CFP: 9th Computational Archival Science (CAS) workshop in Washington DC, Nov. 4, 2024

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Richard Marciano

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Jun 11, 2024, 9:04:07 AMJun 11
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We will be hosting the 9th CAS workshop in Washington DC, USA, mid-December.

9th COMPUTATIONAL ARCHIVAL SCIENCE (CAS) WORKSHOP

https://ai-collaboratory.net/2024/05/25/9th-cas-workshop-in-washington-d-c-in-dec-2024/ 

Part of: 2024 IEEE Big Data Conference (IEEE BigData 2024) — 
https://www3.cs.stonybrook.edu/~ieeebigdata2024/ (Washington D.C., USA) - Dec. 15-18, 2024

IMPORTANT DEADLINES:

  • Monday, Nov. 4, 2024 (final): Due date for full workshop papers submission
  • Friday, Nov 15, 2024: Notification of paper acceptance to authors
  • Wednesday, Nov 20, 2024 (hard deadline): Camera-ready of accepted papers
  • Sunday, Dec 16, 2023: Day-long workshop (in person) in Washington, D.C. USA
    • If you are planning on attending the workshopplease contact organizers for registration details!

PAPER SUBMISSION:


COMPUTATIONAL ARCHIVAL SCIENCE: digital records in the age of big data

INTRODUCTION TO WORKSHOP [also see our CAS Portal]:

The large-scale digitization of analogue archives, the emerging diverse forms of born-digital archive, and the new ways in which researchers across disciplines (as well as the public)wish to engage with archival material, are resulting in disruptions to transitional archival theories and practices. Increasing quantities of ‘big archival data’ present challenges for the practitioners and researchers who work with archival material, but also offer enhanced possibilities for scholarship, through the application both of computational methods and tools to the archival problem space and of archival methods and tools to computational problems such as trusted computing, as well as, more fundamentally, through the integration of computational thinking with archival thinking.


Our definition of Archival Computational Science (CAS) is:·          

    • Computational Archival Science (CAS) is defined as a transdisciplinary field grounded in archival, information, and computational science that is concerned with the application of computational methods and resources, design patterns, sociotechnical constructs, and human-technology interaction, to large-scale (big data) records/archives processing, analysis, storage, long-term preservation, and access problems, with the aim of improving and optimizing efficiency, authenticity, truthfulness, provenance, productivity, computation, information structure and design, precision, and human technology interaction in support of acquisition, appraisal, arrangement and description, preservation, communication, transmission, analysis, and access decisions.

OBJECTIVES

This workshop will explore the conjunction (and its consequences) of emerging methods and technologies around big data with archival practice (including record keeping) and new forms of analysis and historical, social, scientific, and cultural research engagement with archives.We aim to identify and evaluate current trends, requirements, and potential in these areas, to examine the new questions that they can provoke, and to help determine possible research agendas for the evolution of computational archival science in the coming years. At the same time, we will address the questions and concerns scholarship is raising about the interpretation of ‘big data’ and the uses to which it is put, in particular appraising the challenges of producing quality–meaning, knowledge and value–from quantity, tracing data and analytic provenance across complex ‘big data’ platforms and knowledge production ecosystems, and addressing data privacy issues.

This will be the 9th workshop at IEEE Big Data addressing Computational Archival Science (CAS), following on from workshops in 20162017201820192020, 20212022, and 2023. It also builds on three earlier workshops on ‘Big Humanities Data’ organized by the same chairs at the 2013-2015 conferences, and more directly on a 2016 symposium held in April 2016 at the University of Maryland.

All papers accepted for the workshop will be included in the Conference Proceedings published by the IEEE Computer Society Press. In addition to standard papers, the workshop (and the call for papers) will incorporate a student poster session for PhD and Master’s level students.


RESEARCH TOPICS COVERED:
Topics covered by the workshop include, but are not restricted to, the following:

·          

    • Application of analytics to archival material, including AI, ML, Generative AI, text-mining, data-mining, sentiment analysis, and network analysis.
    • Analytics in support of archival processing, including e-discovery, identification of personal information, appraisal, arrangement, and description.
    • Scalable services for archives, including identification, preservation, metadata generation, integrity checking, normalization, reconciliation, linked data, entity extraction, anonymization, and reduction.
    • New forms of archives, including Web, social media, audiovisual archives, and blockchain.
    • Cyber-infrastructures for archive-based research and for development and hosting of collections
    • Big data and archival theory and practice
    • Digital curation and preservation
    • Crowd-sourcing and archives
    • Big data and the construction of memory and identity
    • Specific big data technologies (e.g. NoSQL databases) and their applications
    • Corpora and reference collections of big archival data
    • Linked data and archives
    • Big data and provenance
    • Constructing big data research objects from archives
    • Legal and ethical issues in big data archives

PROGRAM CHAIRS:
Dr. Mark Hedges
Department of Digital Humanities (DDH)
King’s College London, UK

Prof. Victoria Lemieux
School of Information
University of British Columbia, CANADA

Prof. Richard Marciano
Advanced Information Collaboratory (AIC)
College of Information Studies
University of Maryland, USA

PROGRAM COMMITTEE MEMBERS:
Dr. Sarah Buchanan
Library and Information Science

iSchool
University of Missouri, USA

Mark Conrad
Advanced Information Collaboratory (AIC)
College of Information
University of Maryland, USA

Dr. Anne J. Gilliland
Center for Information as Evidence (CIE)
School of Education and Information Science
UCLA, USA

Dr. Jane Greenberg
Alice B. Kroeger Professor and Director, Metadata Research Center
College of Computing & Informatics

Drexel University, USA

Dr. Lise Jaillant
Communication and Media
School of Social Sciences and Humanities
Loughborough University, UK

Gregory Jansen
Advanced Information Collaboratory (AIC)
College of Information
University of Maryland, USA

Rajesh Kumar Gnanasekaran
Advanced Information Collaboratory (AIC)
College of Information
University of Maryland, USA

Dr. Nathaniel Payne
Advanced Information Collaboratory (AIC)
Dygital9 and NOQii & Contivos
University of British Columbia, CANADA

Lori Perine
Advanced Information Collaboratory (AIC)
College of Information
University of Maryland, USA

Jennifer Proctor
Advanced Information Collaboratory (AIC)
College of Information
University of Maryland, USA

Dr. Bill Underwood
Advanced Information Collaboratory (AIC)
College of Information
University of Maryland, USA

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