用于高效和标准化档案处理的自适应学习模型

IF 2.1 Q2 INFORMATION SCIENCE & LIBRARY SCIENCE
J. A. Pryse
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引用次数: 0

摘要

将自适应学习模型开发集成到档案处理中为解决诸如劳动密集型手工任务、缺乏一致性和无效反馈集成等挑战提供了令人兴奋的机会。该试点项目探索了自适应学习模型和自然语言处理(NLP)技术的实际应用,以简化档案工作流程,提高数据精度,并始终如一地实施改进的最佳实践和标准。本研究概述了所用的方法和框架,提出了一种改进的自动档案处理模型。此外,该研究还调查了大型数字项目对档案科学未来的更广泛影响。在几分钟内快速处理大量打字和手写文本的能力,传统上需要几个小时、几天甚至几个月的时间。这一过程是档案学领域的重大突破。这一新的发展不仅使处理收藏变得更容易,而且改变了我们规范和管理档案的方式,使每个人都能更有效地访问这个过程。我们可以通过加速文本分析、解释和精炼控制术语来有效地识别模式、实体、主题和策略。这反过来又大大增强了我们分享信息的能力,放大了技术的价值和影响。通过严格和广泛测试的建模,该系统增强了内部数据链接,并建立了强大的外部连接,大大增强了我们管理和利用档案信息的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Adaptive learning models for efficient and standardized archival processes

Adaptive learning models for efficient and standardized archival processes

Integrating adaptive learning model development into archival processing presents an exciting opportunity to tackle challenges such as labor-intensive manual tasks, lack of uniformity, and ineffective feedback integration. This pilot project explores the practical application of adaptive learning models and natural language processing (NLP) techniques to streamline archival workflows, improve data precision, and consistently implement improved best practices and standards. This research presents an overview of the methodologies and frameworks used, presenting an improved model for automated archival processing. In addition, the research investigates the wider impact of large-scale digital projects on the future of archival science. The capability to quickly process extensive amounts of both typewritten and handwritten text within minutes that traditionally have taken hours, days, or even months. This process is a major breakthrough in the field of archival science. This new development not only makes it easier to handle collections but also changes how we standardize and manage archives, making the process more efficient and accessible for everyone. We can identify patterns, entities, subjects, and policies effectively by accelerating text analysis, interpretation, and refining control terminology. This, in turn, significantly enhances our ability to share information, amplifying the value and impact of the technology. Through rigorous and extensively tested modeling, this system enhances internal data linkage and establishes robust external connections, significantly amplifying our capacity to manage and utilize archival information.

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来源期刊
ARCHIVAL SCIENCE
ARCHIVAL SCIENCE INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
2.70
自引率
18.20%
发文量
26
期刊介绍: Archival Science promotes the development of archival science as an autonomous scientific discipline. The journal covers all aspects of archival science theory, methodology, and practice. Moreover, it investigates different cultural approaches to creation, management and provision of access to archives, records, and data. It also seeks to promote the exchange and comparison of concepts, views and attitudes related to recordkeeping issues around the world.Archival Science''s approach is integrated, interdisciplinary, and intercultural. Its scope encompasses the entire field of recorded process-related information, analyzed in terms of form, structure, and context. To meet its objectives, the journal draws from scientific disciplines that deal with the function of records and the way they are created, preserved, and retrieved; the context in which information is generated, managed, and used; and the social and cultural environment of records creation at different times and places.Covers all aspects of archival science theory, methodology, and practiceInvestigates different cultural approaches to creation, management and provision of access to archives, records, and dataPromotes the exchange and comparison of concepts, views, and attitudes related to recordkeeping issues around the worldAddresses the entire field of recorded process-related information, analyzed in terms of form, structure, and context
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