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LP-32: Open Data, Interpretation and Curation
Time:
Friday, 18/July/2025:
2:00pm - 3:30pm
Session Chair: Julia Matveeva , University of Turku
Location: B207 (TB) Zoom link to be included 64 places
Presentations
Open archaeology in Catalonia: challenges, barriers, and potential solutions
Sabina Batlle Baró
Universitat de Barcelona, Spain
This presentation explores the challenges and opportunities of implementing open data in Catalan archaeology. It examines the current infrastructure, researchers' practices, and barriers to data openness. The study provides recommendations to promote a new research culture, with the goal to lead a smooth transition to open archaeological research.
Postclassical Time Maps: Theory and Interpretation
Sean A. Yeager
Kenyon College
I build on my previous research on "time maps" by expanding their theory and demonstrating their interpretive utility. Time maps are the graphs which are produced when a narrative’s fabula is plotted against its syuzhet. I introduce three advanced theoretical concepts, then use time maps to close-read several narratives.
Subset Selection in Bibliographic Research: Exploring the Boundaries of Automated and Manual Curation
Julia Matveeva 1 , Veli-Matti Pynttäri2 , Osma Suominen3 , Kati Launis2 , Leo Lahti1
1 University of Turku, Finland; 2 University of Eastern Finland; 3 The National Library of Finland
This study examines subset selection in bibliographic research, focusing on Finnish literary history (1809–1917). Comparing manual and automated curation, we highlight their respective strengths and limitations. We propose a hybrid approach combining automation for scalability and manual curation for precision. Our findings enhance transparency, accuracy, and reproducibility in literary datasets.