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ESL-Bench: An Event-Driven Synthetic Longitudinal Benchmark for Health Agents

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NOW LET US Article – ESL-Bench: An Event-Driven Synthetic Longitudinal Benchmark for Health Agents

Researchers introduce ESL-Bench, a novel event-driven synthesis framework designed to evaluate longitudinal health agents using high-fidelity synthetic trajectories and structured ground truth.

Computer Science > Artificial Intelligence

Title:ESL-Bench: An Event-Driven Synthetic Longitudinal Benchmark for Health Agents

View PDF HTML (experimental)Abstract:Longitudinal health agents must reason across multi-source trajectories that combine continuous device streams, sparse clinical exams, and episodic life events - yet evaluating them is hard: real-world data cannot be released at scale, and temporally grounded attribution questions seldom admit definitive answers without structured ground truth. We present ESL-Bench, an event-driven synthesis framework and benchmark providing 100 synthetic users, each with a 1-5 year trajectory comprising a health profile, a multi-phase narrative plan, daily device measurements, periodic exam records, and an event log with explicit per-indicator impact parameters. Each indicator follows a baseline stochastic process driven by discrete events with sigmoid-onset, exponential-decay kernels under saturation and projection constraints; a hybrid pipeline delegates sparse semantic artifacts to LLM-based planning and dense indicator dynamics to algorithmic simulation with hard physiological bounds. Users are each paired with 100 evaluation queries across five dimensions - Lookup, Trend, Comparison, Anomaly, Explanation - stratified into Easy, Medium, and Hard tiers, with all ground-truth answers programmatically computable from the recorded event-indicator relationships. Evaluating 13 methods spanning LLMs with tools, DB-native agents, and memory-augmented RAG, we find that DB agents (48-58%) substantially outperform memory RAG baselines (30-38%), with the gap concentrated on Comparison and Explanation queries where multi-hop reasoning and evidence attribution are required.

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Source: arXiv cs.AI Recent

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