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Data Privacy and System Security for Banking on Clouds using Homomorphic Encryption

机译:使用同性恋加密对云银行的数据隐私和系统安全性

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In recent times, the use of cloud computing has gained popularity all over the world in the context of performing smart computations on big data. The privacy of sensitive data of the client is of utmost important issues. Data leakage or hijackers may theft significant information about the client that ultimately may affect the reputation and prestige of its owner (bank) and client (customers). In general, to save the privacy of our banking data it is preferred to store, process, and transmit the data in the form of encrypted text. But now the main concern leads to secure computation over encrypted text or another possible way to perform computation over clouds makes data more vulnerable to hacking and attacks. Existing classical encryption techniques such as RSA, AES, and others provide secure transaction procedures for data over clouds but these are not fit for secure computation over data in the clouds. In 2009, Gentry comes with a solution for such issues and presents his idea as Homomorphic encryption (HE) that can perform computation over encrypted text without decrypting the data itself. Now a day’s privacy-enhancing techniques (PET) are there to explore more potential benefits in security issues and useful in historical cases of privacy failure. Differential privacy, Federated analysis, homomorphic encryption, zero-knowledge proof, and secure multiparty computation are a privacy-enhancing technique that may useful in financial services as these techniques provide a fully-fledged mechanism for financial institutes. With the collaboration of industries, these techniques are may enable new data-sharing agreements for a more secure solution over data. In this paper, the primary concern is to investigate the different standards and properties of homomorphic encryption in digital banking and financial institutions.
机译:最近,在对大数据上执行智能计算的背景下,在全球中使用云计算的流行度。客户敏感数据的隐私是最重要的问题。数据泄露或劫持者可能会盗窃客户端,最终可能影响其所有者(银行)和客户(客户)的声誉和声望。一般来说,为了保存我们的银行数据的隐私,它是首选以加密文本的形式存储,进程和传输数据。但现在主要关注的主要问题导致确保对加密文本的计算或对云执行计算的另一种可能的方法使得数据更容易受到黑客和攻击。现有的经典加密技术,如RSA,AES和其他技术为云提供数据提供安全的事务过程,但这些不适合在云中的数据上的安全计算。 2009年,绅士随函附上这样的问题,并将他的想法作为同性恋加密(他),可以在不解密数据本身的情况下对加密文本进行计算。现在,一天的隐私增强技术(宠物)是在安全问题中探索更多潜在的好处,并有用于隐私失败的历史案例。差分隐私,联合分析,同态加密,零知识证明和安全多派计算是一种隐私增强技术,可用于金融服务,因为这些技术为金融机构提供了完全成熟机制。通过行业的协作,这些技术可以实现新的数据共享协议,以获得更安全的解决方案。在本文中,主要关注点是探讨数字银行和金融机构中均匀加密的不同标准和性质。

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