A sentiment analysis driven method based on public and personal preferences with correlated attributes to select online doctors.
Jian WuGuangyin ZhangYumei XingYujia LiuZhen ZhangYucheng DongEnrique Herrera-ViedmaPublished in: Applied intelligence (Dordrecht, Netherlands) (2023)
This paper proposes a method to assist patients in finding the most appropriate doctor for online medical consultation. To do that, it constructs an online doctor selection decision-making method that considers the correlation attributes, in which the measure of attribute correlation is derived from the history real decision data. To combine public and personal preference with correlated attributes, it proposes a Choquet integral based comprehensive online doctor ranking method. In detail, a two stage classification model based on BERT (Bidirectional Encoder Representations from Transformers) is used to extract service features from unstructured text reviews. Then, 2-additive fuzzy measure is adopted to represent the patient public group aggregated attribute preference. Next, a novel optimization model is proposed to combine the public preference and personal preference. Finally, a case study of dxy.com is carried out to illustrate the procedure of the method. The comparison result between proposed method and other traditional MADM (multi-attribute decision-making) methods prove its rationality.
Keyphrases
- decision making
- healthcare
- mental health
- social media
- machine learning
- health information
- end stage renal disease
- ejection fraction
- oxidative stress
- newly diagnosed
- palliative care
- emergency department
- chronic kidney disease
- systematic review
- randomized controlled trial
- case report
- working memory
- patient reported outcomes
- artificial intelligence