TL;DR
This paper introduces a semi-supervised variational reasoning model for medical dialogue generation that explicitly models patient states and physician actions, improving response accuracy with limited labeled data.
Contribution
It proposes a novel end-to-end variational approach with latent variables for patient states and physician actions, enhancing medical dialogue generation under data scarcity.
Findings
Outperforms state-of-the-art baselines in objective metrics
Achieves comparable performance to fully supervised models
Effectively models patient states and physician actions with limited labeled data
Abstract
Medical dialogue generation aims to provide automatic and accurate responses to assist physicians to obtain diagnosis and treatment suggestions in an efficient manner. In medical dialogues two key characteristics are relevant for response generation: patient states (such as symptoms, medication) and physician actions (such as diagnosis, treatments). In medical scenarios large-scale human annotations are usually not available, due to the high costs and privacy requirements. Hence, current approaches to medical dialogue generation typically do not explicitly account for patient states and physician actions, and focus on implicit representation instead. We propose an end-to-end variational reasoning approach to medical dialogue generation. To be able to deal with a limited amount of labeled data, we introduce both patient state and physician action as latent variables with categorical…
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Taxonomy
MethodsStochastic Gradient Variational Bayes
