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引用次数: 1
摘要
随着信息通信技术的飞速发展,O2O (Online to Offline)商业模式受到了企业的广泛关注。在这样一个快速发展的环境下,一些研究表明,缺乏信任会给O2O业务带来很大的损害。此外,一些已发表的作品指出,社交社区的负面评论会降低消费者对O2O公司和平台的信任。因此,企业有必要了解影响消费者文本评论情绪的重要因素。因此,本研究旨在分别使用支持向量机递归特征消除(SVM-RFE)和最小绝对收缩和选择算子(LASSO)构建预测模型。我们不仅试图建立情感分类模型,而且还试图找到影响评论情感的重要因素。研究结果可为O2O市场企业认真回答顾客的意见,提高顾客的信任度和服务质量提供参考。
Build Sentiment Classification Prediction Model for O2O Service
With the rapid development of information and communication technology, O2O (Online to Offline) business model has attracted lots of attentions for enterprises. In such a fast-growing environment, some studies indicated that lack of trust will bring a great damage to O2O business. Besides, some published works pointed out those negative comments in social communities will decrease the consumer's trust to O2O companies and platforms. So, it is necessary for enterprises to understand the important factors that affect consumers' sentiment of textual reviews. Therefore, this study aims to build prediction models by using Support Vector Machines Recursive Feature Elimination (SVM-RFE) and Least Absolute Shrinkage and Selection Operator (LASSO), respectively. We do not only attempt to build sentiment classification models, but also to find the important factors that affect the sentiments of comments. The findings can be references for O2O market enterprises to carefully answer customers' comments to improve customers' trust and service quality.