新互联网革命下下一代数字趋势的LDA主题建模,Metaverse

Kiyoung Kim
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摘要

本研究的目的是通过基于大数据分析的LDA主题建模,探索Z代和Alpha代用户群体对每个独特主题在元宇宙上的趋势。本研究通过发现用户体验的内在价值和体验价值,超越了虚拟世界的技术视角,为虚拟世界寻求新的可持续发展方向。新冠疫情的影响、计算机图形学和基础设施的技术进步、Z世代和Alpha世代等数字世代用户群的扩大,推动了全球对虚拟世界的热情。自2021年以来,对元宇宙的研究一直在增加,但下一代数字用户的代际子群体对元宇宙的理论方法仍然不足。考虑到研究课题的时效性,本研究将下一代用户细分为Z一代和Alpha一代,以发现每一代用户在元宇宙方面的特征。在分析过程中,通过对非结构化大数据进行文本挖掘分析,识别单词的重要性和相关性。接下来,通过LDA主题建模和可视化分析,基于单词口袋来解释每个主题组的含义,单词口袋是每个主题具有互斥唯一性的相关单词。使用Python 3.10和texttom 6版本软件进行分析。本研究将为多元用户群对元宇宙的可持续性和利用提供有意义的学术和实践见解。关键词:大数据,数据挖掘,LDA主题建模,元宇宙,数字生成
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LDA Topic Modeling on the Trends of the Next Digital Generation on the New Internet Revolution, Metaverse
The purpose of this study is to explore the trends of the Z and Alpha generation user groups on the metaverse for each unique topic by using LDA topic modeling based on big data analysis. This study seeks a new sustainability direction for the metaverse by discovering the internal and experiential value of users' experiences beyond the technical perspective of the metaverse. The worldwide enthusiasm for the metaverse was driven by the impact of the COVID-19 pandemic, technological advances in computer graphics and infrastructure, and the expansion of the digital generation user base such as generation Z and Alpha. Research on the metaverse has been increasing since 2021, but theoretical approaches by generational subgroups of nextgeneration digital users on the metaverse are still insufficient. Considering the timeliness of the research topic, this study subdivides the next-generation users into two groups, the Z generation and the Alpha generation, to discover the characteristics of each generation regarding the metaverse. In the process of analysis, the importance and relevance of words were identified by text mining analysis of unstructured big data. Next, through LDA topic modeling and visualization analysis, the meaning of each topic group was interpreted based on word pockets, which are related words that have mutually exclusive uniqueness for each topic. Python 3.10 and Textom 6 version software were used for analysis. This study will present meaningful academic and practical insights into the sustainability and utilization of the metaverse by a diverse user base. Keywords—Big data, Data mining, LDA Topic Modeling, Metaverse, Digital Generation
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