科学数据库相似度检索的几何图索引

Ayser Armiti, Michael Gertz
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引用次数: 1

摘要

在数据库中搜索相似的图形在许多科学应用中是一项关键任务,例如在药物发现、地理信息学或模式识别中。通常使用图编辑距离来估计非相同图的相似度,这是一项非常困难的任务。提出了几种索引结构和下界距离来精简搜索空间。它们中的大多数利用编辑操作的数量,并假设图形具有具有一定规范顺序的离散标签字母。不幸的是,对于顶点在某些二维空间中具有坐标的几何图形,不能保证这样的假设。本文研究了具有编辑距离约束的几何图的相似范围查询。首先,我们提出了一种高效的索引结构来发现相似的顶点。为此,我们将不同图的顶点嵌入到高维空间中,然后使用众所周知的r树对其进行索引。其次,我们提出了三个下界距离来过滤具有不同修剪能力和复杂度的非相似图。使用从化学信息学、字符识别和图像分析等多个应用领域提取的代表性几何图形,我们的框架实现了平均94%的修剪性能,响应时间减少了77%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Geometric Graph Indexing for Similarity Search in Scientific Databases
Searching a database for similar graphs is a critical task in many scientific applications, such as in drug discovery, geoinformatics, or pattern recognition. Typically, graph edit distance is used to estimate the similarity of non-identical graphs, which is a very hard task. Several indexing structures and lower bound distances have been proposed to prune the search space. Most of them utilize the number of edit operations and assume graphs with a discrete label alphabet that has a certain canonical order. Unfortunately, such assumptions cannot be guaranteed for geometric graphs where vertices have coordinates in some two dimensional space. In this paper, we study similarity range queries for geometric graphs with edit distance constraints. First, we propose an efficient index structure to discover similar vertices. For this, we embed the vertices of different graphs in a higher dimensional space, which are then indexed using the well-known R-tree. Second, we propose three lower bound distances to filter non-similar graphs with different pruning power and complexity. Using representative geometric graphs extracted from a variety of application domains, namely chemoinformatics, character recognition, and image analysis, our framework achieved on average a pruning performance of 94% with 77% reduction in the response time.
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