Deep Transfer Learning & Beyond: Transformer Language Models in Information Systems Research

Ross Gruetzemacher, D. Paradice
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引用次数: 8

Abstract

AI is widely thought to be poised to transform business, yet current perceptions of the scope of this transformation may be myopic. Recent progress in natural language processing involving transformer language models (TLMs) offers a potential avenue for AI-driven business and societal transformation that is beyond the scope of what most currently foresee. We review this recent progress as well as recent literature utilizing text mining in top IS journals to develop an outline for how future IS research can benefit from these new techniques. Our review of existing IS literature reveals that suboptimal text mining techniques are prevalent and that the more advanced TLMs could be applied to enhance and increase IS research involving text data, and to enable new IS research topics, thus creating more value for the research community. This is possible because these techniques make it easier to develop very powerful custom systems and their performance is superior to existing methods for a wide range of tasks and applications. Further, multilingual language models make possible higher quality text analytics for research in multiple languages. We also identify new avenues for IS research, like language user interfaces, that may offer even greater potential for future IS research.
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深度迁移学习及超越:信息系统研究中的转换语言模型
人们普遍认为人工智能将改变商业,但目前对这种转变范围的看法可能是短视的。涉及转换语言模型(tlm)的自然语言处理的最新进展为人工智能驱动的商业和社会转型提供了一条潜在的途径,这超出了目前大多数人预见的范围。我们回顾了最近的进展,以及最近在顶级IS期刊上利用文本挖掘的文献,为未来的IS研究如何从这些新技术中受益制定了一个大纲。我们对现有信息系统文献的回顾表明,次优文本挖掘技术普遍存在,更先进的tlm可以应用于加强和增加涉及文本数据的信息系统研究,并使新的信息系统研究课题成为可能,从而为研究界创造更多价值。这是可能的,因为这些技术使开发非常强大的自定义系统变得更容易,并且它们的性能优于现有的方法,适用于广泛的任务和应用。此外,多语言模型可以为多语言研究提供更高质量的文本分析。我们还确定了信息系统研究的新途径,如语言用户界面,这可能为未来的信息系统研究提供更大的潜力。
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