently, in epidemiological studies, it is essential to study a disease of concern through observing the records of many patients. These records are usually the property of some local clinics, medical centers or hospitals providing services within the affected areas. The records are often gathered into datasets and each encompasses detailed information about the causative agent of the epidemic diseases in a specific zone. Therefore, trading such datasets, in a way that preserve the privacy and integrity of their contents, is essential. Since, studying these datasets gives a better understanding of the nature of the diseases and eventually compose a cure. In this paper, we compare four well-known secret-key cryptographic techniques to choose the best cipher that passes different evaluations with highest marks. The selected superior cipher would then be involved in providing secure exchanging of such datasets. The experiments on Wisconsin dataset, using java implementations of the four ciphers, show that there are contrasts between the performances of these ciphers which draw a clear picture of the most suitable cipher to use.
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用于分类目的的各种数据类型的安全交换
通常,在流行病学研究中,通过观察许多患者的记录来研究令人关注的疾病是至关重要的。这些记录通常是在受灾地区提供服务的一些当地诊所、医疗中心或医院的财产。这些记录通常被收集成数据集,每个数据集都包含有关特定地区流行病病原体的详细信息。因此,以保护其内容的隐私和完整性的方式交易这些数据集是必不可少的。因为,研究这些数据集可以更好地了解疾病的本质,并最终制定治疗方案。在本文中,我们比较了四种已知的密钥加密技术,以选择通过不同评估并获得最高分的最佳密码。然后,选定的高级密码将参与提供这些数据集的安全交换。在Wisconsin数据集上的实验,使用java实现了这四种密码,表明这些密码的性能之间存在差异,从而清晰地描绘出最适合使用的密码。
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