To help generate relevant suggestions for researchers, recommen-dation systems have started to leverage the latent interests in the publication profiles of the researchers themselves. While using such a publication citation network has been shown to enhance performance, the network is often sparse, making recommendation difficult. To alleviate this sparsity, we identify “potential citation papers ” through the use of collaborative filtering. Also, as differ-ent logical sections of a paper have different significance, as a sec-ondary contribution, we investigate which sections of papers can be leveraged to represent papers effectively. On a scholarly paper recommendation dataset, we show that rec-ommendation accuracy significantly outperform...