As part of the Heritage Connector project we've built a knowledge graph from the Science Museum Group and V&A collections using machine learning techniques.
This is an experimental interface designed to let you explore the connections in this knowledge graph, in a way that feels familiar.
The Open Definition makes precise the meaning of “open” with respect to knowledge, promoting a robust commons in which anyone may participate, and interoperability is maximized.
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D. Knoell, M. Atzmueller, C. Rieder, und K. Scherer. Proc. GWEM 2017, co-located with 9th Conference Professional Knowledge Management (WM 2017), Karlsruhe, Germany, KIT, ((In Press) 2017)
D. Knoell, M. Atzmueller, C. Rieder, und K. Scherer. Proc. GWEM 2017, co-located with 9th Conference Professional Knowledge Management (WM 2017), Karlsruhe, Germany, KIT, (2017)
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