Lai Xinjun, Huang Guitao, Zhao Ziyue, Lin Shenhe, Zhang Sheng, Zhang Huiyu, Chen Qingxin, Mao Ning
School of Electro-Mechanical Engineering, Guangdong University of Technology, Guangzhou, Guangdong, China.
Big Data. 2024 Dec;12(6):456-477. doi: 10.1089/big.2022.0021. Epub 2023 Sep 4.
This study investigates customers' product design requirements through online comments from social media, and quickly translates these needs into product design specifications. First, the exponential discriminative snowball sampling method was proposed to generate a product-related subnetwork. Second, natural language processing (NLP) was utilized to mine user-generated comments, and a Graph SAmple and aggreGatE method was employed to embed the user's node neighborhood information in the network to jointly define a user's persona. Clustering was used for market and product model segmentation. Finally, a deep learning bidirectional long short-term memory with conditional random fields framework was introduced for opinion mining. A comment frequency-invert group frequency indicator was proposed to quantify all user groups' positive and negative opinions for various specifications of different product functions. A case study of smartphone design analysis is presented with data from a large Chinese online community called Baidu Tieba. Eleven layers of social relationships were snowball sampled, with 14,018 users and 30,803 comments. The proposed method produced a more reasonable user group clustering result than the conventional method. With our approach, user groups' dominating likes and dislikes for specifications could be immediately identified, and the similar and different preferences of product features by different user groups were instantly revealed. Managerial and engineering insights were also discussed.
本研究通过社交媒体上的在线评论来调查客户的产品设计需求,并迅速将这些需求转化为产品设计规格。首先,提出指数判别式滚雪球抽样方法以生成与产品相关的子网。其次,利用自然语言处理(NLP)挖掘用户生成的评论,并采用Graph SAmple and aggreGatE方法将用户在网络中的节点邻域信息进行嵌入,以共同定义用户角色。聚类用于市场和产品模型细分。最后,引入带有条件随机场框架的深度学习双向长短期记忆网络进行观点挖掘。提出了评论频率 - 反向组频率指标,以量化所有用户群体对不同产品功能的各种规格的正面和负面意见。以来自名为百度贴吧的大型中国在线社区的数据为例,进行了智能手机设计分析的案例研究。对十一个层次的社会关系进行了滚雪球抽样,涉及14,018名用户和30,803条评论。所提出的方法比传统方法产生了更合理的用户群体聚类结果。通过我们的方法,可以立即识别用户群体对规格的主要喜好和厌恶,并即时揭示不同用户群体对产品特征的相似和不同偏好。还讨论了管理和工程方面的见解。