Polycystic Ovary Syndrome is
mainly metabolic and reproductive endocrinopathy and an extremely
complicated disorder among women. It causes hormonal imbalance,
menstruation problems, hair loss, facial acne, facial pimple, dark skin,
diabetics, overweight etc. Early detection is important for getting the
curation for PCOS. Early detection brings early prevention. In our
paper, we were able to collect 550 data of Bangladeshi women. Out of
them, 462 are affected by this disorder. We have highlighted common
symptoms of PCOS Bangladesh women and it's effect on women. We have used
machine learning methods like Random Forest, Naive Bayes
Classification, Decision Tree Classification, Super Vector Machine
Learning, K-nearest Neighbor, Logistic Regression, XGBoost Classifier,
Gradient Boosting Classifier to detect PCOS and comparing which
algorithms work best for detecting the PCOS based on our real datasets.
Also choose the best model on our real time dataset. We analyze our data
set and find out the accuracy, confusion matrix, f1-score, cross
validation, recall, precision, support. Among all classification SVM has
the highest accuracy. The accuracy of the Super Vector Machine Learning
is 99.09%.