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Large Language Model as Unsupervised Health Information Retriever.

Keyuan Jiang1, Mohammed M Mujtaba1, Gordon R Bernard2

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This summary is machine-generated.

This study shows that large language models can find COVID-19 symptoms in social media posts without prior examples. This zero-shot learning approach efficiently identifies health information and aids future research.

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Area of Science:

  • Natural Language Processing
  • Public Health Informatics
  • Computational Linguistics

Background:

  • Accessing reliable health information is crucial for disease management.
  • Self-reported health data, particularly from social media, can offer valuable insights into disease symptoms and trends.
  • COVID-19 has highlighted the need for efficient methods to track public health information.

Purpose of the Study:

  • To evaluate the effectiveness of a pretrained large language model (GPT-3) in retrieving COVID-19 symptom mentions from Twitter data.
  • To assess the utility of a zero-shot learning approach for identifying health-related information without manual data annotation.
  • To introduce and utilize a novel performance metric, total match (TM), encompassing exact, partial, and semantic matches.

Main Methods:

  • Utilized a pretrained large language model (GPT-3) for zero-shot learning to identify symptom mentions in COVID-19-related Twitter posts.
  • Developed and applied a 'total match' (TM) metric to evaluate the accuracy of symptom identification, considering various match types.
  • Compared the performance of the zero-shot method against the need for annotated datasets.

Main Results:

  • The zero-shot learning approach demonstrated significant capability in retrieving symptom mentions from Twitter data.
  • The 'total match' metric provided a comprehensive evaluation of the model's performance in identifying health information.
  • The study confirmed that zero-shot learning is a powerful technique that does not require data annotation.

Conclusions:

  • Zero-shot learning with large language models is an effective strategy for extracting health information, specifically COVID-19 symptoms, from social media.
  • This method reduces the dependency on manually annotated datasets, accelerating health information retrieval.
  • The findings suggest that zero-shot learning can serve as a foundational step for generating data for few-shot learning, potentially enhancing performance further.