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Keyword Search on Relational Data Streams

机译:关系数据流上的关键字搜索

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Increasing monitoring of transactions, environmental parameters, homeland security, RFID chips and interactions of online users rapidly establishes new data sources and application scenarios. In this paper, we propose keyword search on relational data streams (S-KWS) as an effective way for querying in such intricate and dynamic environments. Compared to conventional query methods, S-KWS has several benefits. First, it allows search for combinations of interesting terms without a-priori knowledge of the data streams in which they appear. Second, it hides the schema from the user and allows it to change, without the need for query re-writing. Finally, keyword queries are easy to express. Our contributions are summarized as follows. (I) We provide formal semantics for S-KWS, addressing the temporal validity and order of results. (ii) We propose an efficient algorithm for generating operator trees, applicable to arbitrary schemas. (iii) We integrate these trees into an operator mesh that shares common expressions. (iv) We develop techniques that utilize the operator mesh for efficient query processing. The techniques adapt dynamically to changes in the schema and input characteristics. Finally, (v) we present methods for purging expired tuples, minimizing either CPU, or memory requirements.
机译:越来越多的交易,环境参数,国土安全,RFID芯片以及在线用户交互的监控迅速建立了新的数据源和应用场景。在本文中,我们提出在关系数据流(S-KWS)上进行关键字搜索,作为在这种复杂而动态的环境中进行查询的有效方法。与传统查询方法相比,S-KWS具有许多优点。首先,它允许搜索有趣的术语的组合,而无需先了解它们出现在其中的数据流。其次,它向用户隐藏了模式,并允许对其进行更改,而无需重写查询。最后,关键字查询很容易表达。我们的贡献总结如下。 (I)我们为S-KWS提供形式语义,以解决时间有效性和结果顺序问题。 (ii)我们提出了一种用于生成运算符树的有效算法,适用于任意模式。 (iii)我们将这些树集成到共享通用表达式的运算符网格中。 (iv)我们开发了利用运算符网格进行有效查询处理的技术。这些技术可动态适应模式和输入特征的变化。最后,(v)我们介绍了清除过期的元组,最小化CPU或内存需求的方法。

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