Aspect-Based Sentiment Analysis on Healthcare Services Uding pre-trained Languges Model
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Date
2025
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Publisher
Malaya University
Abstract
This research explores the application of various computational models for aspect-
based sentiment analysis (ABSA) of healthcare reviews, a critical component of
enhancing healthcare services through feedback analysis. With the rapid expansion of
online health platforms, the volume of textual reviews generated by patients provides a
rich source of data for understanding patient satisfaction and areas needing improvement.
The research thoroughly assesses various models, encompassing conventional statistical
models, recurrent neural networks (RNNs), and sophisticated transformer-based models
like BERT, RoBERTa, and DistilBERT. Each model was assessed based on its ability to
accurately classify sentiments tied to specific aspects of healthcare services, such as
cleanliness, staff behavior, and treatment efficacy. Two primary feature extraction
techniques, Bag of Words (BoW) and Term Frequency-Inverse Document Frequency
(TF-IDF), were employed to transform raw text into a suitable format for model ingestion.
Our findings demonstrate that while traditional models offer quick and interpretable
results, they sometimes lack the nuanced understanding of context provided by more
sophisticated deep learning and transformer models. RNNs, particularly LSTM and
BiLSTM, were effective in capturing temporal dependencies in text data, essential for
comprehending longer patient feedback.
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Keywords
Transformer models, aspect-based sentiment analysis, deep learning, healthcare, machine learnin