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Research on the Effect of Artificial Intelligence Real Estate Forecasting Using Multiple Regression Analysis and Artificial Neural Network: A Case Study of Ghana

机译:利用多元回归分析和人工神经网络的人工智能房地产预测效果研究 - 以加纳为例

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To transition from conventional to intelligent real estate, the real estate industry must enhance its embrace of disruptive technology. Even though the real estate auction market has grown in importance in the financial, economic, and investment sectors, few artificial intelligence-based research has tried to predict the auction values of real estate in the past. According to the objectives of this research, artificial intelligence and statistical methods will be used to create forecasting models for real estate auction prices. A multiple regression model and an artificial neural network are used in conjunction with one another to build the forecasting models. For the empirical study, the study utilizes data from Ghana apartment auctions from 2016 to 2020 to anticipate auction prices and evaluate the forecasting accuracy of the various models available at the time. Compared to the conventional Multiple Regression Analysis, using artificial intelligence systems for real estate appraisal is becoming a more viable option (MRA). The Artificial Neural network model exhibits the most outstanding performance, and efficient zonal segmentation based on the auction evaluation price enhances the model’s prediction accuracy even more. There is a statistically significant difference between the two models when it comes to forecasting the values of real estate auctions.
机译:从传统到智能房地产过渡,房地产业必须增强其对破坏性技术的拥抱。尽管房地产拍卖市场在金融,经济和投资部门的重要性中,但基于人工智能的研究很少试图预测过去房地产的拍卖价值。根据本研究的目的,人工智能和统计方法将用于为房地产兼产业价格创建预测模型。多元回归模型和人工神经网络彼此结合使用以构建预测模型。对于实证研究,该研究利用2016年到2020年从加纳公寓拍卖的数据来预测生效价格,并评估当时可用各种型号的预测准确性。与传统的多元回归分析相比,使用人工智能系统进行房地产评估,成为一个更加可行的选择(MRA)。人工神经网络模型展现出最出色的性能,基于拍卖评估价格的高效区域分割增强了模型的预测精度。在预测房地产拍卖的价值方面,两种模型之间存在统计学上的显着差异。

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