The Swedish real estate market has been digitalized over the past decade with the current practice being to post your real estate advertisement online. A question that has arisen is how a seller can optimize their public listing to maximize the selling premium. This paper analyzes the use of three machine learning methods to solve this problem: Linear Regression, Decision Tree Regressor and Random Forest Regressor. The aim is to retrieve information regarding how certain attributes contribute to the premium value. The dataset used contains apartments sold within the years of 2014-2018 in the Östermalm / Djurgården district in Stockholm, Sweden. The resulting models returned an R2-value of approx. 0.26 and Mean Absolute Error of approx. 0.06...
Property valuation is a critical concept for a variety of applications in the real estate market suc...
Property valuation is a critical concept for a variety of applications in the real estate market suc...
With the rising housing prices of the last 20 years, the appraisal of real estate has become more di...
The Swedish real estate market has been digitalized over the past decade with the current practice b...
The Swedish real estate market has been digitalized over the past decade with the current practice b...
This thesis has explored the development and potential effects of an intelligent decision support sy...
Accurate evaluations in the real estate market are valuable for many different parties, including le...
The real estate market is exposed to many fluctuations in prices because of existing correlations wi...
Accurate evaluations in the real estate market are valuable for many different parties, including le...
The primary goal of this report was to examine and demonstrate how machine learning methods can be u...
The primary goal of this report was to examine and demonstrate how machine learning methods can be u...
In a unique opportunity to examine rare appraisal data from the commercial real estate sector, the a...
This thesis investigates whether machine learning methods can improve property price predictions, le...
In a unique opportunity to examine rare appraisal data from the commercial real estate sector, the a...
Property Technology (PropTech) is the next big thing that is going to disrupt the real estate market...
Property valuation is a critical concept for a variety of applications in the real estate market suc...
Property valuation is a critical concept for a variety of applications in the real estate market suc...
With the rising housing prices of the last 20 years, the appraisal of real estate has become more di...
The Swedish real estate market has been digitalized over the past decade with the current practice b...
The Swedish real estate market has been digitalized over the past decade with the current practice b...
This thesis has explored the development and potential effects of an intelligent decision support sy...
Accurate evaluations in the real estate market are valuable for many different parties, including le...
The real estate market is exposed to many fluctuations in prices because of existing correlations wi...
Accurate evaluations in the real estate market are valuable for many different parties, including le...
The primary goal of this report was to examine and demonstrate how machine learning methods can be u...
The primary goal of this report was to examine and demonstrate how machine learning methods can be u...
In a unique opportunity to examine rare appraisal data from the commercial real estate sector, the a...
This thesis investigates whether machine learning methods can improve property price predictions, le...
In a unique opportunity to examine rare appraisal data from the commercial real estate sector, the a...
Property Technology (PropTech) is the next big thing that is going to disrupt the real estate market...
Property valuation is a critical concept for a variety of applications in the real estate market suc...
Property valuation is a critical concept for a variety of applications in the real estate market suc...
With the rising housing prices of the last 20 years, the appraisal of real estate has become more di...