从众包中获取消费者偏好的基于模型的方法:以Twitter为例

Eric-Oluf Svee, J. Zdravkovic
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引用次数: 7

摘要

在当今竞争激烈的全球服务和产品供应背后,消费者的选择对公司和组织的成功有着巨大的影响。消费者选择与偏好有关,即人们对服务或产品的一系列假设,如便利性、实用性或美观性。此外,消费者偏好允许根据预期的或将要体验的消费满意度对产品或服务的不同假设进行排名。在我们之前的工作中,我们提出了消费者偏好的概念化-消费者偏好元模型(CPMM) -以实现偏好的分类和排名,这将是决定哪些将被考虑开发成支持信息系统/服务的基础。在这项研究中,我们通过众包收集消费者偏好,特别是Twitter,因为它作为最新评论和当前服务和产品信息的来源越来越受欢迎。美国四家主要航空公司的推文使用不同的自然语言处理(NLP)技术进行处理,该技术可以在CPMM中对其目标、内容和重要性进行分类。接下来,通过将CPMM中排名最高的结果映射到目标模型,可以实现从包含在简短文本中的首选项语料库到系统/服务的高级需求的基于模型的链接。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A model-based approach for capturing consumer preferences from crowdsources: The case of Twitter
Consumer choices are enormously influential in the success of the companies and organizations behind the highly competitive global service and product offerings of today. Consumer choice relates to preference, i.e. a set of assumptions a person creates around a service or a product such as convenience, utility or aesthetics. Furthermore, consumer preferences allow ranking of different assumptions about products or services based on the expected or to-be-experienced satisfaction of consuming them. In our previous work, we proposed a conceptualization of consumer preferences - the Consumer Preference Meta-Model (CPMM) - to enable a classification and ranking of the preferences that would be the basis for deciding which of would be considered to be developed into supporting information systems/services. In this study we collect consumer preferences through crowdsourcing, and in particular Twitter, because of its increasing popularity as a source of up-to-date comments and information about current services and products. The tweets of four major American airlines were processed using different techniques from natural language processing (NLP) that enabled the classification of their objectives, content, and importance within CPMM. By next mapping the highest-ranked results from CPMM to goal models enabled a model-based linkage from a corpus of preferences contained within short texts to high-level requirements for system/services.
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