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Combining and choosing case base maintenance algorithms

机译:结合并选择案例库维护算法

摘要

Case-Based Reasoning (CBR) uses past experiences to solve new problems. The quality of the past experiences, which are stored as cases in a case base, is a big factor in the performance of a CBR system. The system's competence may be improved by adding problems to the case base after they have been solved and their solutions verified to be correct. However, from time to time, the case base may have to be refined to reduce redundancy and to get rid of any noisy cases that may have been introduced. Many case base maintenance algorithms have been developed to delete noisy and redundant cases. However, different algorithms work well in different situations and it may be difficult for a knowledge engineer to know which one is the best to use for a particular case base. In this thesis, we investigate ways to combine algorithms to produce better deletion decisions than the decisions made by individual algorithms, and ways to choose which algorithm is best for a given case base at a given time. We analyse five of the most commonly-used maintenance algorithms in detail and show how the different algorithms perform better on different datasets. This motivates us to develop a new approach: maintenance by a committee of experts (MACE). MACE allows us to combine maintenance algorithms to produce a composite algorithm which exploits the merits of each of the algorithms that it contains. By combining different algorithms in different ways we can also define algorithms that have different trade-offs between accuracy and deletion. While MACE allows us to define an infinite number of new composite algorithms, we still face the problem of choosing which algorithm to use. To make this choice, we need to be able to identify properties of a case base that are predictive of which maintenance algorithm is best. We examine a number of measures of dataset complexity for this purpose. These provide a numerical way to describe a case base at a given time. We use the numerical description to develop a meta-case-based classification system. This system uses previous experience about which maintenance algorithm was best to use for other case bases to predict which algorithm to use for a new case base. Finally, we give the knowledge engineer more control over the deletion process by creating incremental versions of the maintenance algorithms. These incremental algorithms suggest one case at a time for deletion rather than a group of cases, which allows the knowledge engineer to decide whether or not each case in turn should be deleted or kept. We also develop incremental versions of the complexity measures, allowing us to create an incremental version of our meta-case-based classification system. Since the case base changes after each deletion, the best algorithm to use may also change. The incremental system allows us to choose which algorithm is the best to use at each point in the deletion process.
机译:基于案例的推理(CBR)利用过去的经验来解决新问题。以往经验的质量(作为案例存储在案例库中)是CBR系统性能的重要因素。解决问题并验证解决方案正确之后,可以通过在案例库中添加问题来提高系统的能力。但是,可能不时需要改进案例库,以减少冗余并摆脱可能引入的任何嘈杂案例。已经开发了许多案例库维护算法来删除嘈杂和多余的案例。但是,不同的算法在不同的情况下效果很好,知识工程师可能很难知道哪种算法最适合特定案例。在本文中,我们研究了组合算法以产生比单个算法所做出的决策更好的删除决策的方法,以及在给定时间针对给定案例库选择最佳算法的方法。我们详细分析了五个最常用的维护算法,并展示了不同的算法如何在不同的数据集上表现更好。这激励我们开发一种新方法:由专家委员会(MACE)进行维护。 MACE使我们能够结合维护算法来生成复合算法,从而利用其包含的每个算法的优点。通过以不同的方式组合不同的算法,我们还可以定义在准确性和删除之间具有不同权衡的算法。尽管MACE允许我们定义无限数量的新复合算法,但我们仍然面临选择使用哪种算法的问题。为了做出选择,我们需要能够确定案例库的属性,这些属性可以预测最佳的维护算法。为此,我们检查了许多数据集复杂性的度量。这些提供了一种数字方式来描述给定时间的案例库。我们使用数字描述来开发基于元案例的分类系统。该系统使用了以前的经验,即关于哪种维护算法最适合用于其他案例库,以预测要用于新案例库的算法。最后,我们通过创建维护算法的增量版本,使知识工程师对删除过程具有更大的控制权。这些增量算法建议一次删除一个案例,而不是一组案例,这使知识工程师可以决定是否应依次删除或保留每个案例。我们还开发了复杂性度量的增量版本,从而使我们能够创建基于元案例的分类系统的增量版本。由于案例库在每次删除后都会更改,因此使用的最佳算法也可能会更改。增量系统使我们可以选择在删除过程中的每个点上最适合使用的算法。

著录项

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    Cummins Lisa;

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  • 年度 2013
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  • 原文格式 PDF
  • 正文语种 en
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