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Main Authors: Shafi, Fozle Rabbi, Hossain, M. Anwar, Choudhury, Salimur
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.06937
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author Shafi, Fozle Rabbi
Hossain, M. Anwar
Choudhury, Salimur
author_facet Shafi, Fozle Rabbi
Hossain, M. Anwar
Choudhury, Salimur
contents Large Language Model (LLM)-based systems increasingly rely on function calling to enable structured and controllable interaction with external data sources, yet existing datasets do not address mental health-oriented access to wearable sensor data. This paper presents a synthetic function-calling dataset designed for mental health assistance grounded in wearable health signals such as sleep, physical activity, cardiovascular measures, stress indicators, and metabolic data. The dataset maps diverse natural language queries to standardized API calls derived from a widely adopted health data schema. Each sample includes a user query, a query category, an explicit reasoning step, a normalized temporal parameter, and a target function. The dataset covers explicit, implicit, behavioral, symptom-based, and metaphorical expressions, which reflect realistic mental health-related user interactions. This resource supports research on intent grounding, temporal reasoning, and reliable function invocation in LLM-based mental health agents and is publicly released to promote reproducibility and future work.
format Preprint
id arxiv_https___arxiv_org_abs_2601_06937
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle mind_call: A Dataset for Mental Health Function Calling with Large Language Models
Shafi, Fozle Rabbi
Hossain, M. Anwar
Choudhury, Salimur
Artificial Intelligence
Machine Learning
Large Language Model (LLM)-based systems increasingly rely on function calling to enable structured and controllable interaction with external data sources, yet existing datasets do not address mental health-oriented access to wearable sensor data. This paper presents a synthetic function-calling dataset designed for mental health assistance grounded in wearable health signals such as sleep, physical activity, cardiovascular measures, stress indicators, and metabolic data. The dataset maps diverse natural language queries to standardized API calls derived from a widely adopted health data schema. Each sample includes a user query, a query category, an explicit reasoning step, a normalized temporal parameter, and a target function. The dataset covers explicit, implicit, behavioral, symptom-based, and metaphorical expressions, which reflect realistic mental health-related user interactions. This resource supports research on intent grounding, temporal reasoning, and reliable function invocation in LLM-based mental health agents and is publicly released to promote reproducibility and future work.
title mind_call: A Dataset for Mental Health Function Calling with Large Language Models
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2601.06937