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Few-Shot Optimization for Sensor Data Using Large Language Models: A Case Study on Fatigue Detection.

Elsen Ronando1,2, Sozo Inoue1

  • 1Graduate School of Life Science and Systems Engineering, Kyushu Institute of Technology, 2-4 Hibikino, Wakamatsu Ward, Kitakyushu 808-0135, Japan.

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Summary
This summary is machine-generated.

We developed Hybrid Euclidean Distance with Large Language Models (HED-LM) for better example selection in sensor-based classification. HED-LM improves fatigue detection accuracy by combining numerical similarity with contextual relevance from LLMs.

Keywords:
HED-LMaccelerometercontextual reasoningeuclidean distanceexample selectionfatigue detectionfew-shot promptinglarge language models (LLMs)sensor data

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Area of Science:

  • Machine Learning
  • Signal Processing
  • Wearable Technology

Background:

  • Few-shot prompting is efficient for limited labeled data but sensitive to example selection quality.
  • Sensor-based classification tasks, like fatigue detection, require nuanced example selection due to complex data patterns and variability.

Purpose of the Study:

  • To introduce a novel few-shot optimization method, Hybrid Euclidean Distance with Large Language Models (HED-LM), for improved example selection.
  • To enhance the performance of sensor-based classification tasks, particularly fatigue detection, by optimizing the selection of training examples.

Main Methods:

  • HED-LM employs a hybrid pipeline: filtering candidate examples using Euclidean distance and re-ranking them with contextual relevance scores from Large Language Models (LLMs).
  • The method was validated on a fatigue detection task using accelerometer data, known for overlapping patterns and high inter-subject variability.

Main Results:

  • HED-LM achieved a mean macro F1-score of 69.13 ± 10.71% in fatigue detection.
  • This significantly outperformed random selection (59.30 ± 10.13%) and distance-only filtering (67.61 ± 11.39%), showing relative improvements of 16.6% and 2.3%, respectively.

Conclusions:

  • Combining numerical similarity (Euclidean distance) with contextual relevance (LLMs) enhances the robustness of few-shot prompting.
  • HED-LM provides a practical approach for real-world sensor-based learning and has potential in healthcare monitoring, activity recognition, and industrial safety.