SensingAgents is a multi-agent LLM framework that reaches 79.5% zero-shot accuracy on IMU activity recognition by using position-specific analysts, debating advocates, and a final decision agent, beating prior agent and deep-learning baselines.
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EduGage releases a multimodal sensor dataset and models for estimating learner engagement in self-guided video learning, reporting MAE of 0.81 and outperforming baselines with 16 participants.
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SensingAgents: A Multi-Agent Collaborative Framework for Robust IMU Activity Recognition
SensingAgents is a multi-agent LLM framework that reaches 79.5% zero-shot accuracy on IMU activity recognition by using position-specific analysts, debating advocates, and a final decision agent, beating prior agent and deep-learning baselines.
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EduGage: Methods and Dataset for Sensor-Based Momentary Assessment of Engagement in Self-Guided Video Learning
EduGage releases a multimodal sensor dataset and models for estimating learner engagement in self-guided video learning, reporting MAE of 0.81 and outperforming baselines with 16 participants.