An advanced hospital rating system using machine learning and natural language processing
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Brac University
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Abstract
Bangladesh is the host of 255 public and 4,452 private hospitals. Unfortunately,
there is no reliable metric or resource available online to determine which hospital
is better. Patients and their peers often find it difficult to choose the best hospital
for their medical attention. The traditional star based rating system can easily
be manipulated and they do not take user reviews into count. This is Where this
Research and its techniques become useful. Our advanced hospital rating system
takes reviews of a hospital and rates it based on the sentiment of the reviews. Our
proposed model uses NLP and ML to rate the hospital solely based on the experience
of the user shared online. That is why it not only rates the hospital but also
identifies the strength and weaknesses of the institution. For this research, 14,443
unstructured reviews were collected from Google Maps of the top 38 hospitals in
Dhaka. Additionally, these hospitals were rated based on their review’s sentiment
and ranked according to the positive percentage. Basically, two types of ranking
were introduced where in the general ranking system IBN Sina Specialized Hospital
secures the first position and in Class based ranking system Square Hospital secures
the first position. Furthermore, a web service is proposed where this trained model
predicts the sentiment of the user’s reviews and ranks that institution. For future
prediction, these reviews were created into multiclass datasets and pre-processed
using NLP techniques, and trained into four machine learning models and two deep
learning models to predict the sentiment. The most promising model is the Support
Vector Machine (SVM) with an accuracy of 85.32%. it’s Precision, Recall and F1-
score is 86%, 85% and 77% respectively.
LC Subject Headings
Description
Cataloged from PDF version of thesis.
Includes bibliographical references (pages 54-56).
This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science, 2023.
Includes bibliographical references (pages 54-56).
This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science, 2023.
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Thesis