Aspect-Oriented Summarization for Psychiatric Short-Term Readmission Prediction
- URL: http://arxiv.org/abs/2502.10388v1
- Date: Fri, 14 Feb 2025 18:59:28 GMT
- Title: Aspect-Oriented Summarization for Psychiatric Short-Term Readmission Prediction
- Authors: WonJin Yoon, Boyu Ren, Spencer Thomas, Chanwhi Kim, Guergana Savova, Mei-Hua Hall, Timothy Miller,
- Abstract summary: Large language models (LLMs) can process lengthy documents even without supervised training on a task-specific dataset.
One feasible approach for tasks with lengthy, complex input is to first summarize the document and then apply supervised fine-tuning to the summary.
We present a method for processing the summaries of long documents aimed to capture different important aspects of the original document.
- Score: 1.3563640142303988
- License:
- Abstract: Recent progress in large language models (LLMs) has enabled the automated processing of lengthy documents even without supervised training on a task-specific dataset. Yet, their zero-shot performance in complex tasks as opposed to straightforward information extraction tasks remains suboptimal. One feasible approach for tasks with lengthy, complex input is to first summarize the document and then apply supervised fine-tuning to the summary. However, the summarization process inevitably results in some loss of information. In this study we present a method for processing the summaries of long documents aimed to capture different important aspects of the original document. We hypothesize that LLM summaries generated with different aspect-oriented prompts contain different \textit{information signals}, and we propose methods to measure these differences. We introduce approaches to effectively integrate signals from these different summaries for supervised training of transformer models. We validate our hypotheses on a high-impact task -- 30-day readmission prediction from a psychiatric discharge -- using real-world data from four hospitals, and show that our proposed method increases the prediction performance for the complex task of predicting patient outcome.
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