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LIMES 1.0.0 Released

Dear all, the LIMES Dev team is happy to announce LIMES 1.0.0. LIMES, the Li nk Discovery Framework for Me tric S paces, is a link discovery framework for the Web of Data. It implements time-efficient approaches for large-scale link discovery based on the characteristics of metric spaces. Our approaches facilitate different approximation techniques to compute estimates of the similarity between instances.
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