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IMPORTANCE-PERFORMANCE ANALYSIS OF PRODUCT ATTRIBUTES USING EXPLAINABLE DEEP NEURAL NETWORK FROM ONLINE REVIEWS

机译:在线评论中使用可解释的深神经网络产品属性的重要性 - 性能分析

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Importance-performance analysis (IPA) is a technique used to understand customer satisfaction and improve the quality of product attributes. This study proposes an explainable deep-neural-network-based method to carry out IPA of product attributes from online reviews for product design. Previous works used shallow neural network (SNN)-based methods to estimate importance values, but it was unclear whether the SNN is an optimal neural network architecture. The estimated importance has high variability by a single neural network from a training set that is randomly selected. However, the proposed method provides importance values with a lower variance by improving the importance estimation of each product attribute in the IPA. The proposed method first identifies the product attributes and estimates their performance. Then, it infers the importance values by combining explanations of the input features from multiple optimal neural networks. A case study on smartphones is used herein to demonstrate the proposed method.
机译:重要性 - 性能分析(IPA)是一种用于了解客户满意度并提高产品属性质量的技术。本研究提出了可解释的基于神经网络的基于网络的方法,从线审查开展产品属性的IPA。以前的作品使用了浅神经网络(SNN)基础的方法来估算重要性值,但目前尚不清楚SNN是否是最佳神经网络架构。从随机选择的训练集,估计重要性由单个神经网络具有高度的可变性。然而,所提出的方法通过提高IPA中的每个产品属性的重要性估计,提供了具有较低方差的重要性值。该方法首先识别产品属性并估算其性能。然后,它通过组合来自多个最佳神经网络的输入特征的说明来揭示重要性值。本文使用了对智能手机的案例研究来证明所提出的方法。

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