This thesis investigates whether non-linear machine learning algorithms can produce more accurate predictions of Norwegian housing prices compared to linear regression models. We find that the non-linear XGBoost algorithm increases out-of-sample prediction accuracy by 8.5% in terms of Root Mean Squared Error compared to the linear model used by Statistics Norway. Using additional property-specific and macroeconomic variables such as coordinates, common debt, story, inflation rate and interest rate, we find that a non-linear Stacked Regression model improves out-of-sample prediction accuracy by 39.52% in terms of Root Mean Squared Error compared to a linear model
Die Bedeutung des Wohnimmobiliensektors, welcher einen integralen Bestandteil jeder Volkswirtschaft ...
The below document presents the implementation of price prediction project for the real estate marke...
An accurate prediction of house prices is a fundamental requirement for various sectors, including r...
During the last decades, housing prices have been a frequent topic in economic discussions. Due to t...
Abstract: For socioeconomic development and the well-being of citizens, developing a precise model f...
This study proposes a performance comparison between machine learning regression algorithms and Arti...
In this thesis, I explore how predictive modeling can be applied in housing sale price prediction by...
Accurate housing price forecasts are essential for several reasons. First, it allows individuals to ...
In recent years, machine learning has become increasingly important in everyday voice commands and p...
Abstract— The purpose of this paper is to predict the price of houses. House Price Index (HPI) is co...
Accommodation Price Prediction is used to estimate the variably changing house prices. Since housing...
This thesis investigates whether machine learning methods can improve property price predictions, le...
In the evolving landscape of real estate valuation, the integration of machine learning (ML) algorit...
In recent times, there have been a surge in the housing business, such that prediction of houses is ...
Part 13: Machine LearningInternational audienceOver the past few years, machine learning has played ...
Die Bedeutung des Wohnimmobiliensektors, welcher einen integralen Bestandteil jeder Volkswirtschaft ...
The below document presents the implementation of price prediction project for the real estate marke...
An accurate prediction of house prices is a fundamental requirement for various sectors, including r...
During the last decades, housing prices have been a frequent topic in economic discussions. Due to t...
Abstract: For socioeconomic development and the well-being of citizens, developing a precise model f...
This study proposes a performance comparison between machine learning regression algorithms and Arti...
In this thesis, I explore how predictive modeling can be applied in housing sale price prediction by...
Accurate housing price forecasts are essential for several reasons. First, it allows individuals to ...
In recent years, machine learning has become increasingly important in everyday voice commands and p...
Abstract— The purpose of this paper is to predict the price of houses. House Price Index (HPI) is co...
Accommodation Price Prediction is used to estimate the variably changing house prices. Since housing...
This thesis investigates whether machine learning methods can improve property price predictions, le...
In the evolving landscape of real estate valuation, the integration of machine learning (ML) algorit...
In recent times, there have been a surge in the housing business, such that prediction of houses is ...
Part 13: Machine LearningInternational audienceOver the past few years, machine learning has played ...
Die Bedeutung des Wohnimmobiliensektors, welcher einen integralen Bestandteil jeder Volkswirtschaft ...
The below document presents the implementation of price prediction project for the real estate marke...
An accurate prediction of house prices is a fundamental requirement for various sectors, including r...