ABSTRACT
We present the Community Digital Library (CDL), a novel and extensible platform for collaborative information seeking which enables any group of users to (1) describe and save webpages relevant to their shared interests, (2) share and search the saved webpages, and (3) discover content via recommendation. The CDL is free-to-use, can be accessed online, and the source code is publicly available.
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