Remote Data Mining And Management Job In Data Science And Analytics

Python Assignment

Find more Data Mining And Management remote jobs posted recently Worldwide

It is a small assignment and can be completed in 2-3 hrs. Below is the task required.

. Read the column description and ensure you understand each attribute well
2. Study the data distribution in each attribute, share your findings.
3. Get the target column distribution. Your comments
4. Split the data into training and test set in the ratio of 70:30 respectively
5. Use different classification models (Logistic, K-NN and Naive Bayes) to predict the likelihood of a liability customer buying personal loans
6. Print the confusion matrix for all the above models
7. Give your reasoning on which is the best model in this case and why it performs better?

Once selected, Will share the data on which above needs to be done.

Thanks,
About the recuiter
Member since Nov 11, 2022
Steven Mishan
from Saint Andrew, Jamaica

Skills & Expertise Required

Data Science & Analytics Data Mining & Management 

Open for hiringApply before - Sep 21, 2024

Work from Anywhere

40 hrs / week

Fixed Type

Remote Job

$14.28

Cost

Offer to work on this project closes in 14 days!
Are you interested in this Opportunity?

Looking for help? Checkout our video tutorial
How to search and apply for jobs

How to apply? Do you have more questions about the Job?
See frequently asked questions

Similar Projects

Image classification using CNN

Image forgery detection using CNN.
The image will be classified to two classes copy move class and original class.

Analytics expert in QlikSense to review and advise on graphical presentation of a Qliksense app

I need an analytics expert to advise me on the best graphical presentation of a number of dashboards I developed using QlikSense.These include a dashboard for the CEO to view sales invoices (cash and credit) for an organization with a number of outle...read more

Software Developers needed

We need a person who can develop CRM software and customise them as assorted requirements.