This is a binary classification problem excerpted from Kaggle competitions that explains why Leonardo DiCaprio had a high probability of dying in the movie TITANIC.
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Updated
Jan 11, 2021 - Jupyter Notebook
This is a binary classification problem excerpted from Kaggle competitions that explains why Leonardo DiCaprio had a high probability of dying in the movie TITANIC.
1st Project of Course 'Machine Learning' of the SMARTNET programme. Taken at the National and Kapodistrian University of Athens.
This repository contains an ML project that was approached with a business mindset from the beginning to the end. It addresses the problem of regression.
deciphering car VIN codes using regular expressions
BME499 course materials. I developed the neural networks / deep learning section of this course.
peramalan jumlah penduduk kec.kandangserang kab. pekalongan dengan metode regresi linier. data training jumlah penduduk dengan gender wanita pada tahun 2011-2021
Esercizi e piccoli Progetti di applicazione all'Intelligenza Artificiale utilizzando GraphLab Create e Python
Deep Learning Projects Using Keras & Scikit-Learn
Solving exercises of Introduction to Statistical Learning with Python
An exploratory data analysis is performed and a regression model is used to predict house values. The prediction performance is optimized after tuning the model hyper-parameters to minimize bias/variance errors.
Analyzing a huge dataset taken by the Department of Education, utilzing both SAS, and MS Excel (https://catalog.data.gov/dataset/college-scorecard)
Analyze A/B Test Results - Udacity Data Analyst Nanodegree Project
This repo contains all my implementations of Machine Learning Models.
Health Insurance Premium Prediction with Machine Learning(Regression)
Simple linear regression completely from scratch in pure python
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