自然语言处理和机器学习作为档案处理的实用工具集

IF 0.8 Q3 INFORMATION SCIENCE & LIBRARY SCIENCE
T. Hutchinson
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引用次数: 17

摘要

本研究旨在概述与应用于档案处理的自然语言处理(NLP)和机器学习相关的最新工作,特别是评估和敏感性审查,并提出这些工具从实验过渡到操作使用的功能需求和工作流程考虑。设计/方法/方法本文主要有四个部分。1)论文中提到的NLP和机器学习概念的简要概述。2)对NLP和机器学习应用于档案处理的文献报道进行综述。3)概述和评论现有的和正在开发的使用NLP或机器学习技术的档案工具。4)本综述和分析将讨论用于档案处理的NLP和机器学习工具的功能需求和工作流程考虑。到目前为止,处理电子邮件的应用程序受到了最多的关注,尽管大多数计划都是实验性的或基于项目的。现在看来,扩展到开发更通用的工具来处理原生的数字、非结构化记录似乎是可行的。有效的档案处理NLP和机器学习工具应该是可用的、可互操作的、灵活的、迭代的和可配置的。大多数档案的NLP实现都是实验性的或基于项目的。已经投入生产的主要例外是ePADD,它通过其命名的实体识别模块包含了强大的NLP功能。本文采取了更广泛的观点,评估了将NLP工具和技术集成到档案工作流程中的前景和可能的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Natural language processing and machine learning as practical toolsets for archival processing
PurposeThis study aims to provide an overview of recent efforts relating to natural language processing (NLP) and machine learning applied to archival processing, particularly appraisal and sensitivity reviews, and propose functional requirements and workflow considerations for transitioning from experimental to operational use of these tools.Design/methodology/approachThe paper has four main sections. 1) A short overview of the NLP and machine learning concepts referenced in the paper. 2) A review of the literature reporting on NLP and machine learning applied to archival processes. 3) An overview and commentary on key existing and developing tools that use NLP or machine learning techniques for archives. 4) This review and analysis will inform a discussion of functional requirements and workflow considerations for NLP and machine learning tools for archival processing.FindingsApplications for processing e-mail have received the most attention so far, although most initiatives have been experimental or project based. It now seems feasible to branch out to develop more generalized tools for born-digital, unstructured records. Effective NLP and machine learning tools for archival processing should be usable, interoperable, flexible, iterative and configurable.Originality/valueMost implementations of NLP for archives have been experimental or project based. The main exception that has moved into production is ePADD, which includes robust NLP features through its named entity recognition module. This paper takes a broader view, assessing the prospects and possible directions for integrating NLP tools and techniques into archival workflows.
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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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