首页> 外文会议>International conference on case-based reasoning >Adaptation-Guided Feature Deletion: Testing Recoverability to Guide Case Compression
【24h】

Adaptation-Guided Feature Deletion: Testing Recoverability to Guide Case Compression

机译:适应性指导的特征删除:测试可恢复性以指导案例压缩

获取原文

摘要

Extensive case-based reasoning research has studied methods for generating compact, competent case bases. This work has focused primarily on compressing the case base by deleting entire cases, based solely on their competence contributions. Recent work proposed an alternative which compressed individual cases by selectively deleting their internal contents. Early studies of this approach, termed flexible feature deletion (FFD), demonstrated that for suitable domains, such as domains with cases of varying sizes for which case usefulness can be retained despite internal deletions, even very simple FFD approaches may outperform standard per-case methods. However, more sophisticated methods are needed. Because FFD's internal changes to cases can be seen as a form of case adaptation, this paper investigates whether the adaptation knowledge of a system can be harnessed to improve FFD. This paper proposes tying FFD choices directly to adaptation knowledge and presents results on a competence-preserving FFD method which prioritizes feature deletions by the recoverability of deleted features through case adaptation. Evaluation of recoverability-based FFD in a path-finding domain supports that it provides superior competence retention compared to standard flexible feature deletion at the same level of compression.
机译:广泛的基于案例的推理研究已经研究了生成紧凑,有效的案例库的方法。这项工作主要集中于通过仅基于其能力贡献来删除整个案例来压缩案例库。最近的工作提出了一种替代方案,通过有选择地删除案件的内部内容来压缩案件。对该方法的早期研究(称为柔性特征删除(FFD))表明,对于合适的域,例如大小不同的情况下的域,尽管内部删除了,但仍可保留案例有用性,即使是非常简单的FFD方法也可能优于标准情况方法。但是,需要更复杂的方法。由于FFD对案件的内部变更可以看作是案件适应的一种形式,因此本文研究了是否可以利用系统的适应知识来改善FFD。本文提出将FFD选择直接与适应知识联系起来,并给出了一种保持能力的FFD方法的结果,该方法通过案例适应通过删除特征的可恢复性来优先考虑特征删除。在路径查找域中对基于可恢复性的FFD的评估支持,与在相同压缩级别下进行标准灵活功能删除相比,它提供了卓越的能力保留。

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