Academic Search is a search task aimed to manage and retrieve scientific documents like journal articles and conference papers. Personalization in this context meets individual researchers’ needs by leveraging, through user profiles, the user related information (e.g. documents authored by a researcher), to improve search effectiveness and to reduce the information overload. While citation graphs are a valuable means to support the outcome of recommender systems, their use in personalized academic search (with, e.g. nodes as papers and edges as citations) is still under-explored. Existing personalized models for academic search often struggle to fully capture users’ academic interests. To address this, we propose a two-step approach: first, training a neural language model for retrieval, then converting the academic graph into a knowledge graph and embedding it into a shared semantic space with the language model using translational embedding techniques. This allows user models to capture both explicit relationships and hidden structures in citation graphs and paper content. We evaluate our approach in four academic search domains, outperforming traditional graph-based and personalized models in three out of four, with up to a 10% improvement in MAP@100 over the second-best model. This highlights the potential of knowledge graph-based user models to enhance retrieval effectiveness.

Kasela, P., Pasi, G., Perego, R. (2025). PARK: Personalized academic retrieval with knowledge-graphs. INFORMATION SYSTEMS, 134(October–November 2025) [10.1016/j.is.2025.102574].

PARK: Personalized academic retrieval with knowledge-graphs

Pasi, Gabriella;
2025

Abstract

Academic Search is a search task aimed to manage and retrieve scientific documents like journal articles and conference papers. Personalization in this context meets individual researchers’ needs by leveraging, through user profiles, the user related information (e.g. documents authored by a researcher), to improve search effectiveness and to reduce the information overload. While citation graphs are a valuable means to support the outcome of recommender systems, their use in personalized academic search (with, e.g. nodes as papers and edges as citations) is still under-explored. Existing personalized models for academic search often struggle to fully capture users’ academic interests. To address this, we propose a two-step approach: first, training a neural language model for retrieval, then converting the academic graph into a knowledge graph and embedding it into a shared semantic space with the language model using translational embedding techniques. This allows user models to capture both explicit relationships and hidden structures in citation graphs and paper content. We evaluate our approach in four academic search domains, outperforming traditional graph-based and personalized models in three out of four, with up to a 10% improvement in MAP@100 over the second-best model. This highlights the potential of knowledge graph-based user models to enhance retrieval effectiveness.
Articolo in rivista - Articolo scientifico
Dense retrieval; Knowledge graphs; Neural information retrieval; Personalized information retrieval;
English
3-giu-2025
2025
134
October–November 2025
102574
open
Kasela, P., Pasi, G., Perego, R. (2025). PARK: Personalized academic retrieval with knowledge-graphs. INFORMATION SYSTEMS, 134(October–November 2025) [10.1016/j.is.2025.102574].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/592304
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