Enhancement of Cloud Stationed Healthcare Information Security by Dimensionality Reduction

S. Sophia, Dr.K.K. Thanammal
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Abstract

The security of healthcare information can be secured by the use of cloud environment, and takes finite estimating power. The security of patient’s data shared over the internet can be distressed by healthcare institutions because of growing high popularity. The Eigen decomposition (ED) and Single Value Decomposition (SVD) of a matrix are relevant to maintain the security and the study of Dimension Reduction and its advantages are also applicable. To reduce the data without loss, Principal Component Analysis (PCA) is used. Fast retrieval methods are critical for many large-scale and data-driven vision applications. Recent work has explored ways to embed highdimensional features or complex distance functions into a lowdimensional space where items can be efficiently searched. However, existing methods do not apply for high-dimensional kernel based data The proposed method covers how to generalize locality-sensitive hashing and the implementation of Kernel PCA based methods for Dimensionality Reduction can be applied to Medical data provides high security and utilize the resources of the cloud to inhibit data efficiently.
通过降维增强云驻留医疗信息安全
医疗信息的安全性可以通过使用云环境来保证,并且需要有限的估计能力。由于互联网越来越受欢迎,医疗机构可能会担心通过互联网共享的患者数据的安全性。矩阵的特征分解(ED)和单值分解(SVD)与维护矩阵的安全性有关,降维及其优点的研究也同样适用。为了在不丢失数据的情况下减少数据,使用了主成分分析(PCA)。快速检索方法对于许多大规模和数据驱动的视觉应用至关重要。最近的工作探索了将高维特征或复杂距离函数嵌入到低维空间的方法,在低维空间中可以有效地搜索项目。然而,现有方法不适用于基于核的高维数据,该方法涵盖了如何推广位置敏感哈希,实现基于核主成分的降维方法可以应用于医疗数据,提供了高安全性,并利用云资源有效地抑制数据。
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