Deep LSTM for Generating Brand Personalities Using Social Media: A Case Study from Higher Education Institutions

Piyumini Wijenayake, D. Alahakoon, Daswin De Silva, S. Kirigeeganage
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引用次数: 1

Abstract

: This paper introduces a novel technique to generate brand personalities for organizations from social media text data using a deep bi - directional Long Short - Term Memory (BiLSTM) neural network model in combination with an accepted brand personality scale model. Brand Personality has evolved into an indispensable element in modern business organizations. Currently brand personality of an organization is generated using traditional techniques such as stakeholder interviews, questionnaires, which are time and resource intensive and limited in efficacy. However, the rise of the internet and social media have provided a platform for stakeholders to frequently and freely express their opinions and experiences related to organizations. Such social media data while now successfully being used for customer analytics have not yet been fully investigated and used to understand brand personalities. Our research investigated how this data can be effectively leveraged by organizations to generate and monitor their brand in near real time. Our technique has been successfully demonstrated on Higher Education Institutes, as Higher Education is an industry that is increasingly being exposed to business competition over the last few decades.
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利用社交媒体生成品牌个性的深度LSTM:以高等教育机构为例
本文介绍了一种利用深度双向长短期记忆(BiLSTM)神经网络模型结合公认的品牌人格量表模型,从社交媒体文本数据中为组织生成品牌人格的新技术。品牌个性已经发展成为现代商业组织中不可或缺的要素。目前,一个组织的品牌个性是通过传统的技术,如利益相关者访谈,问卷调查,这是时间和资源密集,效率有限。然而,互联网和社交媒体的兴起为利益相关者提供了一个平台,他们可以频繁而自由地表达与组织有关的意见和经验。这些社交媒体数据虽然现在已成功地用于客户分析,但尚未被充分调查并用于了解品牌个性。我们的研究调查了组织如何有效地利用这些数据来近乎实时地生成和监控他们的品牌。我们的技术已经在高等教育机构中得到了成功的证明,因为在过去的几十年里,高等教育是一个日益暴露于商业竞争中的行业。
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