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Predicting housing prices in China based on modified Holt's exponential smoothing incorporating whale optimization algorithm

The forecast of the real estate market is an important part of studying the Chinese economic market. Most existing methods have strict requirements on input variables and are complex in parameter estimation. To obtain better prediction results, a modified Holt's exponential smoothing (MHES) met...

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Published in:Socio-economic planning sciences 2020-12, Vol.72, p.100916, Article 100916
Main Authors: Liu, Lianyi, Wu, Lifeng
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Language:English
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description The forecast of the real estate market is an important part of studying the Chinese economic market. Most existing methods have strict requirements on input variables and are complex in parameter estimation. To obtain better prediction results, a modified Holt's exponential smoothing (MHES) method was proposed to predict the housing price by using historical data. Unlike the traditional exponential smoothing models, MHES sets different weights on historical data and the smoothing parameters depend on the sample size. Meanwhile, the proposed MHES incorporates the whale optimization algorithm (WOA) to obtain the optimal parameters. Housing price data from Kunming, Changchun, Xuzhou and Handan were used to test the performance of the model. The housing prices results of four cities indicate that the proposed method has a smaller prediction error and shorter computation time than that of other traditional models. Therefore, WOA-MHES can be applied efficiently to housing price forecasting and can be a reliable tool for market investors and policy makers. •A model combining modified Holt's exponential smoothing and whale optimization algorithm is proposed.•The proposed model can improve the accuracy of housing price prediction in China.•The proposed model has shorter computation time than that of other traditional models.
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source International Bibliography of the Social Sciences (IBSS); Elsevier; PAIS Index
subjects Algorithms
Computation
Data
Housing
Housing costs
Housing prices
Investors
Markets
MHES
Optimization
Optimization algorithms
Policy making
Predict
Prices
Real estate
Time series
Whales & whaling
WOA
title Predicting housing prices in China based on modified Holt's exponential smoothing incorporating whale optimization algorithm
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