基于单层神经网络的电子商务移动应用评论情感识别系统

Semmy Wellem Taju, Edson Yahuda Putra, G. Mandias
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引用次数: 0

摘要

在科技时代,电子商务提供了商业机会,特别是通过互联网购买或销售产品的过程简单。维护客户体验必须得到电子商务服务提供商的认可,这是企业的首要任务。客户可以进入全球市场,比较不同地区的价格,甚至可以轻松地比较各种电子商务应用程序的服务。电子商务移动应用上的在线客户评论扮演着重要的角色,这些评论可以作为对其他客户的个人推荐。因为客户依赖于其他客户的意见,客户的差评会让潜在用户在未来不再下载电子商务手机应用。本文描述的系统使用单层神经网络从在线客户评论中自动预测和分析客户情绪。所提出的情感识别系统模型在算法中取得了最好的性能;总体敏感性为96.2%,特异性为93.8%,准确度为95.0%,MCC为0.90。此外,研究人员还开发了一个快速可靠的基于网络的系统,用于从客户评论中识别情绪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Identification System for E-Commerce Mobile App Reviews Using Single Layer Neural Network
In the technological era, e-commerce offers business opportunities, particularly through the simplicity of the process of buying or selling products through the Internet. The upkeep of the customer experience must be recognized by e-commerce service providers as a top priority for businesses. Customers can access the global market, compare prices across regions, and even easily compare the services of various e-commerce apps. Online customer reviews on e-commerce mobile apps play an important role, which can be used as personal recommendations for other customers. Because customers rely on the opinions of other customers, negative reviews from customers will deter potential users from downloading the e-commerce mobile app in the future. The system described in this paper uses a single-layer neural network to automatically predict and analyze customer sentiments from online customer reviews. The proposed sentiment identification system model achieved the best performance among the algorithms; it attained an overall sensitivity of 96.2%, specificity of 93.8%, accuracy of 95.0%, and MCC of 0.90. Additionally, the researchers developed a fast and reliable web-based system for identifying sentiment from customer reviews.
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