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Hybrid System of Case-Based Reasoning and Neural Network for Symbolic Features

机译:符号特征的基于案例推理和神经网络的混合系统

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Case-based reasoning is one of the most frequently used tools in data mining. Though it has been proved to be useful in many problems, it is noted to have shortcomings such as feature weighting problems. In previous research, we proposed a hybrid system of case-based reasoning and neural network. In the system, the feature weights are extracted from the trained neural network, and used to improve retrieval accuracy of case-based reasoning. However, this system has worked best in domains in which all features had numeric values. When the feature values are symbolic, nearest neighbor methods typically resort to much simpler metrics, such as counting the features that match. A more sophisticated treatment of the feature space is required in symbolic domains. We propose another hybrid system of case-based reasoning and neural network, which uses value difference metric (VDM) for symbolic features. The proposed system is validated by datasets in symbolic domains.
机译:基于案例的推理是数据挖掘中最常用的工具之一。虽然已被证明在许多问题中有用,但它被指出具有诸如特征加权问题的缺点。在以前的研究中,我们提出了一种基于案例的理解和神经网络的混合系统。在系统中,特征权重来自培训的神经网络中提取,并用于提高基于案例推理的检索精度。但是,此系统在所有功能具有数值的域中工作最佳。当特征值是符号时,最近的邻近方法通常会诉诸更简单的指标,例如计数匹配的功能。在符号域中需要更复杂的特征空间处理。我们提出了另一个基于案例的推理和神经网络的混合系统,其使用价值差异度量(VDM)进行符号特征。所提出的系统由符号域中的数据集验证。

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