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Main Authors: Goel, Arnav, Chitale, Pranjal A, Paliwal, Bhawna, Santra, Bishal, Sharma, Amit
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.17259
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author Goel, Arnav
Chitale, Pranjal A
Paliwal, Bhawna
Santra, Bishal
Sharma, Amit
author_facet Goel, Arnav
Chitale, Pranjal A
Paliwal, Bhawna
Santra, Bishal
Sharma, Amit
contents User behavior in the real world is diverse, cross-domain, and spans long time horizons. Existing user modeling benchmarks however remain narrow, focusing mainly on short sessions and next-item prediction within a single domain. Such limitations hinder progress toward robust and generalizable user models. We present HORIZON, a new benchmark that reformulates user modeling along three axes i.e. dataset, task, and evaluation. Built from a large-scale, cross-domain reformulation of Amazon Reviews, HORIZON covers 54M users and 35M items, enabling both pretraining and realistic evaluation of models in heterogeneous environments. Unlike prior benchmarks, it challenges models to generalize across domains, users, and time, moving beyond standard missing-positive prediction in the same domain. We propose new tasks and evaluation setups that better reflect real-world deployment scenarios. These include temporal generalization, sequence-length variation, and modeling unseen users, with metrics designed to assess general user behavior understanding rather than isolated next-item prediction. We benchmark popular sequential recommendation architectures alongside LLM-based baselines that leverage long-term interaction histories. Our results highlight the gap between current methods and the demands of real-world user modeling, while establishing HORIZON as a foundation for research on temporally robust, cross-domain, and general-purpose user models.
format Preprint
id arxiv_https___arxiv_org_abs_2604_17259
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle HORIZON: A Benchmark for In-the-wild User Behaviour Modeling
Goel, Arnav
Chitale, Pranjal A
Paliwal, Bhawna
Santra, Bishal
Sharma, Amit
Information Retrieval
Artificial Intelligence
Computation and Language
User behavior in the real world is diverse, cross-domain, and spans long time horizons. Existing user modeling benchmarks however remain narrow, focusing mainly on short sessions and next-item prediction within a single domain. Such limitations hinder progress toward robust and generalizable user models. We present HORIZON, a new benchmark that reformulates user modeling along three axes i.e. dataset, task, and evaluation. Built from a large-scale, cross-domain reformulation of Amazon Reviews, HORIZON covers 54M users and 35M items, enabling both pretraining and realistic evaluation of models in heterogeneous environments. Unlike prior benchmarks, it challenges models to generalize across domains, users, and time, moving beyond standard missing-positive prediction in the same domain. We propose new tasks and evaluation setups that better reflect real-world deployment scenarios. These include temporal generalization, sequence-length variation, and modeling unseen users, with metrics designed to assess general user behavior understanding rather than isolated next-item prediction. We benchmark popular sequential recommendation architectures alongside LLM-based baselines that leverage long-term interaction histories. Our results highlight the gap between current methods and the demands of real-world user modeling, while establishing HORIZON as a foundation for research on temporally robust, cross-domain, and general-purpose user models.
title HORIZON: A Benchmark for In-the-wild User Behaviour Modeling
topic Information Retrieval
Artificial Intelligence
Computation and Language
url https://arxiv.org/abs/2604.17259