Efficient $k$-NN Search in IoT Data: Overlap Optimization in Tree-Based Indexing Structures

Ala-Eddine Benrazek, Zineddine Kouahla, Brahim Farou, Hamid Seridi, Ibtissem Kemouguette
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Abstract

The proliferation of interconnected devices in the Internet of Things (IoT) has led to an exponential increase in data, commonly known as Big IoT Data. Efficient retrieval of this heterogeneous data demands a robust indexing mechanism for effective organization. However, a significant challenge remains: the overlap in data space partitions during index construction. This overlap increases node access during search and retrieval, resulting in higher resource consumption, performance bottlenecks, and impedes system scalability. To address this issue, we propose three innovative heuristics designed to quantify and strategically reduce data space partition overlap. The volume-based method (VBM) offers a detailed assessment by calculating the intersection volume between partitions, providing deeper insights into spatial relationships. The distance-based method (DBM) enhances efficiency by using the distance between partition centers and radii to evaluate overlap, offering a streamlined yet accurate approach. Finally, the object-based method (OBM) provides a practical solution by counting objects across multiple partitions, delivering an intuitive understanding of data space dynamics. Experimental results demonstrate the effectiveness of these methods in reducing search time, underscoring their potential to improve data space partitioning and enhance overall system performance.
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物联网数据中的高效 $k$-NN 搜索:基于树的索引结构中的重叠优化
物联网(IoT)中互联设备的激增导致数据呈指数级增长,这些数据通常被称为物联网大数据。然而,索引构建过程中数据空间分区的重叠仍然是一个重大挑战。这种重叠增加了搜索和检索过程中的节点访问量,导致更高的资源消耗和性能瓶颈,并阻碍了系统的可扩展性。为了解决这个问题,我们提出了三种创新的启发式方法,旨在量化和策略性地减少数据空间分区重叠。基于体积的方法(VBM)通过计算分区之间的交叉体积进行详细评估,从而更深入地了解空间关系。基于距离的方法(DBM)通过使用分区中心和半径之间的距离来评估重叠情况,提供了一种精简而精确的方法,从而提高了效率。最后,基于对象的方法(OBM)通过计算多个分区中的对象,提供了一种实用的解决方案,让人们直观地了解数据空间的动态。实验结果证明了这些方法在减少搜索时间方面的有效性,突出了它们在改进数据空间分区和提高系统整体性能方面的潜力。
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