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Related Experiment Video

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Comparing human text classification performance and explainability with large language and machine learning models

Jeevithashree Divya Venkatesh1, Aparajita Jaiswal2, Gaurav Nanda3

  • 1School of Engineering Technology, Purdue University, West Lafayette, IN, 47907, USA.

Scientific Reports
|June 21, 2024
PubMed
Summary
This summary is machine-generated.

This study compared human, machine learning (ML), and large language model (LLM) text classification. The ML model outperformed LLM and humans, especially on complex injury narratives.

Keywords:
Cognitive engineeringExplainable AIEye trackingHuman-AI alignmentHuman–computer interactionLarge language models

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Area of Science:

  • Artificial Intelligence
  • Human-Computer Interaction
  • Natural Language Processing

Background:

  • Comparing artificial intelligence (AI) models with human reasoning is crucial for AI development.
  • Text classification tasks, particularly with complex datasets, pose challenges for both humans and AI.

Purpose of the Study:

  • To empirically compare the text classification performance and explainability of humans, a traditional machine learning (ML) model, and a large language model (LLM).
  • To investigate the alignment between human and AI reasoning in a real-world classification task.

Main Methods:

  • A user study with 51 participants classifying 204 injury narratives into 6 cause-of-injury codes, with eye-tracking data recorded.
  • Trained ML model using 120,000 pre-labeled narratives; LLM and humans received no specialized training.
  • Explainability compared using top classification decision words identified via eye-tracking (humans), LIME (ML), and prompts (LLM).

Main Results:

  • The ML model demonstrated superior classification performance compared to zero-shot LLM and non-expert humans, particularly for complex and difficult-to-categorize narratives.
  • Both ML and LLM showed higher agreement with human reasoning in their top-3 predictive words than with later predictive words.
  • Explainability analysis revealed varying degrees of alignment in decision-making processes.

Conclusions:

  • Traditional ML models can still outperform LLMs in specific, domain-specific text classification tasks, especially with sufficient training data.
  • While LLMs show promise, human-level performance and explainability in complex classification tasks require further research and development.
  • Understanding the alignment of reasoning between humans and AI is key to building trustworthy and effective AI systems.