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Autori principali: Reichman, Benjamin, Yu, Xiaofan, Hu, Lanxiang, Truxal, Jack, Jain, Atishay, Chandrupatla, Rushil, Rosing, Tajana Šimunić, Heck, Larry
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2501.04974
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author Reichman, Benjamin
Yu, Xiaofan
Hu, Lanxiang
Truxal, Jack
Jain, Atishay
Chandrupatla, Rushil
Rosing, Tajana Šimunić
Heck, Larry
author_facet Reichman, Benjamin
Yu, Xiaofan
Hu, Lanxiang
Truxal, Jack
Jain, Atishay
Chandrupatla, Rushil
Rosing, Tajana Šimunić
Heck, Larry
contents With the rapid growth in sensor data, effectively interpreting and interfacing with these data in a human-understandable way has become crucial. While existing research primarily focuses on learning classification models, fewer studies have explored how end users can actively extract useful insights from sensor data, often hindered by the lack of a proper dataset. To address this gap, we introduce SensorQA, the first human-created question-answering (QA) dataset for long-term time-series sensor data for daily life monitoring. SensorQA is created by human workers and includes 5.6K diverse and practical queries that reflect genuine human interests, paired with accurate answers derived from sensor data. We further establish benchmarks for state-of-the-art AI models on this dataset and evaluate their performance on typical edge devices. Our results reveal a gap between current models and optimal QA performance and efficiency, highlighting the need for new contributions. The dataset and code are available at: https://github.com/benjamin-reichman/SensorQA.
format Preprint
id arxiv_https___arxiv_org_abs_2501_04974
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SensorQA: A Question Answering Benchmark for Daily-Life Monitoring
Reichman, Benjamin
Yu, Xiaofan
Hu, Lanxiang
Truxal, Jack
Jain, Atishay
Chandrupatla, Rushil
Rosing, Tajana Šimunić
Heck, Larry
Computation and Language
Artificial Intelligence
With the rapid growth in sensor data, effectively interpreting and interfacing with these data in a human-understandable way has become crucial. While existing research primarily focuses on learning classification models, fewer studies have explored how end users can actively extract useful insights from sensor data, often hindered by the lack of a proper dataset. To address this gap, we introduce SensorQA, the first human-created question-answering (QA) dataset for long-term time-series sensor data for daily life monitoring. SensorQA is created by human workers and includes 5.6K diverse and practical queries that reflect genuine human interests, paired with accurate answers derived from sensor data. We further establish benchmarks for state-of-the-art AI models on this dataset and evaluate their performance on typical edge devices. Our results reveal a gap between current models and optimal QA performance and efficiency, highlighting the need for new contributions. The dataset and code are available at: https://github.com/benjamin-reichman/SensorQA.
title SensorQA: A Question Answering Benchmark for Daily-Life Monitoring
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2501.04974