Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Public Profile Matters: A Scalable Integrated Approach to Recommend Citations in the Wild

About

Proper citation of relevant literature is essential for contextualising and validating scientific contributions. While current citation recommendation systems leverage local and global textual information, they often overlook the nuances of the human citation behaviour. Recent methods that incorporate such patterns improve performance but incur high computational costs and introduce systematic biases into downstream rerankers. To address this, we propose Profiler, a lightweight, non-learnable module that captures human citation patterns efficiently and without bias, significantly enhancing candidate retrieval. Furthermore, we identify a critical limitation in current evaluation protocol: the systems are assessed in a transductive setting, which fails to reflect real-world scenarios. We introduce a rigorous Inductive evaluation setting that enforces strict temporal constraints, simulating the recommendation of citations for newly authored papers in the wild. Finally, we present DAVINCI, a novel reranking model that integrates profiler-derived confidence priors with semantic information via an adaptive vector-gating mechanism. Our system achieves new state-of-the-art results across multiple benchmark datasets, demonstrating superior efficiency and generalisability.

Karan Goyal, Dikshant Kukreja, Vikram Goyal, Mukesh Mohania• 2026

Related benchmarks

TaskDatasetResultRank
Citation RecommendationACL-200
MRR50.31
5
Citation RecommendationFullTextPeerRead
MRR59.68
5
Citation RecommendationRefseer
MRR32.57
5
Citation RecommendationarXiv
MRR30.46
5
Citation RecommendationArSyTa
MRR24.01
5
Showing 5 of 5 rows

Other info

Follow for update