Matches in ScholarlyData for { <https://w3id.org/scholarlydata/inproceedings/www2010/paper/main/1065> ?p ?o. }
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- 1065 creator c-lee-giles.
- 1065 creator daniel-kifer.
- 1065 creator jian-pei.
- 1065 creator prasenjit-mitra.
- 1065 creator qi-he.
- 1065 type InProceedings.
- 1065 label "Context-aware Citation Recommendation".
- 1065 sameAs 1065.
- 1065 abstract "When you write papers, how many times do you want to make some citations at a place but you are not sure which papers to cite? Do you wish to have a recommendation system which can recommend a small number of good candidates for every place that you want to make some citations? In this paper, we present our initiative of building a context-aware citation recommendation system. High quality citation recommendation is challenging: not only should the citations recommended be relevant to the paper under composition, but also should match the local contexts of the places citations are made. Moreover, it is far from trivial to model how the topic of the whole paper and the contexts of the citation places should affect the selection and ranking of citations. To tackle the problem, we develop a context-aware approach. The core idea is to design a novel non-parametric probabilistic model which can measure the context-based relevance between a citation context and a document. Our approach can recommend citations for a context effectively. Moreover, it can recommend a set of citations for a paper with high quality. We implement a prototype system in CiteSeerX. An extensive empirical evaluation in the CiteSeerX digital library against many baselines demonstrates the effectiveness and the scalability of our approach.".
- 1065 hasAuthorList authorList.
- 1065 isPartOf proceedings.
- 1065 keyword "Personalization".
- 1065 keyword "recommendation systems".
- 1065 title "Context-aware Citation Recommendation".