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Extraction of Product Evaluation Factors with a Convolutional Neural Network and Transfer Learning

机译:利用卷积神经网络和转移学习提取产品评价因子

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Earlier studies have indicated that decision-making by a project development team can be improved throughout the design and development process by understanding the key factors that affect customers evaluations of a new product. Aspect extraction could thus be a useful tool for identifying important attributes when evaluating products or services. Aspect extraction based on deep convolutional neural networks has recently been suggested, demonstrating state-of-the-art performance when applied to a customer review of electronic devices. However, this approach is unsuited to the rapidly evolving smartphone industry, which involves a wide range of product lines. Whereas the previous approach required significant amounts of data labeling for each product, we propose a variant of that approach that includes transfer learning. We also propose a novel approach for transferring the architecture sequentially within the product group. The results indicate that the principal key feature of each product is extracted effectively by the proposed method without having to re-train the entire convolutional neural network model. Furthermore, the proposed method performs better than the previous method for each product line.
机译:早期的研究表明,通过了解影响客户对新产品评估的关键因素,可以在整个设计和开发过程中改善项目开发团队的决策。因此,方面评估可能是在评估产品或服务时识别重要属性的有用工具。最近已经提出了基于深度卷积神经网络的纵横比提取,证明了将其应用于电子设备的客户评论时的最新性能。但是,这种方法不适用于迅速发展的智能手机行业,该行业涉及广泛的产品线。尽管先前的方法需要为每种产品大量标记数据,但我们提出了该方法的一种变体,其中包括转移学习。我们还提出了一种新颖的方法来在产品组内顺序转移体系结构。结果表明,所提出的方法有效地提取了每种产品的主要关键特征,而无需重新训练整个卷积神经网络模型。此外,对于每个产品线,所提出的方法比以前的方法表现更好。

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