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Article

The Impacts of Public Schools on Housing Prices of Residential Properties: A Case Study of Greater Sydney, Australia

City Futures Research Centre, School of Built Environment, University of New South Wales, Sydney 2052, Australia
*
Author to whom correspondence should be addressed.
ISPRS Int. J. Geo-Inf. 2023, 12(7), 298; https://doi.org/10.3390/ijgi12070298
Submission received: 2 June 2023 / Revised: 17 July 2023 / Accepted: 18 July 2023 / Published: 24 July 2023

Abstract

:
Residential property values are influenced by a combination of physical, socio-economic and neighbourhood factors. This study investigated the influence of public schools on residential property prices. Relatively few existing models have taken the spatial heterogeneity of different submarkets into account. To fill this gap, three types of valuation models were applied to sales data from both non-strata and strata properties, and how the proximity and quality of public schools have influenced the prices of different residential property types was examined. The findings demonstrate that an increase of one unit in the normalised NAPLAN score of primary and high schools will lead to a 3.9% and 1.4%, 2.7% and 2.8% rise in housing prices for non-strata and strata properties, respectively. It is also indicated that the application of geographically weighted regression (GWR) can better capture the varying effects of schools across space. Moreover, properties located in the catchment of high-scoring schools in northern Greater Sydney are consistently the most influenced by school quality, regardless of the property type. These findings contribute to a comprehensive understanding of the relationships between public schools and the various submarkets of Greater Sydney. This is valuable for the decision-making processes of home buyers, developers and policymakers.

1. Introduction

The total value of Australian real estate, recently estimated as A$10 trillion (Figure 1), has experienced significant growth over the past few decades [1]. Housing prices in Sydney, one of the most expensive cities in Australia, are influenced by several factors including population growth, interest rates and supply limits relative to strong demand from both local and international buyers. Various theoretical and methodological perspectives on property valuation have been explored by researchers in recent decades [2,3]. The International Association of Assessing Officers (IAAO) defines the automatic valuation model (AVM) as a mathematically based computer software program used to estimate market values. Such models are typically based on the analysis of location, market conditions and real estate characteristics. Hedonic price models (HPM), initially proposed by Rosen [4] based on the fundamentals of Lancaster’s consumer theory [5], are commonly used in property valuation due to their reliability in estimating value, when assuming market equilibrium and perfect competition [6,7].
Appropriate explanatory variables and calibration methodologies are crucial to the success of hedonic price models. Researchers have investigated various hedonic variables at different spatial scales. From a broad perspective, economic and social conditions are the primary driving factors. Among many spatial variables, the proximity of a property to schools, and their quality, are important determinants, especially when the schools have outstanding reputations [8,9]. Black [10] investigated the relationship between public school quality and house prices using hedonic linear regression. The study found that parents in Massachusetts, United States were willing to pay approximately 2.1% more for houses near schools with test scores 5% higher than the mean. Kane, et al. [11] found that housing prices are influenced by both school quality and neighbourhood characteristics within school zones. Sah, et al. [12] explored the effects of proximity to schools as a control variable in the relationship between school quality and housing prices. However, with a deeper understanding of AVMs, researchers have observed that the relationship between school quality and housing prices cannot be fully captured without taking spatial effect into consideration [13].
Fack and Grenet [14] proposed a matching framework to address fixed effects on property prices. This required that the comparison group for a transaction be in the immediate vicinity and transacted during the same school year. The outcomes of their modelling experiments demonstrated that a one-standard-deviation increase in public school performance led to a 1.4% to 2.6% rise in house prices. To control the influence of unobservable factors in Shanghai, China, Feng and Lu [15] used fixed-effects (FE) and random effects (RE) models. It was revealed that the presence of an additional Experimental Model Senior High School (the best quality school) per square kilometre led to a significant 17.1% increase in housing prices. Over the past decade, the difference-in-difference (DID) approach has been commonly used for capturing the impacts of school quality, including in Victoria, Australia [16]; Hangzhou, China [13]; and Seoul, South Korea [17]. This approach can capture variations in market response by comparing treatment and controlled areas, mitigating exogenous influences and thus yielding reliable models [18]. All of these studies found that variations in school quality influenced housing prices.
In addition to the effects of exogenous factors, it has been shown that the distribution and characteristics of house prices, just like other geographical phenomena, are always spatially diverse across submarkets [19,20]. Geographically weighted regression (GWR), which was first introduced by Brunsdon, et al. [21], has been used as a non-stationary technique. Wen, et al. [22] utilised GWR to analyse the relationship between educational facilities, their proximity and quality and housing prices. Using data from 380 counties in Poland in 2018, it is shown by the modelling results of Cellmer, et al. [23] that the impact of the analysed price determinants is spatially differentiated. Furthermore, Wang, et al. [24] proposed a regionally geographically weighted regression (RGWR) method that incorporates zoning discrimination and optimised spatial weights to improve the accuracy of geographically weighted regression (GWR) estimation and conducted an analysis of residential sale prices in Wuhan City. These studies have demonstrated that GWR can effectively model both global and local spatial relationships [25]. Nevertheless, there is still limited research examining the effects of public-school proximity and quality on the prices of various residential properties.
This paper addresses the existing research gap by investigating the spatial heterogeneity effect of public schools on housing prices. To achieve this, three alternative valuation models (AVMs) are employed: a conventional hedonic price model, a spatial lag model and a GWR-based hedonic price model. The research focuses on two distinct types of residential properties, namely strata and non-strata within Greater Sydney. Specifically, strata properties are flats, units, apartments and condominiums with strata titles, whereas non-strata properties refer to houses, semi-detached or terraces with Torrens title (also known as ‘Freehold’) in Australia [26]. This paper is organised as follows: Section 2 outlines the general framework and key regression methods. Section 3 presents a comprehensive case study that investigates the impact of public schools on property prices in Greater Sydney, Australia. Section 4 analyses and compares the modelling outputs and discusses the accuracy and effectiveness of regression options. Finally, Section 5 provides conclusions and limitations of the proposed study, as well as ideas for further research.

2. Materials and Methods

2.1. General Workflow

The research adopted the following workflow (Figure 2). Initial datasets were extracted from specific databases by selecting the study areas and temporal range. These datasets included proprietary sales records (Australian Property Monitors—APM) and other variables (from public and open databases) relating to structure, locational and neighbourhood. Instances with missing values or outliers, which could potentially distort the modelling process, were removed. The cleaned datasets were then used for model fitting using the different regression methods.

2.2. Regression Methods

The hedonic price model (HPM) is a classic method in the field of housing market research. Ordinary least square regression (OLS) has been widely applied to estimate housing prices using specific housing characteristics as independent variables [27]. There are three groups of variables in a typical OLS model: structural (S), location (L) and neighbourhood (N) [28]. Therefore, the general form of the OLS model [29] is:
L o g P r i c e = α + i β i S i + j β j L j   + k β k N k + ε
where the housing price is expressed in logged form, α is a constant term, β i refers to the coefficient for the ith variable X i and ε is the residual error term. Additionally, the number of structural, location and neighbourhood variables are i, j and k, respectively.
The performance of OLS-based AVMs has been shown to be limited by failure to reflect the spatial dependence of housing prices on the value of neighbouring properties [30]. To accommodate this factor, spatial regression models, specifically spatial lag regression (SLR) and geographically weighted regression (GWR) models have been proposed. Amending Equation (1), the spatial lag model is formulated as:
L o g P r i c e = α + ρ W y + i β i S i + j β j L j   + k β k N k + ε
where ρ is an autoregressive parameter that measures the degree of spatial correlation, W is a spatial weights matrix representing the relationship between spatial units and y is a vector of observations on the random variable [31,32]. SLR improves model accuracy relative to OLS and reduces spatial bias [33].
Nevertheless, the accuracy of SLR is still limited as its regression coefficients cannot fully reflect uneven distributions of geographical features and the spatial characteristics of study area sub-regions. GWR models address this by taking the explicit locations of samples into consideration [21,34]:
L o g P r i c e = β 0 ( u i , v i ) + i β k ( u i , v i ) S i + j β j ( u i , v i ) L j   + k β k ( u i , v i ) N k + ε
where u i and v i are the spatial coordinates of sample i, and the remaining parameters are the same as in Equation (1).

2.3. Study Region

Greater Sydney (GSYD) is the largest metropolitan area in Australia, covering a total area of 12,368 km2. According to the latest population census [35], Greater Sydney comprises 2,076,284 private dwellings. The influx of overseas immigrants in recent decades [36] identified as a significant factor influencing the real estate market, driving up housing prices [37]. Median housing prices have risen continuously in parallel with population growth. However, recent studies have revealed the complex and diverse nature of housing prices in GSYD [38]. As Figure 3 illustrates, the GSYD real estate market exhibits distinct regional variations, with inner Sydney emerging as the most active area for housing transactions. Given its expansive area, large population, spatial heterogeneity and consistently high demand for residential properties, GSYD is an ideal test area for the analysis.
The Australian Bureau of Statistics (ABS) aggregates census and other data at several scales. Based on the labour force, Statistical Area Level 4 (SA4) units have populations over 100,000 and may include as many as 500,000 people in metropolitan areas. There are 15 SA4s in Greater Sydney, with different housing transaction densities. To avoid the unreliable results arising from insufficient samples, SA4s with relatively low housing transaction densities (less than 5 transactions/km2) were excluded from further analysis (Table 1).

2.4. Data Processing and Variable Selection

Values of residential properties are mainly influenced by three groups of variables, which represent their structural (S), locational (L) and neighbourhood and environmental characteristics (N) [39,40]. Based on data availability and preliminary experiments (outlier removal and correlation testing), candidate variables were selected for the case study. As shown in Table 2, the housing prices and corresponding structural characteristics of residential properties are derived from the Australian Property Monitors (APM) in the proposed case study. Additionally, the locational (L) and neighbourhood (N) characteristics are obtained from various public and open datasets. Specifically, the logged distance to the nearest points of interest (POIs) or features of interest (FOIs) is obtained from Geoscience Australia. Furthermore, the accessibility and NAPLAN results of public schools are separately downloaded from the NSW Department of Education and the Australian Curriculum, Assessment and Reporting Authority (ACARA). Finally, the remaining neighbourhood characteristics are calculated using census data from the Australian Bureau of Statistics as the reference.
Figure 4 depicts the seven key steps involved in the data processing procedure. Initially, sales data for the second and third quarters of the year 2019 were isolated in order to reduce the impact of seasonality on data sampling [41]. The sales data comprised price, location and structural details (the variables Bedroom, Bathroom, Parking, Landsize and HasStudy in Table 3). Following this, incomplete records and price outliers, specifically the lowest 10% and highest 10%, were removed. The records were then sorted by SA4 using the ABS boundaries within GSYD. Subsequently, the primary and high school catchments within each SA4 were identified using school catchment boundaries for all New South Wales (NSW). All results from the Normalised National Assessment Program–Literacy and Numeracy (NAPLAN) were reclassified. Specifically, NAPLAN is administered to Australian students in years 3, 5, 7 and 9. Scores for Reading, Writing, Spelling, Grammar and Numeracy were divided into five groups (Well above, Above, Close to, Below, Well below) and subsequently numbered as 5 (Well above) to 1 (Well below). These numbers were then associated with the school catchments using the school name giving a normalised NAPLAN score (the mean value of Reading, Writing, Spelling, Grammar and Numeracy numbers) for each primary (Years 3 and 5) and high school (Years 7 and 9) catchment within GSYD (Figure 5). Any catchment with a null result was excluded from further analysis. The values of the locational (L) and neighbourhood (N) variables (Table 3) were estimated as the Euclidean distance between each point of interest (POI) and the sale location. Finally, a join operation was performed to connect sales records and school catchments based on their spatial relationship. This enabled us to link the NAPLAN results to all sales records within the corresponding boundaries.
To understand the influence of variables in different submarkets, the entire dataset was divided into two subsets (non-strata and strata). In the second and third quarters of 2019, there were 13,534 non-strata sales and 8896 strata sales within the included SA4s. The descriptive statistics of the two subsets are in Table 3.

3. Results

Table 4 shows the results of the OLS and SLR models, with logarithm of the sales price as the dependent variable, in each of the residential property groups. The adjusted R2 values of models 1 to 4 are 0.701, 0.608, 0.701 and 0.609, respectively. Thus, the non-strata models explain more than 70% of the variance in the natural logarithm of housing price, while the strata models explain more than 60% of the variance. Each of the structural (S) and neighbourhood (N) variables has a positive influence on housing prices. Among the locational (L) variables, the logarithms of distance to the nearest city centres (L_CityCen), to the coastline (L_CoastLine), to primary school (L_Pri_Sch) and to railway stations (L_RailSta) indicate that proximity has a positive influence, regardless of property type. However, residential properties located near high schools near main roads (Near_Mainroad) have reduced prices.
Subsequently, GWR-based models were applied to examine the impact of public schools while taking spatial heterogeneity into account. The GWR-based models were developed using the mgwr 2.1.1 package [42] in Python 3.7. The pre-processed sales data were imported and the optimal bandwidths and number of neighbours for each local regression, were calculated. Using a bi-square kernel function, the optimal bandwidths are determined as 374.0 and 254.0 for the non-strata and strata subsets. Afterwards, model fitting is implemented with these calibrated bandwidths, and the modelling results are recorded in Table 5. The adjusted R2 values were 0.855 for non-strata and 0.817 for strata prices, indicating that the GWR models better explained price variance than either the OLS or SLR models. Moreover, the relatively lower values of RSS, AICc and Moran’s I of residuals also demonstrated that there was less unexplained variation in the results of models 5 and 6. The coefficients of the school-related variables are presented in Figure 6 and Figure 7 (non-strata and strata subsets, separately).

4. Discussion

The results of OLS and SLR models demonstrate a strong association between the proximity and quality of public schools and housing prices in Greater Sydney. The modelling of the non-strata subset showed that a one-point rise in the normalised NAPLAN score for public primary schools resulted in a 3.9% increase in the natural logarithm of housing prices. Similarly, for high schools, a one-point rise in normalised NAPLAN score leads to a 2.7% (model 1) or 2.8% (model 3) increase in the natural logarithm of housing prices. However, the relationship with proximity is more nuanced, as housing prices were found to be higher near primary schools but lower near high schools. Specifically, a one-unit decrease in the logged distance to a primary school results in a 2.6% (model 1) and 2.7% (model 3) increase in the natural logarithm of housing prices. The strata subset (models 2 and 4) had similar results, with coefficients of 1.4%, 2.9% and −1.0% for the ‘Prim_Ndom’, ‘High_Ndom’ and ‘L_Pri_Sch’ variables, respectively. These overall findings are consistent with previous case studies, which found that proximity to and high quality of public schools have a positive impact on the values of residential properties [43,44]. Nevertheless, in the case of Greater Sydney, there is an exception with the negative influence of the proximity to high schools.
Similar to the findings of OLS and SLR models, GWR-based models have also confirmed that the quality of public schools significantly affects the housing prices of residential properties, regardless of their type. In terms of non-strata subset, properties located within Greater Sydney can receive an increase in the natural algorithm of housing prices of up to 19.2% for each additional normalised NAPLAN score for public primary schools and 27.4% for public high schools (Figure 7A,B), excluding extreme values as shown in Table 5. The North Sydney and Hornsby, Inner South West, Blacktown and Inner West SA4 regions exhibit a relatively high mean coefficient of the ‘Prim_Ndom’ variable (Table 6). Firstly, the northern part of Greater Sydney is known for its superior public education resources, and residents highly value the assessment results of public schools in their school catchments. Similarly, some primary school catchments in the western part of Greater Sydney, such as Ashfield and Burwood Public Schools, are also recognised for exceptional academic performances. Therefore, higher mean coefficients of ‘Prim_Ndom’ is observed within the afore-mentioned parts of Greater Sydney. Additionally, the SA4s of Sutherland, Northern Beaches and Inner South West have shown higher mean coefficients of the ‘High_Ndom’ variable. It is also likely to be led by the availability of exceptional public high school resources in these regions. Furthermore, with the increased age of students and the well-developed public transportation system in Greater Sydney, the proximity to public high schools is less critical than the proximity to public primary schools (Figure 6A,B). This finding aligns with the conclusions from other researchers that the accessibility effect of primary schools on housing price can be more significant [45] and also explains why there are more samples (n = 7114) with negative coefficients of the variable ‘L_Pri_Sch’ than the number of samples (n = 5543) with negative coefficients of the variable ‘L_High_Sch’.
Regarding the strata subset, ‘Prim_Ndom’ with the highest mean coefficient value is observed in North Sydney and Hornsby SA4s (Table 6). Nonetheless, there is a discernible difference between models 5 and 6 as the overall mean coefficient of the ‘Prim_Ndom’ variable is noticeably larger in the strata subset (0.026) than in the non-strata subset (0.002) (Table 5). This specific point of modelling result suggests that the quality of public primary schools has a greater impact on housing prices in the majority of strata properties than non-strata properties. On the other hand, the coefficient distribution for the ‘Prim_Ndom’ and ‘High_Ndom’ variables (Figure 7C,D) also indicates that the quality of public high schools becomes even more significant than that of public primary schools in the SA4s of City and Inner South and Eastern Suburbs. These modelling results have been compared with the ABS 2016 Index of Relative Socio-Economic Disadvantage (IRSD), which indicates the relative level of socio-economic disadvantage [46]. Residents living in SA4s with higher IRSD scores (i.e., low disadvantage) are more inclined to choose private or elite primary schools in order to gain access to high-quality public high schools. Therefore, the quality of a public primary school appears to produce less influence than that of a public high school. This also illustrates the distribution of variables ‘L_Pri_Sch’ (Figure 6C) and ‘L_High_Sch’ (Figure 6D) by highlighting the influence of proximity to public high schools, relative to public primary schools, on prices of strata properties in the inner-city, northern, and eastern Greater Sydney regions.

5. Conclusions

This research examines the relationship between housing prices and various variables, including proximity to and quality of public schools, through a case study in Greater Sydney. Three hedonic price models, employing OLS, SLR and GWR regression, have been tested to provide a systematic analysis of their impact. The influence of public primary school quality is higher for non-strata properties than strata properties, but for public high schools, the strata prices are more affected. Specifically, an increase of one unit in the normalised NAPLAN score of public primary schools leads to a 3.9% rise in the natural logarithm of housing prices for non-strata properties. For strata properties, there is a 1.4% increase in the natural logarithm of housing prices with the same increase. Regarding the NAPLAN-based high school quality, these rates decline to 2.7% for non-strata properties but increase to 2.8% for strata properties. However, the coefficients generated from the whole area model do not capture the impact of the unequally distributed educational resources on various submarkets across the study region.
With the aid of GWR-based hedonic price models, the localised influence of the school-related variables was explored. The GWR-based models have generated more accurate results with less spatial autocorrelation than OLS or SLR in the prediction residuals, which is in line with the prior findings [47]. Non-strata properties located in specific northern and western regions of Greater Sydney are the most influenced by the quality of both public primary and high schools. Moreover, accessibility to public primary schools appears more important than accessibility to public high schools. Regarding the strata subset, public primary school quality is still considered an important factor, especially for strata properties in northern Greater Sydney. In contrast, the positive coefficient for public high school quality is more widespread and includes the SA4s of City and Inner South and Eastern Suburbs. The influence of proximity to public primary and high schools varies substantially across the strata subset, with both high and low (negative) values of the coefficients observed in almost every SA4. It, therefore, appears that accessibility is not as significant as school quality in Greater Sydney. This accords with other studies in Melbourne [16] and Brisbane [48], the second- and third-largest Australian metropolitan areas.
It is acknowledged that the NAPLAN assessment is not a direct measure of overall school quality. Nevertheless, it is still widely accepted as an important indicator for monitoring and evaluating the performance of schools at a national level and has been utilised in other Australian-based AVMs [16,49]. Considering the distinctive characteristics of public and private schools, investigating the impact of both types on housing prices is equally important. Consequently, future research will focus on examining the influence of both public and private schools on non-strata and strata property prices in different sub-regions. Furthermore, future research will also explore the integration of AVMs with AI and machine learning methods, which are anticipated to better identify complex patterns of property valuation within sales data [50,51], and improve the accuracy of AVMs in a further step.

Author Contributions

Conceptualisation, Yi Lu and Vivien Shi; Data curation, Yi Lu and Vivien Shi; Formal analysis, Yi Lu; Methodology, Yi Lu and Vivien Shi; Resources, Christopher James Pettit; Supervision, Christopher James Pettit; Validation, Yi Lu and Vivien Shi; Visualisation, Yi Lu, Vivien Shi and Christopher James Pettit; Writing—original draft, Yi Lu; Writing—review and editing, Yi Lu, Vivien Shi and Christopher James Pettit. All authors have read and agreed to the published version of the manuscript.

Funding

The authors disclose receipt of the following financial support for the research and authorship of this article: This work has been supported by FrontierSI, a not-for-profit company that exists to deliver major benefits to governments, industry and the community in Australia and New Zealand through the application of spatial information. This research was funded through the Cooperative Research Centre Project—Value Australia (RG192482).

Data Availability Statement

The data presented in this study are subject to third-party restrictions. The Property data are available from https://www.apm.com.au/ (accessed on 18 May 2023) with the permission of APM.

Acknowledgments

The authors would like to thank Ian Bishop, an Honorary Professorial Fellow in the Department of Infrastructure Engineering at The University of Melbourne, for his proofreading and revision suggestions.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Mean housing prices of residential properties in Greater Sydney, 2011–2020 (Data source: Australian Property Monitors).
Figure 1. Mean housing prices of residential properties in Greater Sydney, 2011–2020 (Data source: Australian Property Monitors).
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Figure 2. General framework of proposed models (OLS–Ordinary least square regression, SLR–Spatial lag regression, GWR–Geographically weighted regression).
Figure 2. General framework of proposed models (OLS–Ordinary least square regression, SLR–Spatial lag regression, GWR–Geographically weighted regression).
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Figure 3. Location of study region and density of housing transaction (Data source: Australian Property Monitors).
Figure 3. Location of study region and density of housing transaction (Data source: Australian Property Monitors).
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Figure 4. Workflow for data processing.
Figure 4. Workflow for data processing.
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Figure 5. Locations and quality of public schools.
Figure 5. Locations and quality of public schools.
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Figure 6. Coefficient distribution of school proximity variables. Variables ‘L_Pri_Sch’ and ‘L_High_Sch’ represent the log of distance to the public primary and high schools of the school catchments. The green (negative) values mean higher prices nearer to the school.
Figure 6. Coefficient distribution of school proximity variables. Variables ‘L_Pri_Sch’ and ‘L_High_Sch’ represent the log of distance to the public primary and high schools of the school catchments. The green (negative) values mean higher prices nearer to the school.
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Figure 7. Coefficient distribution of school quality variables. Variables ‘Prim_Ndom’ and ‘High_Ndom’ represent the normalised NAPLAN results for public primary and high school catchments. The green (positive) values indicate higher prices in high-quality school areas.
Figure 7. Coefficient distribution of school quality variables. Variables ‘Prim_Ndom’ and ‘High_Ndom’ represent the normalised NAPLAN results for public primary and high school catchments. The green (positive) values indicate higher prices in high-quality school areas.
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Table 1. Housing transaction densities of all SA4s, Greater Sydney region.
Table 1. Housing transaction densities of all SA4s, Greater Sydney region.
SA4 NameTransaction Count
(Year 2019)
Area (km2)Transaction Density
(Transactions/km2)
Mean Housing Price
(Year 2019, A$)
Note
Non-Strata SubsetStrata Subset
Eastern Suburbs414457.7371.782,885,858.751,211,549.64
Inner West439664.5568.101,806,521.73809,119.17
City and Inner South443766.1067.131,544,313.77975,172.73
Inner South West7389163.9345.071,053,518.12582,984.94
Ryde302169.3443.571,634,280.55700,624.71
Parramatta6020162.8436.97928,815.93549,606.95
North Sydney and Hornsby7345275.126.702,212,010.76976,915.99
Blacktown5506240.8822.86733,549.33418,392.71
Northern Beaches4462254.2117.551,957,974.371,002,368.82
Sutherland3884295.8513.131,167,946.45693,319.62
South West4579540.288.48773,194.36412,981.55
Central Coast72381681.014.31658,773.75480,703.61Excluded
Outer South West44621277.243.49655,916.57429,996.68
Outer West and Blue Mountains57593968.131.45666,902.18389,165.66
Baulkham Hills and Hawkesbury33063251.51.021,244,046.74734,168.11
Table 2. The definition and source of selected variables.
Table 2. The definition and source of selected variables.
Variable TypeVariable NameDefinitionData Source
DependentLog_PriceThe natural logarithm of housing priceAustralian Property Monitors (APM)
Independent-Structural (S)BedroomNumber of bedrooms
BathroomNumber of bathrooms
ParkingNumber of carparks
Landsize
(For non-strata subset only)
Land size
HasStudy
(For strata subset only)
Has study room
Independent-Locational (L)L_CityCenLog of distance to the nearest city centreGeoscience Australia
L_CoastLineLog of distance to nearest coastline
L_RailStaLog of distance to the nearest railway station
Near_MainroadWithin 100 m of main roads
(Yes = 1, no = 0)
L_Pri_SchLog of distance to the public primary school of the school catchmentNSW Department of Education
L_High_SchLog of distance to the public high school of the school catchment
Independent-Neighbourhood (N)Professional_perPercentage of professional workersAustralian Bureau of Statistics (ABS)
Overseas_perPercentage of residents born overseas
FamIncome_wThe median family income per week
Age65Plus_perPercentage of residents over 65 years old
Prim_NdomNormalised National Assessment Program–Literacy and Numeracy (NAPLAN) results of year 2018 for primary school catchmentsAustralian Curriculum, Assessment and Reporting Authority (ACARA)
High_NdomNormalised National Assessment Program–Literacy and Numeracy (NAPLAN) results of year 2018 for public high school catchments
Non-strata property: houses, semi-detached or terraces with Torrens title (also known as ‘Freehold’). Strata property: units and apartments with strata titles.
Table 3. Descriptive statistics of non-strata and strata subsets.
Table 3. Descriptive statistics of non-strata and strata subsets.
VariableNon-Strata Subset
Count: 13,534
Strata Subset
Count: 8896
MinMaxMeanStdMinMaxMeanStd
Bedroom1.007.003.600.871.005.001.920.59
Bathroom1.004.001.870.711.002.001.400.49
Parking0.0011.001.921.000.004.001.080.49
Landsize42.6423,868.28801.341178.12----
HasStudy----0.001.000.170.38
L_CityCen6.1010.349.120.594.2910.328.830.81
L_CoastLine4.5410.779.470.983.4710.588.831.22
L_Pri_Sch2.388.416.250.593.167.616.080.62
L_High_Sch2.849.186.870.651.719.106.610.73
L_RailSta3.909.697.480.883.569.696.791.18
Near_Mainroad0.001.000.380.480.001.000.630.48
Professional_per0.0050.1219.828.030.0061.2926.129.48
Overseas_per5.8589.4636.9313.200.0094.4453.7017.56
FamIncome_w754.005250.002228.43626.950.005250.002191.58634.55
Age65Plus_per0.0093.5312.637.240.0087.128.867.48
Prim_Ndom1.005.003.391.201.005.003.851.14
High_Ndom1.005.003.021.211.005.003.431.06
Table 4. The results of ordinary and spatial linear regression models.
Table 4. The results of ordinary and spatial linear regression models.
VariableModel 1:
OLS-Non-Strata
Model 2:
OLS-Strata
Model 3:
SLR-Non-Strata
Model 4:
SLR-Strata
Constant14.893 ***13.531 ***14.909 ***13.513 ***
Independent-Structural (S)Bedroom0.075 ***0.159 ***0.075 ***0.160 ***
Bathroom0.048 ***0.122 ***0.048 ***0.121 ***
Parking0.034 ***0.043 ***0.034 ***0.044 ***
Landsize0.000 ***0.000 ***
HasStudy0.054 ***0.054 ***
Independent-Locational (L)L_CityCen−0.059 ***−0.036 ***−0.058 ***−0.036 ***
L_CoastLine−0.162 ***−0.100 ***−0.161 ***−0.099 ***
L_Pri_Sch−0.026 ***−0.010 ***−0.027 ***−0.010 ***
L_High_Sch0.018 ***0.014 ***0.017 ***0.014 ***
L_RailSta−0.026 ***−0.021 ***−0.027 ***−0.020 ***
Near_Mainroad−0.020 ***−0.012 **−0.020 ***−0.010 **
Independent-Neighbourhood (N)Professional_per0.010 ***0.007 ***0.011 ***0.006 ***
Overseas_per0.004 ***0.003 ***0.004 ***0.002 ***
FamIncome_w0.000 ***0.000 ***0.000 ***0.000 ***
Age65Plus_per0.008 ***0.006 ***0.008 ***0.006 ***
Prim_Ndom0.039 ***0.014 ***0.039 ***0.014 ***
High_Ndom0.027 ***0.029 ***0.028 ***0.029 ***
W_Log_Price −0.003 ***0.003 ***
Modelling resultObservations13,534889613,5348896
Adjusted R2/Spatial Pseudo R20.7010.6080.7010.609
Residual sum of squares (RSS)508.841227.603508.666226.959
AICc−5958.807−7328.704
Moran’s I of residuals0.755 (p = 0)0.707 (p = 0)0.755 (p = 0)0.702 (p = 0)
Significance levels: ** p < 0.01, *** p < 0.001.
Table 5. The coefficients of GWR-based modelling results.
Table 5. The coefficients of GWR-based modelling results.
VariableModel 5:
GWR-GSYD-Non-Strata
Model 6:
GWR-GSYD-Strata
MeanMinMaxMeanMinMax
Constant17.313−2034.7221107.7766.899−1515.9581493.882
Bedroom0.078−0.0040.1990.169−0.0030.332
Bathroom0.055−0.1080.1600.126−0.0160.328
Parking0.027−0.0550.0950.070−0.0190.177
Landsize0.0000.0000.001---
HasStudy---0.038−0.0780.155
L_CityCen−0.146−4.8705.1580.143−3.65311.883
L_CoastLine−0.323−12.9725.7220.293−6.88327.178
L_Pri_Sch−0.003−0.1310.122−0.006−0.1930.113
L_High_Sch0.007−0.1210.1380.012−0.1940.856
L_RailSta−0.011−0.8461.0110.060−1.3054.372
Near_Mainroad−0.029−0.1600.190−0.022−0.1350.071
Professional_per0.001−0.0450.0290.002−0.0210.019
Overseas_per0.000−0.0140.0130.000−0.0080.012
FamIncome_w0.0000.0000.0010.0000.0000.001
Age65Plus_per0.0020.0100.0240.003−0.0130.024
Prim_Ndom0.002−0.3210.1920.026−90.80342.177
High_Ndom0.210−364.997693.1840.264−368.589465.801
Observations13,5348896
Adjusted R20.8550.817
Residual sum of squares (RSS)222.70894.991
AICc−14,300.532−13,058.085
Moran’s I of residuals0.593 (p = 0)0.347 (p = 0)
Table 6. The mean value of quality-related coefficients in all SA4s.
Table 6. The mean value of quality-related coefficients in all SA4s.
SA4 NameNon-Strata Subset (Model 5)Strata Subset (Model 6)
Variable ‘Prim_Ndom’Variable ‘High_Ndom’Variable ‘Prim_Ndom’Variable ‘High_Ndom’
Blacktown0.023−0.0040.0180.006
City and Inner South0.0090.015−0.0190.032
Eastern Suburbs0.000−0.006−0.0130.163
Inner South West0.0240.3150.0140.082
Inner West0.0230.0230.021−0.017
North Sydney and Hornsby0.0340.0010.1210.071
Northern Beaches−0.0890.5100.0352.654
Parramatta0.0170.0120.024−0.001
Ryde−0.0200.020−0.0310.019
South West−0.0230.0430.0280.007
Sutherland−0.0111.0590.017−0.024
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Lu, Y.; Shi, V.; Pettit, C.J. The Impacts of Public Schools on Housing Prices of Residential Properties: A Case Study of Greater Sydney, Australia. ISPRS Int. J. Geo-Inf. 2023, 12, 298. https://doi.org/10.3390/ijgi12070298

AMA Style

Lu Y, Shi V, Pettit CJ. The Impacts of Public Schools on Housing Prices of Residential Properties: A Case Study of Greater Sydney, Australia. ISPRS International Journal of Geo-Information. 2023; 12(7):298. https://doi.org/10.3390/ijgi12070298

Chicago/Turabian Style

Lu, Yi, Vivien Shi, and Christopher James Pettit. 2023. "The Impacts of Public Schools on Housing Prices of Residential Properties: A Case Study of Greater Sydney, Australia" ISPRS International Journal of Geo-Information 12, no. 7: 298. https://doi.org/10.3390/ijgi12070298

APA Style

Lu, Y., Shi, V., & Pettit, C. J. (2023). The Impacts of Public Schools on Housing Prices of Residential Properties: A Case Study of Greater Sydney, Australia. ISPRS International Journal of Geo-Information, 12(7), 298. https://doi.org/10.3390/ijgi12070298

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