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Indexing of location-dependent data in mobile computing environments.

机译:在移动计算环境中索引与位置有关的数据。

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摘要

This thesis conducts research on advanced indexing techniques to improve the performance of location-dependent information services (LDISs).; For location-dependent data (LDD), the validity of a data value is dependent on the location of the client retrieving the data value. The retrieval of LDD requires the identification of the region that the client is residing in, given a partition of the geographical space. For example, finding the name of the city that the client is visiting requires identifying which city the client is located in given the city boundaries of a country. D-tree is proposed to efficiently determine the target region by indexing the division of adjacent regions. Compared to the existing approximation methods, such as Minimal Bounding Rectangles (MBRs) in R-tree, D-tree does not index any overlapping region and therefore avoids back-tracking. Compared to decomposition schemes, such as the trapezoidal map, D-tree represents the divisions in the search space and does not introduce any auxiliary line segments to the space. Therefore, the storage cost of D-tree is very low. Simulation results of both synthetical and real datasets show that D-tree outperforms existing indexes significantly in terms of search time.; Next, we focus on nearest-neighbor search, which can be answered based on the locations of the data objects in the search space. We propose the grid-partition index which first partitions the whole search space into disjoint sub-spaces, called grid cells, to efficiently narrow down the required search space for a given query point and then for each grid cell index only those objects that are possibly the nearest neighbors to some query point within that grid cell. Since the indexing of objects is more efficient than that of regions and the number of objects indexed by each grid cell is much smaller than the whole population, the search performance is improved. Three partition algorithms have been proposed to partition the original space into disjoint grid cells with the help of a newly defined performance metric, index efficiency.; Based on the proposed D-tree and grid-partition index, different kinds of location-dependent queries (LDQs) can be efficiently answered. However, a specific D-tree only serves one kind of LDQ and a grid-partition index is only workable for a nearest-neighbor search. Therefore, a universal index structure is still desirable to answer different LDQs. Motivated by this, a Hilbert-curve index is proposed. To cater for the linear browsing limitation of wireless broadcast systems, the objects are mapped onto a linear space using a space-filling curve, namely the Hilbert curve. Different search algorithms are devised to answer window queries, k-nearest-neighbor queries, and continuous-nearest-neighbor queries. A series of simulation experiments are conducted to evaluate the proposed search algorithms. (Abstract shortened by UMI.)
机译:本文对高级索引技术进行了研究,以提高基于位置的信息服务(LDIS)的性能。对于位置相关数据(LDD),数据值的有效性取决于检索数据值的客户端位置。在给定地理空间分区的情况下,LDD的检索需要标识客户端所居住的区域。例如,要找到客户要访问的城市的名称,就需要根据给定国家/地区的城市边界来确定客户位于哪个城市。为了通过索引相邻区域的划分有效地确定目标区域,提出了D树。与现有的近似方法(例如R树中的最小边界矩形(MBR))相比,D树不会索引任何重叠区域,因此避免了回溯。与分解方案(例如梯形图)相比,D树表示搜索空间中的划分,并且不向该空间引入任何辅助线段。因此,D树的存储成本非常低。综合数据集和真实数据集的仿真结果均表明,D树在搜索时间方面明显优于现有索引。接下来,我们集中于最近邻居搜索,可以根据数据对象在搜索空间中的位置进行回答。我们提出了一种网格分区索引,该索引首先将整个搜索空间划分为不相交的子空间,称为 grid cells ,以有效地缩小给定查询点所需的搜索空间,然后缩小每个网格单元的所需搜索空间。仅索引那些可能与该网格单元中某个查询点最接近的对象。由于对象的索引比区域的索引更有效,并且每个网格单元索引的对象的数量比整个人口少得多,因此提高了搜索性能。提出了三种划分算法,借助新定义的性能指标索引效率,将原始空间划分为不相交的网格单元。基于提出的D树和网格分区索引,可以有效地回答不同种类的位置相关查询(LDQ)。但是,特定的D树仅服务于一种LDQ,并且网格分区索引仅适用于最近邻居搜索。因此,仍然需要通用索引结构来回答不同的LDQ。为此,提出了希尔伯特曲线指数。为了适应无线广播系统的线性浏览限制,使用空间填充曲线(即 Hilbert曲线)将对象映射到线性空间。设计了不同的搜索算法来回答窗口查询, k 最近邻居查询和连续最近邻居查询。进行了一系列的仿真实验,以评估提出的搜索算法。 (摘要由UMI缩短。)

著录项

  • 作者

    Zheng, Baihua.;

  • 作者单位

    Hong Kong University of Science and Technology (People's Republic of China).;

  • 授予单位 Hong Kong University of Science and Technology (People's Republic of China).;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 183 p.
  • 总页数 183
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

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