首页> 外文会议>International conference on case-based reasoning >Maintenance for Case Streams: A Streaming Approach to Competence-Based Deletion
【24h】

Maintenance for Case Streams: A Streaming Approach to Competence-Based Deletion

机译:案例流维护:一种基于能力的删除的流方法

获取原文

摘要

The case-based reasoning community has extensively studied competence-based methods for case base compression. This work has focused on compressing a case base at a single point in time, under the assumption that the current case base provides a representative sample of cases to be seen. Large-scale streaming case sources present a new challenge for competence-based case deletion. First, in such contexts, it may be infeasible or too expensive to maintain more than a very small fraction of the overall set of cases, and the current system snapshot of the cases may not be representative of future cases, especially for domains with concept drift. Second, the interruption of processing required to compress the full case base may not be practical for large case bases in real-time streaming contexts. Consequently, such settings require maintenance methods enabling continuous incremental updates and robust to limited information. This paper presents research on addressing these problems through the use of sieve streaming, a submodular data summarization method developed for streaming data. It demonstrates how the approach enables the maintenance process to trade off between rnainte-nance cost and competence retention and assesses its performance compared to baseline competence-based deletion methods for maintenance. Results support the benefit of the approach for large-scale streaming data.
机译:基于案例的推理社区已经广泛研究了基于胜任力的案例库压缩方法。假设当前的案例库提供了一个有待观察的典型案例,则这项工作着重于在单个时间点压缩案例库。大规模流案例来源为基于胜任力的案例删除提出了新的挑战。首先,在这种情况下,要维持全部案例中很小的一部分可能不可行或太昂贵,并且当前的案例系统快照可能无法代表未来的案例,尤其是对于概念漂移的领域。其次,对于实时流上下文中的大型案例库,压缩完整案例库所需的处理中断可能不切实际。因此,这样的设置需要维护方法,以实现连续的增量更新并且对有限的信息具有鲁棒性。本文介绍了通过使用筛流技术解决这些问题的研究,筛流技术是为流数据开发的一种亚模数据汇总方法。它演示了该方法如何使维护过程在合理的成本和能力保留之间进行权衡,并与基于基线能力的维护删除方法相比,评估了其性能。结果支持该方法对大规模流数据的好处。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号