Mixed Feelings: Cross-Domain Sentiment Classification of Patient Feedback
Rønningstad, Egil, Storset, Lilja Charlotte, Mæhlum, Petter, Øvrelid, Lilja, Velldal, Erik
–arXiv.org Artificial Intelligence
Sentiment analysis of patient feedback from the public health domain can aid decision makers in evaluating the provided services. The current paper focuses on free-text comments in patient surveys about general practitioners and psychiatric healthcare, annotated with four sentence-level polarity classes -- positive, negative, mixed and neutral -- while also attempting to alleviate data scarcity by leveraging general-domain sources in the form of reviews. For several different architectures, we compare in-domain and out-of-domain effects, as well as the effects of training joint multi-domain models.
arXiv.org Artificial Intelligence
Jan-31-2025
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