Visualizing Feature-based Similarity for Research Paper Recommendation

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BREITINGER, Corinna, Harald REITERER, 2021. Visualizing Feature-based Similarity for Research Paper Recommendation. Joint Conference on Digital Libraries, JCDL 2021. Virtual Conference, Sep 27, 2021 - Sep 30, 2021. In: DOWNIE, J. Stephen, ed. and others. 2021 ACM/IEEE Joint Conference on Digital Libraries, JCDL 2021, Virtual Conference, Hosted by the University of Illinois at Urbana-Champaign, USA, 27-30 September 2021 ; Proceedings. Piscataway, NJ:IEEE, pp. 212-221. ISBN 978-1-66541-770-9. Available under: doi: 10.1109/JCDL52503.2021.00033

@inproceedings{Breitinger2021Visua-57008, title={Visualizing Feature-based Similarity for Research Paper Recommendation}, year={2021}, doi={10.1109/JCDL52503.2021.00033}, isbn={978-1-66541-770-9}, address={Piscataway, NJ}, publisher={IEEE}, booktitle={2021 ACM/IEEE Joint Conference on Digital Libraries, JCDL 2021, Virtual Conference, Hosted by the University of Illinois at Urbana-Champaign, USA, 27-30 September 2021 ; Proceedings}, pages={212--221}, editor={Downie, J. Stephen}, author={Breitinger, Corinna and Reiterer, Harald} }

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