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Causal-Discovery Performance of ChatGPT in the context of Neuropathic Pain Diagnosis
16
Zitationen
3
Autoren
2023
Jahr
Abstract
ChatGPT has demonstrated exceptional proficiency in natural language conversation, e.g., it can answer a wide range of questions while no previous large language models can. Thus, we would like to push its limit and explore its ability to answer causal discovery questions by using a medical benchmark (Tu et al. 2019) in causal discovery.
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