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A compilation of different models that predict a home's value (in Melbourne, Australia) and determine which model performs better and why.

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boosting regression regression-models predictive-modeling prediction-model predictive-analytics predictive-analysis prediction prediction-algorithm house-price-prediction housing housing-prices

house_prices_melbourne's Introduction

Melbourne, Australia

melbourne

Overview:
Using this kaggle data, we will create multiple models to predict a house's value and determine which is best. Let's explore and understand what creates value in a house, as though we were a real estate developer.

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