NodeLeaper:低开销无关联AVL树

Yao Liu, Qingkai Zeng, Pinghai Yuan
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引用次数: 0

摘要

遗忘是一种意图隐藏访问模式的密码原语。虽然ORAM是最强的加密模型,但它会产生很大的开销。Elaine Shi等人提出了遗忘数据结构(ODS),在数据块表现出一定程度的访问可预测性的情况下,与一般的ORAM算法相比,它在理论上有了很大的改进。以AVL树为例,当所有数据块组织成一棵AVL树时,每个节点(数据块)都包含指向其两个子节点的位置信息。因此,客户端可以立即获得下一个要访问的位置,而不是向服务器发出另一个ORAM访问以进行PosMap查找。此外,该算法需要额外的客户端空间来更新AVL树。在本文中,我们引入了遗忘AVL树NodeLeaper,简称NodeLeaper,它使所有子节点的位置信息共享部分位。因此,可以为具有相同块大小的子节点和孙子节点存储多个位置。这样,搜索就可以以跳跃式的方式进行。因此,理论上NodeLeaper比ODS需要更少的ORAM访问客户端空间进行节点更新。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NodeLeaper: Lower Overhead Oblivious AVL Tree
Obliviousness is crypto primitives which intent to hide access pattern. Although ORAM is strongest crypto model, it incurs significant overhead. Elaine Shi et. al. propose Obliviousness Data Structrue (ODS) that makes a great theriotical improvement comparing to general ORAM algorithm, in case of the data blocks exhibit some degree of access predictability. Take AVL tree as an example, when all data blocks are organized as one AVL tree, every nodes (data blocks) contain position information points to both of its child node. As such, the client can immediately obtain the next position to be accessed instead of issuing another ORAM access to the server for a PosMap lookup. Also, the algorithm need extra client space for updating the AVL tree.In this paper, we introduce oblivious AVL tree NodeLeaper, NodeLeaper for short, which enables position information of all child nodes to share part of bits. As such one can store multiple positions for is child and grandson node positions with same block size. In this way, the search can be processed in a leap manner. As a result, NodeLeaper theriotically needs less ORAM accessand client space for node updating than ODS.
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