咨询与建议

看过本文的还看了

相关文献

该作者的其他文献

文献详情 >A Model Average Algorithm for ... 收藏

A Model Average Algorithm for Housing Price Forecast with Evaluation Interpretation

作     者:Jintao Fu Yong Zhou Qian Qiu Guangwei Xu Neng Wan 

作者机构:School of Computer ScienceSouthwest Petroleum UniversityChengdu610500China Key Laboratory on Aero-Engine Altitude Simulation TechnologySichuan Gas Turbine EstablishmentAECCMianyang621000China Aero Engine Academy of ChinaAero Engine Corporation of ChinaBeijing101300China 

出 版 物:《Journal of Quantum Computing》 (量子计算杂志(英文))

年 卷 期:2022年第4卷第3期

页      面:147-163页

学科分类:0202[经济学-应用经济学] 02[经济学] 020205[经济学-产业经济学] 

基  金:This work was supported in part by Sichuan Science and Technology Program(Grant No.2022YFG0174) in part by the Sichuan Gas Turbine Research Institute stability support project of China Aero Engine Group Co.,Ltd(Grant No.GJCZ-0034-19) 

主  题:Machine learning AM algorithm price forecast regression algorithm Model evaluation 

摘      要:In the field of computer research,the increase of data in result of societal progress has been remarkable,and the management of this data and the analysis of linked businesses have grown in *** are numerous practical uses for the capability to extract key characteristics from secondary property data and utilize these characteristics to forecast home *** regression methods in machine learning to segment the data set,examine the major factors affecting it,and forecast home prices is the most popular method for examining pricing *** is challenging to generate precise forecasts since many of the regression models currently being utilized in research are unable to efficiently collect data on the distinctive elements that correlate y with a high degree of house price *** today’s forecasting studies,ensemble learning is a very prevalent and well-liked study *** regression integration computation of large housing datasets can use a lot of computer resources as well as computation time,and ensemble learning uses more resources and calls for more machine support in integrating diverse *** Average Model suggested in this paper uses the concept of fusion to produce integrated analysis findings from several models,combining the best benefits of separate *** Average Model has a strong applicability in the field of regression prediction and significantly increases computational *** technique is also easier to replicate and very effective in regression *** using regression processing techniques,this work creates an average of different regression models using the AM(Average Model)algorithm in a novel *** evaluating essential models with 90%accuracy,this technique significantly increases the accuracy of house price *** experimental results show that the AM algorithm proposed in this paper has lower prediction error than other comparison algorithms,and the prediction accurac

读者评论 与其他读者分享你的观点

用户名:未登录
我的评分