Efficient answering of why-not questions in similar graph matching

Md. Saiful Islam, Chengfei Liu, Jianxin Li
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Abstract

Graph data management and matching similar graphs are very important for many applications including bioinformatics, computer vision, VLSI design, bug localization, road networks, social and communication networking. Many graph indexing and similarity matching techniques have already been proposed for managing and querying graph data. In similar graph matching, a user is returned with the database graphs whose distances with the query graph are below a threshold. In such query settings, a user may not receive certain database graphs that are very similar to the query graph if the initial query graph is inappropriate/imperfect for the expected answer set. To exemplify this, consider a drug designer who is looking for chemical compounds that could be the target of her hypothetical drug before realizing it. In response to her query, the traditional search system may return the structures from the database that are most similar to the query graph. However, she may get surprised if some of the expected targets are missing in the answer set. She may then seek assistance from the system by asking “Is there other query graph that can match my expected answer set?”. The system may then modify her initial query graph to include the missing answers in the new answer set. Here, we study this kind of problem of answering why-not questions in similar graph matching for graph databases.
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相似图匹配中why-not问题的高效回答
图数据管理和匹配相似图对于许多应用非常重要,包括生物信息学,计算机视觉,VLSI设计,bug定位,道路网络,社交和通信网络。为了管理和查询图数据,已经提出了许多图索引和相似度匹配技术。在类似的图匹配中,返回给用户的是与查询图的距离低于阈值的数据库图。在这样的查询设置中,如果初始查询图不适合/不完善于预期的答案集,则用户可能无法接收到与查询图非常相似的某些数据库图。为了举例说明这一点,假设一个药物设计者正在寻找可能成为她的假设药物目标的化合物,然后才意识到它。为了响应她的查询,传统的搜索系统可能会从数据库中返回与查询图最相似的结构。然而,如果答案集中缺少一些预期目标,她可能会感到惊讶。然后,她可以通过询问“是否有其他查询图可以匹配我期望的答案集?”来寻求系统的帮助。然后,系统可以修改她的初始查询图,将缺失的答案包含在新的答案集中。本文主要研究了图数据库中相似图匹配中why-not问题的回答问题。
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