Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

A Study on House Price Prediction Based on Stacking-Sorted-Weighted-Ensemble Model

View through CrossRef
<p>The house price prediction problem is a typical regression problem, and most of the common house price prediction models are single prediction algorithms, which are not ideal in terms of accuracy and stability. For solving this problem, this paper proposes a house price forecasting method based on Stacking-Sorted-Weighted-Ensemble (SSWE) model. Considering the characteristics of different algorithms and giving full play to the advantages of each model, multiple individual forecasting models are fused with the Stacking model. The algorithm validation is performed using the data generated by the system of real estate management department in western Guangdong. The prediction results show that the Stacking model is superior to the single model. Compared with the Stacking regression model, the SSWE model has a 13.6% increase in the root mean square error on the training set but a 0.3% decrease on the test set, indicating that the SSWE model prevents overfitting to a some extent and increases the accuracy and stability of the model.</p> <p>&nbsp;</p>
Title: A Study on House Price Prediction Based on Stacking-Sorted-Weighted-Ensemble Model
Description:
<p>The house price prediction problem is a typical regression problem, and most of the common house price prediction models are single prediction algorithms, which are not ideal in terms of accuracy and stability.
For solving this problem, this paper proposes a house price forecasting method based on Stacking-Sorted-Weighted-Ensemble (SSWE) model.
Considering the characteristics of different algorithms and giving full play to the advantages of each model, multiple individual forecasting models are fused with the Stacking model.
The algorithm validation is performed using the data generated by the system of real estate management department in western Guangdong.
The prediction results show that the Stacking model is superior to the single model.
Compared with the Stacking regression model, the SSWE model has a 13.
6% increase in the root mean square error on the training set but a 0.
3% decrease on the test set, indicating that the SSWE model prevents overfitting to a some extent and increases the accuracy and stability of the model.
</p> <p>&nbsp;</p>.

Related Results

HOUSE PRICE PREDICTION
HOUSE PRICE PREDICTION
Because house prices rise every year, a mechanism to forecast future house values is required. House price prediction can help the developer determine the selling price of a house ...
Thermally Induced Irreversible Disorder in Interlayer Stacking of γ‐GeSe
Thermally Induced Irreversible Disorder in Interlayer Stacking of γ‐GeSe
AbstractThe interlayer stacking shift in van der Waals (vdW) crystals represents an important degree of freedom to control various material properties, including magnetism, ferroel...
Ensemble Machine Learning Model for Software Defect Prediction
Ensemble Machine Learning Model for Software Defect Prediction
Software defect prediction is a significant activity in every software firm. It helps in producing quality software by reliable defect prediction, defect elimination, and predictio...
Cycles in landed and non‐landed housing sub‐markets in Malaysia
Cycles in landed and non‐landed housing sub‐markets in Malaysia
PurposeThere exists a voluminous literature which examines house price diffusions across space and quality tiers. Numerous observers have pointed out that housing price dynamics ca...
Soil Salinity Inversion Based on a Stacking Integrated Learning Algorithm
Soil Salinity Inversion Based on a Stacking Integrated Learning Algorithm
Soil salinization is an essential risk factor for agricultural development as well as for food security, and how to obtain regional soil salinity information more reliably remains ...

Back to Top