与人工智能竞争——记录和信息管理行业能否经受住挑战?

IF 0.8 Q3 INFORMATION SCIENCE & LIBRARY SCIENCE
S. Xie, Li Siyi, Ruohua Han
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引用次数: 0

摘要

本研究的目的是报告一项关于记录和信息管理(RIM)行业在人工智能发展方面的能力的研究。设计/方法/方法:本研究采用演绎法设计,从牛津大学的研究中提炼出人工智能(AI)不敏感性指标、创造性智能和社会智能,并将其应用于ARMA International开发的当前RIM核心竞争力。手工编码和语义分析是主要的查询方法,给出了统计和定性结果。研究结果:目前,整个RIM行业都在抵制人工智能,但它并不是完全防人工智能的。为了证明人工智能,现有的胜任力模型需要重新设计,因为人工智能的抵抗部分和人工智能的倾向部分混合在一起,一些RIM理论和原则的处方不适合人工智能的判断或调整。它还需要为所有利益相关者之间的合作制定战略,以便我们能够在未来不利的组织决策之前抢先一步。如果说我们的专业性质让我们现在能够抵抗人工智能,那么我们的专业团结将确保我们在未来能够抵御人工智能。原创性/价值据作者所知,这篇论文在国际RIM社区中是第一篇。它提供了详细的AI不敏感性评估数据和针对整个RIM社区的针对性建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Competing with artificial intelligence – can the records and information management profession withstand the challenge?
Purpose The purpose of this study is to report on a study that focused on the records and information management (RIM) profession’s competencies with respect to the development of AI. Design/methodology/approach Designed as deductive, the study distilled artificial intelligence (AI) insusceptibility indicators, creative intelligence and social intelligence, from the Oxford study and applied them to the current RIM core competencies developed by ARMA International. Manual coding and semantic analysis served as the primary inquiring methods, and both statistical and qualitative results are presented. Findings The RIM profession as a whole is currently AI-resistant, yet it is not AI-proof. To be AI-proof, the existent competencies model needs to be redesigned as the AI-resistant parts are mingled with AI-prone ones, and the prescriptions of some RIM theories and principles are not ready for AI judgements or adjustments. It requires also strategizing collaborations among all stakeholders so that we can be one step ahead of future unfavorable organizational decisions. If our professional nature renders us AI-resistant for now, then it is our professional unity that will ensure us AI-proof in the future. Originality/value To the best of the authors’ knowledge, this paper is first of its kind within the international RIM community. It provides detailed assessment data on AI insusceptibility and targeted suggestions regarding the RIM community as a whole.
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来源期刊
Records Management Journal
Records Management Journal INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
3.50
自引率
7.10%
发文量
11
期刊介绍: ■Electronic records management ■Effect of government policies on record management ■Strategic developments in both the public and private sectors ■Systems design and implementation ■Models for records management ■Best practice, standards and guidelines ■Risk management and business continuity ■Performance measurement ■Continuing professional development ■Consortia and co-operation ■Marketing ■Preservation ■Legal and ethical issues
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