Towards Self-organizing Personal Knowledge Assistants in Evolving
Corporate Memories
- URL: http://arxiv.org/abs/2308.01732v1
- Date: Thu, 3 Aug 2023 12:48:32 GMT
- Title: Towards Self-organizing Personal Knowledge Assistants in Evolving
Corporate Memories
- Authors: Christian Jilek, Markus Schr\"oder, Heiko Maus, Sven Schwarz, Andreas
Dengel
- Abstract summary: This paper presents a retrospective overview of a decade of research in our department towards self-organizing personal knowledge assistants.
Our research is typically inspired by real-world problems and often conducted in interdisciplinary collaborations with research and industry partners.
- Score: 3.555368338253582
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper presents a retrospective overview of a decade of research in our
department towards self-organizing personal knowledge assistants in evolving
corporate memories. Our research is typically inspired by real-world problems
and often conducted in interdisciplinary collaborations with research and
industry partners. We summarize past experiments and results comprising topics
like various ways of knowledge graph construction in corporate and personal
settings, Managed Forgetting and (Self-organizing) Context Spaces as a novel
approach to Personal Information Management (PIM) and knowledge work support.
Past results are complemented by an overview of related work and some of our
latest findings not published so far. Last, we give an overview of our related
industry use cases including a detailed look into CoMem, a Corporate Memory
based on our presented research already in productive use and providing
challenges for further research. Many contributions are only first steps in new
directions with still a lot of untapped potential, especially with regard to
further increasing the automation in PIM and knowledge work support.
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