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Knowing When to Ask: Self-Gated Clarification for Hierarchical Language Agents Impedance MPC for Physical Human-Robot Interaction: Predictive Disturbance Rejection with Joint-Limit Safety Formalizing all indexed mathematics as a benchmark for general reasoning, with the example of implementing dilatations of categories What LLMs Must Forget to Teach Effectively: A DIY Approach to Premodern Japanese Language Pedagogy Faster Completion, Less Learning: Generative AI Reduced Study Time on Math Problems and the Knowledge They Build Learning to Decide with AI Assistance under Human-Alignment Clinically Aware Synthetic Image Generation for Concept Coverage in Chest X-ray Models K2MUSE: A human lower-limb multimodal walking dataset spanning task and acquisition variability for rehabilitation robotics Privacy-Preserving Empathy Detection in Video Interactions GlyTwin: Digital Twin for Glucose Control in Type 1 Diabetes Through Optimal Behavioral Modifications Using Patient-Centric Counterfactuals AgentDynEx: Nudging the Mechanics and Dynamics of Multi-Agent Simulations Creating and Evaluating Personas Using Generative AI: A Scoping Review of 81 Articles Social Human Robot Embodied Conversation (SHREC) Dataset: Benchmarking Foundational Models' Social Reasoning Designing Synthetic Discussion Generation Systems: A Case Study for Online Facilitation FSPO: Few-Shot Optimization of Synthetic Preferences Personalizes to Real Users ExplainReduce: Generating global explanations from many local explanations AIvaluateXR: An Evaluation Framework for on-Device AI in XR with Benchmarking Results RECOVER: Designing a Large Language Model-based Remote Patient Monitoring System for Postoperative Gastrointestinal Cancer Care "Would You Want an AI Tutor?" 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From Latent to Observable Position-Based Click Models in Carousel Interfaces
Santiago de Leon-Martinez, Robert Moro, Branislav Kveton, Maria · 2026-02-18 · via cs.HC updates on arXiv.org

Click models are a central component of learning and evaluation in recommender systems, yet most existing models are designed for single ranked list interfaces. In contrast, modern recommender platforms increasingly use complex interfaces, such as carousels, which consist of multiple swipeable lists that enable complex user browsing behaviors. In this paper, we study position-based click models in carousel interfaces and examine optimization methods, model structure, and alignment with user behavior. We propose three novel position-based models tailored to carousels, including the first position-based model without latent variables that incorporates observed examination signals derived from eye tracking data, called the Observed Examination Position-Based Model (OEPBM). We develop a general implementation of these carousel click models, supporting multiple optimization techniques and conduct experiments comparing gradient-based methods with classic approaches, namely expectation-maximization and maximum likelihood estimation. Our results show that gradient-based optimization consistently achieves better click likelihoods. Among the evaluated models, the OEPBM achieves the strongest performance in click prediction and produces examination patterns that most closely align to user behavior. However, we also demonstrate that strong click fit does not imply realistic modeling of user examination and browsing patterns. This reveals a fundamental limitation of click-only models in complex interfaces and the need for incorporating additional behavioral signals when designing click models for carousel-based recommender systems.