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A Comparison of Citation Metrics to Machine Learning Filters for the Identification of High Quality MEDLINE Documents
25
Zitationen
3
Autoren
2006
Jahr
Abstract
These experiments provide evidence that when building information retrieval filters focused on a retrieval task and corresponding gold standard, the filter models have to be built specifically for this task and gold standard. Under those conditions, machine learning filters outperform standard citation metrics. Furthermore, citation counts and impact factors add marginal value to discriminatory performance. Previous research that claimed better performance of citation metrics than machine learning in one of the corpora examined here is attributed to using machine learning filters built for a different gold standard and task.
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