Abstract

Many studies have used housing prices on the Internet real estate information platforms as data sources, but platforms differ in the nature and quality of the data they release. However, few studies have analysed these differences or their effect on research. In this study, second-hand neighbourhood housing prices and information on five online real estate information platforms in Guangzhou, China, were comparatively analysed and the performance of neighbourhoods’ raw information from four for-profit online real estate information platforms was evaluated by applying the same housing price model. The comparison results show that the official second-hand residential housing prices at city and district level are generally lower than those issued on four for-profit real estate websites. The same second-hand neighbourhood housing prices are similar across each of the four for-profit real estate websites due to cross-referencing among real estate websites. The differences of housing prices in the central city area are significantly fewer than those in the periphery. The variation of each neighbourhood’s housing prices on each website decreases gradually from the city centre to the periphery, but the relative variation stays stable. The results of the four hedonic models have some inconsistencies with other studies’ findings, demonstrating that errors exist in raw information on neighbourhoods taken from Internet platforms. These results remind researchers to choose housing price data sources cautiously and that raw information on neighbourhoods from Internet platforms should be appropriately cleaned.

Highlights

  • Housing sale price statistics for 70 large and medium-sized cities released in December 2016 by the National Bureau of Statistics of the People’s Republic of China revealed that, in December, prices of newly constructed housing in megacities had not changed from the previous month

  • In contrast to traditional real estate agency firms’ offlineto-online pattern, real estate transaction platforms started as online businesses and expanded offline

  • They lend their interfaces to traditional real estate agency firms

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Summary

Introduction

Housing sale price statistics for 70 large and medium-sized cities released in December 2016 by the National Bureau of Statistics of the People’s Republic of China revealed that, in December, prices of newly constructed housing in megacities had not changed from the previous month. Researchers use online housing price data to investigate the determinants of housing prices, relevant policy, and macroeconomic and social situations, such as tax policy, stamp duty [3], housing purchase restriction policy [4], institutional mediation [5], and disease [6] Structural attributes, such as gross floor area, storey level [7], age of properties [8], and differentials between large-scale estates and single-block buildings [9] and location attributes, such as metro services [10], green space [11, 12], neighbouring and environmental effects [13], and the effects of theme parks on local areas [14], were all investigated by using online housing price data. Online housing price data are employed to explain various

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