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Case-based reasoning and neural network based expert system for personalization

机译:基于案例的推理和基于神经网络的个性化专家系统

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We suggest a hybrid expert system of case-based reasoning (CBR) and neural network (NN) for symbolic domain. In previous research, we proposed a hybrid system of memory and neural network based learning. 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 feature-weighted CBR with neural network, which uses value difference metric (VDM) as distance function for symbolic features. In our system, the feature weight set calculated from the trained neural network plays the core role in connecting both the learning strategies. Moreover, the explanation on prediction can be given by presenting the most similar cases from the case base. To validate our system, illustrative experimental results are presented. We use datasets from the UCI machine learning archive for experiments. Finally, we present an application with a personalized counseling system for cosmetic industry whose questionnaires have symbolic features. Feature-weighted CBR with neural network predicts the five elements, which show customers' character and physical constitution, with relatively high accuracy and expert system for personalization recommends personalized make-up style, color, life style and products.
机译:我们建议使用基于案例的推理(CBR)和符号域的神经网络(NN)的混合专家系统。在先前的研究中,我们提出了一种基于记忆和神经网络的混合学习系统。在该系统中,从经过训练的神经网络中提取特征权重,并将其用于提高基于案例的推理的检索准确性。但是,此系统在所有功能都具有数值的域中效果最佳。当特征值是符号值时,最近邻方法通常采用更简单的度量标准,例如对匹配的特征进行计数。在符号域中,需要对特征空间进行更复杂的处理。我们提出了具有神经网络的特征加权CBR,它使用值差异度量(VDM)作为符号特征的距离函数。在我们的系统中,从训练后的神经网络计算出的特征权重集在连接这两种学习策略中起着核心作用。此外,可以通过从案例库中呈现最相似的案例来给出对预测的解释。为了验证我们的系统,提出了说明性的实验结果。我们使用UCI机器学习档案中的数据集进行实验。最后,我们为化妆品行业提供了个性化咨询系统的应用程序,其问卷具有象征意义。具有神经网络的特征加权CBR可以预测五个元素,这些元素可以相对较高地显示客户的性格和身体结构,并且个性化专家系统建议个性化的化妆风格,颜色,生活方式和产品。

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