Alice Leung
2024
Language Models are Alignable Decision-Makers: Dataset and Application to the Medical Triage Domain
Brian Hu
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Bill Ray
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Alice Leung
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Amy Summerville
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David Joy
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Christopher Funk
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Arslan Basharat
Proceedings of the 2024 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies (Volume 6: Industry Track)
In difficult decision-making scenarios, it is common to have conflicting opinions among expert human decision-makers as there may not be a single right answer. Such decisions may be guided by different attributes that can be used to characterize an individual’s decision. We introduce a novel dataset for medical triage decision-making, labeled with a set of decision-maker attributes (DMAs). This dataset consists of 62 scenarios, covering six different DMAs, including ethical principles such as fairness and moral desert. We present a novel software framework for human-aligned decision-making by utilizing these DMAs, paving the way for trustworthy AI with better guardrails. Specifically, we demonstrate how large language models (LLMs) can serve as ethical decision-makers, and how their decisions can be aligned to different DMAs using zero-shot prompting. Our experiments focus on different open-source models with varying sizes and training techniques, such as Falcon, Mistral, and Llama 2. Finally, we also introduce a new form of weighted self-consistency that improves the overall quantified performance. Our results provide new research directions in the use of LLMs as alignable decision-makers. The dataset and open-source software are publicly available at: https://github.com/ITM-Kitware/llm-alignable-dm.
2012
Tweet Ranking Based on Heterogeneous Networks
Hongzhao Huang
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Arkaitz Zubiaga
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Heng Ji
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Hongbo Deng
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Dong Wang
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Hieu Le
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Tarek Abdelzaher
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Jiawei Han
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Alice Leung
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John Hancock
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Clare Voss
Proceedings of COLING 2012
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Co-authors
- Hongzhao Huang 1
- Arkaitz Zubiaga 1
- Heng Ji 1
- Hongbo Deng 1
- Dong Wang 1
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