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Hauptverfasser: He, Jingyuan, Liu, Jiongnan, Oberoi, Vishan Vishesh, Wu, Bolin, Patel, Mahima Jagadeesh, Mao, Kangrui, Shi, Chuning, Lee, I-Ta, Overwijk, Arnold, Xiong, Chenyan
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2510.26095
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author He, Jingyuan
Liu, Jiongnan
Oberoi, Vishan Vishesh
Wu, Bolin
Patel, Mahima Jagadeesh
Mao, Kangrui
Shi, Chuning
Lee, I-Ta
Overwijk, Arnold
Xiong, Chenyan
author_facet He, Jingyuan
Liu, Jiongnan
Oberoi, Vishan Vishesh
Wu, Bolin
Patel, Mahima Jagadeesh
Mao, Kangrui
Shi, Chuning
Lee, I-Ta
Overwijk, Arnold
Xiong, Chenyan
contents Recommender systems are among the most impactful AI applications, interacting with billions of users every day, guiding them to relevant products, services, or information tailored to their preferences. However, the research and development of recommender systems are hindered by existing datasets that fail to capture realistic user behaviors and inconsistent evaluation settings that lead to ambiguous conclusions. This paper introduces the Open Recommendation Benchmark for Reproducible Research with HIdden Tests (ORBIT), a unified benchmark for consistent and realistic evaluation of recommendation models. ORBIT offers a standardized evaluation framework of public datasets with reproducible splits and transparent settings for its public leaderboard. Additionally, ORBIT introduces a new webpage recommendation task, ClueWeb-Reco, featuring web browsing sequences from 87 million public, high-quality webpages. ClueWeb-Reco is a synthetic dataset derived from real, user-consented, and privacy-guaranteed browsing data. It aligns with modern recommendation scenarios and is reserved as the hidden test part of our leaderboard to challenge recommendation models' generalization ability. ORBIT measures 12 representative recommendation models on its public benchmark and introduces a prompted LLM baseline on the ClueWeb-Reco hidden test. Our benchmark results reflect general improvements of recommender systems on the public datasets, with variable individual performances. The results on the hidden test reveal the limitations of existing approaches in large-scale webpage recommendation and highlight the potential for improvements with LLM integrations. ORBIT benchmark, leaderboard, and codebase are available at https://www.open-reco-bench.ai.
format Preprint
id arxiv_https___arxiv_org_abs_2510_26095
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle ORBIT -- Open Recommendation Benchmark for Reproducible Research with Hidden Tests
He, Jingyuan
Liu, Jiongnan
Oberoi, Vishan Vishesh
Wu, Bolin
Patel, Mahima Jagadeesh
Mao, Kangrui
Shi, Chuning
Lee, I-Ta
Overwijk, Arnold
Xiong, Chenyan
Information Retrieval
Computation and Language
Recommender systems are among the most impactful AI applications, interacting with billions of users every day, guiding them to relevant products, services, or information tailored to their preferences. However, the research and development of recommender systems are hindered by existing datasets that fail to capture realistic user behaviors and inconsistent evaluation settings that lead to ambiguous conclusions. This paper introduces the Open Recommendation Benchmark for Reproducible Research with HIdden Tests (ORBIT), a unified benchmark for consistent and realistic evaluation of recommendation models. ORBIT offers a standardized evaluation framework of public datasets with reproducible splits and transparent settings for its public leaderboard. Additionally, ORBIT introduces a new webpage recommendation task, ClueWeb-Reco, featuring web browsing sequences from 87 million public, high-quality webpages. ClueWeb-Reco is a synthetic dataset derived from real, user-consented, and privacy-guaranteed browsing data. It aligns with modern recommendation scenarios and is reserved as the hidden test part of our leaderboard to challenge recommendation models' generalization ability. ORBIT measures 12 representative recommendation models on its public benchmark and introduces a prompted LLM baseline on the ClueWeb-Reco hidden test. Our benchmark results reflect general improvements of recommender systems on the public datasets, with variable individual performances. The results on the hidden test reveal the limitations of existing approaches in large-scale webpage recommendation and highlight the potential for improvements with LLM integrations. ORBIT benchmark, leaderboard, and codebase are available at https://www.open-reco-bench.ai.
title ORBIT -- Open Recommendation Benchmark for Reproducible Research with Hidden Tests
topic Information Retrieval
Computation and Language
url https://arxiv.org/abs/2510.26095