基于自然语言处理的在线顾客评价的属性水平判定

Y. Pasmawati, A. Tontowi, B. Hartono, T. Wijayanto
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引用次数: 0

摘要

创业公司在网络众筹平台上的技术产品失败率相当高。故障的参数之一是工程质量信号的属性。初创企业和众筹平台协同,提供项目质量信号的活动刺激,吸引支持者为初创企业提供资金。研究的目的是确定工程质量信号的属性。本研究使用在线客户评论作为研究数据集,使用自然语言处理(NLP)在7个项目质量信号属性中绘图。采用情感分析对赞成反对评论进行分类,采用特征提取获得结构化词,采用TF-IDF进行相似度查找。然后对其进行分析,以获得作为属性级别代表的响应值。结果表明,响应值在0.0586 ~ 0.9752之间。0.9752的最大值是活动时长,其次是活动描述、支持者信息、资金信息、视频、主图,最后是平面设计。结果表明,基于顾客评价的7个属性可采用自然语言处理方法进行分级。在这种情况下,与其他属性相比,活动持续时间是最重要的属性。
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Determination Of Attributes Leveling Through Online Customer Reviews Using Natural Language Processing
Failure rate of technology Products of Start-ups on the Online Crowdfunding Platform is quite high. One of the parameters of the failure is project quality signals of attributes. The Start-ups and the Crowdfunding Platform synergize providing campaign stimulus of project quality signals to attract backers who will give funding to the start-ups. The aims of study is determination of attributes of project quality signals. This study uses online customer reviews as a research data set to plot within 7 project quality signals attributes using Natural Language Processing (NLP). The sentiment analysis was used to classify pro-con review, the features extraction was employed to get structured-words, and TF-IDF was applied to find similarity. It was then analysed to gain response values as representative of attribute levels. Results show that response values lay of in the ranges of 0.0586 to 0.9752. The highest values of 0.9752 was campaign duration and followed by campaign description, information of backers, information of funding, video, main picture and the last was grapic design. It concludes that levelling of 7 attributes based on customer reviews could be developed by NLP method. In this, the campaign duration was the most important attribute compared to other attributes.
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