his paper presents the solution developed by the EmbedNBreakfast team for the ACM RecSys Challenge 2025, for the construction of Universal Behavioral Profiles: general-purpose user representations derived from historical interactions. We propose a representation-learning framework that combines Recurrent Neural Networks, attention mechanisms, and collaborative filtering to jointly optimize embeddings across several predictive objectives. Our method achieved 2nd place on the Academic Leaderboard and 5th Overall, demonstrating the effectiveness of unified, representation-based modeling for diverse behavior prediction tasks.

From Sequences to Profiles: Generating Universal Behavioral Profiles exploiting Recurrent Neural Networks / Colecchia, Simone; Orazio Drago, Mauro; Founoun, Jihad; Gennaro, Paolo; Natuzzi, Ernesto; Pagano, Luca; Shaffaf, Sajjad; Vitello, Giuseppe; Pisani, Andrea; Ferrari Dacrema, Maurizio. - (2025), pp. 31-35. (Intervento presentato al convegno RecSysChallenge '25: ACM RecSys Challenge 2025 tenutosi a Prague (CZ) nel 22 September 2025) [10.1145/3758126.3758133].

From Sequences to Profiles: Generating Universal Behavioral Profiles exploiting Recurrent Neural Networks

Andrea Pisani;
2025

Abstract

his paper presents the solution developed by the EmbedNBreakfast team for the ACM RecSys Challenge 2025, for the construction of Universal Behavioral Profiles: general-purpose user representations derived from historical interactions. We propose a representation-learning framework that combines Recurrent Neural Networks, attention mechanisms, and collaborative filtering to jointly optimize embeddings across several predictive objectives. Our method achieved 2nd place on the Academic Leaderboard and 5th Overall, demonstrating the effectiveness of unified, representation-based modeling for diverse behavior prediction tasks.
2025
979-8-4007-2099-4
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/3004190