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How to Deal with Liars? Designing Intelligent Rule-Based Expert Systems to Increase Accuracy or Reduce Cost

机译:如何对待骗子?设计基于智能规则的专家系统以提高准确性或降低成本

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摘要

Input distortion is a common problem faced by expert systems, particularly those deployed with a Web interface. In this study, we develop novel methods to distinguish liars from truth-tellers, and redesign rule-based expert systems to address such a problem. The four proposed methods are termed split tree (ST), consolidated tree (CT), value-based split tree (VST), and value-based consolidated tree (VCT), respectively. Among them, ST and CT aim to increase an expert system’s accuracy of recommendations, and VST and VCT attempt to reduce the misclassification cost resulting from incorrect recommendations. We observe that ST and VST are less efficient than CT and VCT in that ST and VST always require selected attribute values to be verified, whereas CT and VCT do not require value verification under certain input scenarios. We conduct experiments to compare the performances of the four proposed methods and two existing methods, i.e., the traditional true tree (TT) method that ignores input distortion and the knowledge modification (KM) method proposed in prior research. The results show that CT and ST consistently rank first and second, respectively, in maximizing the recommendation accuracy, and VCT and VST always lead to the lowest and second lowest misclassification cost. Therefore, CT and VCT should be the methods of choice in dealing with users’ lying behaviors. Furthermore, we find that KM is outperformed by not only the four proposed methods, but sometimes even by the TT method. This result further confirms the advantage necessity of differentiating liars from truth-tellers when both types of users exist in the population.
机译:输入失真是专家系统面临的常见问题,特别是使用Web界面部署的问题。在这项研究中,我们开发了将骗子与真实柜员区区分骗子的新方法,并重新设计基于规则的专家系统来解决此类问题。四个提出的方法分别称为分割树(ST),综合树(CT),基于值的分割树(VST)和基于值的整合树(VCT)。其中,ST和CT旨在提高专家系统的建议准确性,VST和VCT试图降低因不正确的建议而导致的错误分类成本。我们观察到,ST和VST比CT和VCT在该ST和VST中始终需要验证所选属性值,而CT和VCT在某些输入方案下不需要验证。我们进行实验以比较四种方法和两个现有方法的性能,即忽略了现有研究中提出的输入失真的传统真实树(TT)方法和知识修改(KM)方法。结果表明,CT和ST分别始终依次等级,分别最大化推荐准确性,VCT和VST始终导致最低和第二次错分成本。因此,CT和VCT应该是处理用户说谎行为的选择方法。此外,我们发现km不仅是四种提出的方​​法,而且甚至是通过TT方法的表现。当在人口中存在两种类型的用户时,该结果进一步证实了在真实柜员中区分骗子的优势必要性。

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