The housing market is a crucial economic indicator to which the government must pay special attention because of its impact on the lives of freshly minted city inhabitants. As a guide for government regulation, individual property purchases, third-party evaluation, and understanding how housing prices are distributed geographically may be of great practical use. Therefore, much research has been conducted on how to arrive at a more accurate and efficient way of calculating housing prices in the current market. The goal of this study was to use the artificial neural network (ANN) technique to correctly identify real estate prices. The novelty of the proposed research is to build a prediction model based on ANN for predicting future house pri...
The property market is a safe and appreciating asset class in many cities, hence represents an excel...
The trend in real estate price estimation tends towards the adoption of artificial intelligence (AI)...
The number of people who will live in urban areas is expected to double to more than five billion be...
The main goal of this paper was to explore the use of an artificial neural network (ANN) model in pr...
Real estate forecasting has become an integral part of the larger process of business planning and s...
Over the past decade, the Saudi Real Estate Development Fund (REDF) was overwhelmed by the increasin...
This paper aims to look at property market in Singapore and the factors that affect the property pri...
The objective of this academic study is to experiment and choose suitable economic indicators that a...
The Hedonic Model, a traditional method for forecasting house prices has been criticised due to nonl...
The Hedonic Model, a traditional method for forecasting house prices has been criticised due to nonl...
This research applies the artificial neural network (ANN) models to predict the public housing price...
The purpose of this paper is to forecast housing prices in Ankara, Turkey using the artifi cial neu...
In recent years, social, economic and fiscal factors have produced strong modifications of the Itali...
The main purpose of this study is to develop a predictive model capable to forecast residential real...
Purpose The assessment of the Real Estate (RE) prices depends on multiple factors that traditional e...
The property market is a safe and appreciating asset class in many cities, hence represents an excel...
The trend in real estate price estimation tends towards the adoption of artificial intelligence (AI)...
The number of people who will live in urban areas is expected to double to more than five billion be...
The main goal of this paper was to explore the use of an artificial neural network (ANN) model in pr...
Real estate forecasting has become an integral part of the larger process of business planning and s...
Over the past decade, the Saudi Real Estate Development Fund (REDF) was overwhelmed by the increasin...
This paper aims to look at property market in Singapore and the factors that affect the property pri...
The objective of this academic study is to experiment and choose suitable economic indicators that a...
The Hedonic Model, a traditional method for forecasting house prices has been criticised due to nonl...
The Hedonic Model, a traditional method for forecasting house prices has been criticised due to nonl...
This research applies the artificial neural network (ANN) models to predict the public housing price...
The purpose of this paper is to forecast housing prices in Ankara, Turkey using the artifi cial neu...
In recent years, social, economic and fiscal factors have produced strong modifications of the Itali...
The main purpose of this study is to develop a predictive model capable to forecast residential real...
Purpose The assessment of the Real Estate (RE) prices depends on multiple factors that traditional e...
The property market is a safe and appreciating asset class in many cities, hence represents an excel...
The trend in real estate price estimation tends towards the adoption of artificial intelligence (AI)...
The number of people who will live in urban areas is expected to double to more than five billion be...