date: 2022-06-04T10:05:18Z pdf:unmappedUnicodeCharsPerPage: 0 pdf:PDFVersion: 1.7 pdf:docinfo:title: Digital Perspectives in History xmp:CreatorTool: LaTeX with hyperref Keywords: computational history; digital humanities; digital database; network analysis; machine learning; sustainable research data; transparency; digital hermeneutics access_permission:modify_annotations: true access_permission:can_print_degraded: true subject: This article outlines the state of digital perspectives in historical research, some of the methods and tools in use by digital historians, and the possible or even necessary steps in the future development of the digital approach. We begin by describing three main computational approaches: digital databases and repositories, network analysis, and Machine Learning. We also address data models and ontologies in the larger context of the demand for sustainability and linked research data. The section is followed by a discussion of the (much needed) standards and policies concerning data quality and transparency. We conclude with a consideration of future scenarios and challenges for computational research. dc:creator: Anna Siebold and Matteo Valleriani dcterms:created: 2022-06-04T09:58:25Z Last-Modified: 2022-06-04T10:05:18Z dcterms:modified: 2022-06-04T10:05:18Z dc:format: application/pdf; version=1.7 title: Digital Perspectives in History Last-Save-Date: 2022-06-04T10:05:18Z pdf:docinfo:creator_tool: LaTeX with hyperref access_permission:fill_in_form: true pdf:docinfo:keywords: computational history; digital humanities; digital database; network analysis; machine learning; sustainable research data; transparency; digital hermeneutics pdf:docinfo:modified: 2022-06-04T10:05:18Z meta:save-date: 2022-06-04T10:05:18Z pdf:encrypted: false dc:title: Digital Perspectives in History modified: 2022-06-04T10:05:18Z cp:subject: This article outlines the state of digital perspectives in historical research, some of the methods and tools in use by digital historians, and the possible or even necessary steps in the future development of the digital approach. We begin by describing three main computational approaches: digital databases and repositories, network analysis, and Machine Learning. We also address data models and ontologies in the larger context of the demand for sustainability and linked research data. The section is followed by a discussion of the (much needed) standards and policies concerning data quality and transparency. We conclude with a consideration of future scenarios and challenges for computational research. pdf:docinfo:subject: This article outlines the state of digital perspectives in historical research, some of the methods and tools in use by digital historians, and the possible or even necessary steps in the future development of the digital approach. We begin by describing three main computational approaches: digital databases and repositories, network analysis, and Machine Learning. We also address data models and ontologies in the larger context of the demand for sustainability and linked research data. The section is followed by a discussion of the (much needed) standards and policies concerning data quality and transparency. We conclude with a consideration of future scenarios and challenges for computational research. Content-Type: application/pdf pdf:docinfo:creator: Anna Siebold and Matteo Valleriani X-Parsed-By: org.apache.tika.parser.DefaultParser creator: Anna Siebold and Matteo Valleriani meta:author: Anna Siebold and Matteo Valleriani dc:subject: computational history; digital humanities; digital database; network analysis; machine learning; sustainable research data; transparency; digital hermeneutics meta:creation-date: 2022-06-04T09:58:25Z created: 2022-06-04T09:58:25Z access_permission:extract_for_accessibility: true access_permission:assemble_document: true xmpTPg:NPages: 8 Creation-Date: 2022-06-04T09:58:25Z pdf:charsPerPage: 3722 access_permission:extract_content: true access_permission:can_print: true meta:keyword: computational history; digital humanities; digital database; network analysis; machine learning; sustainable research data; transparency; digital hermeneutics Author: Anna Siebold and Matteo Valleriani producer: pdfTeX-1.40.21 access_permission:can_modify: true pdf:docinfo:producer: pdfTeX-1.40.21 pdf:docinfo:created: 2022-06-04T09:58:25Z