Interleaving Reasoning and Selection with Knowledge Summarization

Yan Wang, Zhisheng Huang, Yi Zeng, N. Zhong, F. V. Harmelen
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Abstract

When the physical space and the cyber space are linked by human, Cyber-Physical Society (CPS) has emerged and produced many challenges. Among which, the challenge of fast growing data and knowledge both from the physical space and the cyber space has become a crucial issue. Scalability becomes a big barrier in data processing (more specifically, search and reasoning). Traditional knowledge processing methods aim at providing users complete results in rational time, which is not applicable when it comes to very large-scale data. While in the context of Web and large-scale data, users' expectations are not always receiving complete results, instead, they may prefer to get some incomplete subset of the results compared to waiting for a long time. With this spirit, an approach named Interleaving Reasoning and Selection with Knowledge Summarization (IRSKS) is developed. This approach supports incomplete reasoning and heuristic search based on knowledge summarization. It can be divided into two phases: the off-line and the on-line processing. The off-line processing includes partitioning and summarization, and provides the basis for heuristic search. Partitioning makes one large-scale dataset become many small subsets (chunks). Summarization produces summaries that contain heuristic information (such as the location and major topics of each chunk) to build a bridge between the searching target and the partitioned large-scale dataset. Through the cues provided by summaries, a best search path can be found to locate the searching target. Along with the search path, the on-line processing includes interleaving reasoning and selection, which compose a dynamic searching process and support anytime behavior. In this way, the search space is greatly reduced and close to the searching target so that a good trade-off is achieved between the time and the quality of a query. Based on this approach, a prototype system named Knowledge Intensive Summarization System (KISS) has been developed and the evaluation with the KISS system on the PubMed dataset indicates that the proposed method is potentially effective for processing large-scale semantic data in the Cyber-Physical Society.
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穿插推理和选择与知识总结
当人类将物理空间和网络空间联系在一起时,网络物理社会(cyber - physical Society, CPS)应运而生,并产生了许多挑战。其中,来自物理空间和网络空间的快速增长的数据和知识的挑战已成为一个至关重要的问题。可伸缩性成为数据处理(更具体地说,是搜索和推理)中的一大障碍。传统的知识处理方法旨在在合理的时间内为用户提供完整的结果,这对于非常大规模的数据来说是不适用的。而在Web和大规模数据的上下文中,用户的期望并不总是得到完整的结果,相反,他们可能更愿意得到一些不完整的结果子集,而不是等待很长时间。本着这种精神,提出了一种基于知识总结的交错推理与选择方法。该方法支持不完全推理和基于知识摘要的启发式搜索。可分为离线加工和在线加工两个阶段。离线处理包括划分和汇总,为启发式搜索提供了基础。分区使一个大规模的数据集变成许多小的子集(块)。摘要生成包含启发式信息(例如每个块的位置和主要主题)的摘要,以在搜索目标和分区的大规模数据集之间建立桥梁。通过摘要提供的线索,可以找到最佳搜索路径来定位搜索目标。在搜索路径上,在线处理包括交错推理和选择,构成了一个动态搜索过程,支持随时行为。通过这种方式,极大地缩小了搜索空间并接近搜索目标,从而在查询的时间和质量之间实现了良好的权衡。在此基础上,开发了一个名为知识密集型摘要系统(KISS)的原型系统,并在PubMed数据集上对KISS系统进行了评估,结果表明该方法对于处理网络物理社会中的大规模语义数据具有潜在的有效性。
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