step 1: Fit and transform the data (normalise)
step 2: perform various feature selection techniques (Chi-Square, recursive feature elimination, Lasso)
step 3: apply the following ML techniques to the dataset
1. A 5 or 10 fold cross-validation to solve overfitting.
2. Multi-class logistic regression
3. Decision Tree
4. Random forest
7. Naive Bayes
8. Neural Network
10. voting classifier
11. Linear discriminant analysis
Hyperparameter tuning to solve overfitting and to improve accuracy.
generate the confusion matrix for each algorithm, print the accuracy, precision, recall, f1 score, kappa, print the confusion chart, or the heat map, display the ROC curve, print the PYCM report
Export a trained model (ensembled method) in python to make predictions on real-time data. And integrate it to a web application.
Bu iş için 34 freelancer ortalamada ₹741/saat teklif veriyor
do kindly reach out to me over chat and we can get started on the task. Also, if there are additional information you can share with me in a zip file
Hello. I have read your project details before placing my bid. I can assure you that I can deliver high quality work on time. I am willing to start immediately. Thank you very much.
I'm a master student in data science. I can do the mentioned tasks with both python and : let me know if you are interested in hiring me for your projects