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Publication

Automated Metadata Extraction: Challenges and Opportunities

by Tyler J Skluzacek, Ian Foster, Kyle Chard
Publication Type
Conference Paper
Book Title
2nd Workshop on E-science ReseaRch leading tO negative Results (ERROR 2022)
Publication Date
Page Numbers
1 to 6
Publisher Location
New Jersey, United States of America
Conference Name
2nd Workshop on E-science ReseaRch leading tO negative Results (ERROR 2022)
Conference Location
Salt Lake City, Utah, United States of America
Conference Sponsor
IEEE
Conference Date
-
Proper application of the FAIR data principles is what separates a vibrant data ecosystem, in which research data are frequently shared and reused, from a lifeless data graveyard. Automated metadata extraction systems have been proposed as a means of bolstering the findability, interoperability, and reusabil- ity of data repositories with little or no human intervention. These extraction systems mine metadata by crawling a repository and applying lightweight extractors that, for various types of file (e.g., image, CSV file), extract or synthesize relevant attributes. In practice, however, the automated creation of generally useful metadata is fraught with challenges. Data consumers may have different perspectives as to what metadata representations are useful, the standards for recording metadata tend to change over time, and the software model for processing updates can introduce unnecessary human and computational effort. Thus, generalizing extraction for a broad audience of data consumers is a difficult and relatively unsolved problem. In this work, we explore these challenges faced by extraction systems in the context of constructing our own extraction system for science data. We first define the metadata extraction problem and provide context to the issues faced in generalizing metadata. Additionally, we identify potential research directions to help alleviate many of these challenges for all automated extraction systems. Ultimately, this work represents a first step in designing ubiquitous metadata extraction systems that can maximize the value of research data while minimizing the human efforts required in doing so.