⚡机器学习实战(Python3):kNN、决策树、贝叶斯、逻辑回归、SVM、线性回归、树回归
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Updated
Oct 9, 2022 - Python
⚡机器学习实战(Python3):kNN、决策树、贝叶斯、逻辑回归、SVM、线性回归、树回归
Objective of the repository is to learn and build machine learning models using Pytorch. 30DaysofML Using Pytorch
Image classification using SVM, KNN, Bayes, Adaboost, Random Forest and CNN.Extracting features and reducting feature dimension using T-SNE, PCA, LDA.
Classification in TabularDataset
Customer Lifetime Value, Returns Predictions, Recommender system and sales analysis on UC Irvine online sales dataset.
An algorithmic trading strategy incursion using Adaboost machine learning classifier, to create the first volatility security suitable for long term investors.
A parallelised facial recognition program written from scratch in C with minimal dependencies
For this project, I used four different classification algorithms to detect fraudulent credit card transactions.
The homeworks related to Machine Learning university course would be saved here.
Identify fraudulent credit card transactions so that customers are not charged for items that they did not purchase. (Python, Logistic Regression Classifier, Unbalanced dataset).
Automobile dataset for used Car Price Analysis to predict the price of a vehicle with their features and performance factor to provide the exact value of a vehicle for buyer seller satisfaction using exploratory data analysis and machine learning models.
Some decision tree algorithms implemented in C++
Classify default borrowers from initial loan application for Lending Club
Employee-Absenteeism-Project-Work
Dtreehub is a lightweight decision tree framework for Python with categorical feature support. It covers regular decision tree algorithms: ID3, C4.5, CART, CHAID and regression tree, random forest and adaboost.
Implements the Decision Tree (CART), AdaBoost and Random Forest algorithm from scratch by only using NumPy.
Utilizing machine learning techniques to model and project sales for the cannabis startup Cookies
Machine Learning Models
Can we predict how long a patient will be in a hospital with a fair comparison on gender, race and health service areas?
Project No.2 (Data Engineering) in the Data Scientist Nanodegree program. Build a machine learning pipeline to categorize emergency messages based on the need communicated by the sender.
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