Project using multiple linear regression to model prices of houses in Ames, IA.
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Updated
Mar 5, 2020 - R
Project using multiple linear regression to model prices of houses in Ames, IA.
MSDS 410 Data Modeling for Supervised Learning (R)
This is a house price prediction study which utilized Exploratory Data Analysis, Dealing with Missing Values, Linear Regression with LASSO and Ridge regularization to predict house prices in the Ames Housing Data Set
my attempt to train a model on Ames housing dataset.
Prediction of house sale prices based on the Ames Housing dataset
🏡 Built linear regression model to predict house prices in Ames dataset with applied tools such as scikit-learn pipeline
Ames dataset: House Price prediction for kaggle competition (advanced regression, supervised ML)
Predicting sales prices for Ames housing dataset
Data-driven analysis of the Ames Housing Dataset, combining advanced feature engineering and Stochastic Gradient Descent (SGD) regression model tuning. This repository showcases predictive modeling, hyperparameter optimization, and actionable insights for real estate analytics.
A collection of small data science projects to predict house pricing for two different datasets
Predicting house prices using advanced regression techniques
In depth EDA on Ames Housing dataset from Kaggle and Regression model to predict house prices.
Prediction of Sales Prices of Houses
This repo contains my attempts at developing machine learning algorithms in python to predict the house prices in Ames, Iowa as part of the following Kaggle competition: https://www.kaggle.com/competitions/house-prices-advanced-regression-techniques
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