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Extraction and prioritization of product attributes using an explainable neural network

机译:可解释的神经网络提取和优先级产品属性

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摘要

Identification of product attributes is an important matter in real-world business environments because customers generally make purchase decisions based on their evaluation of the attributes of the product. Numerous studies on product attribute extraction have been performed on the basis of user-generated textual reviews. However, most of them focused only on the attribute extraction process itself and not on the relative importance of the extracted attributes, which are critical information that can be utilized for the promotion or development of specification sheets. Thus, in this study, we focused on the development of an attribute set for a product by considering the relative importance of the extracted attributes. First, we extracted the aspects by utilizing convolutional neural network-based approaches and transfer learning. Second, we propose a novel approach, consisting of variants of the Gradient-weighted class activation mapping (Grad-CAM) algorithm, one of the explainable neural network frameworks, to capture the importance score of each extracted aspect. Using a sentimental prediction model, we calculated the weight of each aspect that affects the sentiment decision. We verified the performance of our proposed method by comparing the similarity of the product attributes that it extracted and their relative importance with the product attributes that customers consider to be the most important and by comparing the attributes used to develop the specification sheet of an existing major commercial site.
机译:产品属性的识别是现实世界商业环境中的重要事项,因为客户通常根据他们对产品属性的评估来进行购买决策。在用户生成的文本评论的基础上进行了许多关于产品属性提取的研究。然而,它们中的大多数仅集中在属性提取过程本身上,而不是提取的属性的相对重要性,这是可用于促销或开发规范表的关键信息。因此,在本研究中,我们专注于通过考虑提取的属性的相对重要性来开发为产品的属性集。首先,我们通过利用基于卷积神经网络的方法和转移学习来提取方面。其次,我们提出了一种新的方法,由梯度加权类激活映射(Grad-CAM)算法的变体组成,可说明的神经网络框架之一,以捕获每个提取方面的重要性得分。使用感伤预测模型,我们计算了影响情绪决定的每个方面的权重。我们通过比较它提取的产品属性的相似性及其对客户认为是最重要的产品属性的产品属性的相似性来验证了我们提出的方法的性能,并通过比较用于开发现有专业的规范表的属性来进行比较商业网站。

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