Examining Spatial Heterogeneity Effects of Landscape and Environment on the Residential Location Choice of the Highly Educated Population in Guangzhou, China
Abstract
:1. Introduction
2. Conceptual Framework and Methods
2.1. Study Area
2.2. Conceptual Framework of Livability-Oriented Landscape and Environment
- Near positive landscape and environment (NPLE): This comprises of parks, waterfronts, and famous landmarks which enhance the landscape and environment. Parks [24,45,46] and rivers or lakes [25,26,47] not only create a pleasurable landscape but also improve the environment (such as purifying the air) and boost the microclimate (such as reducing the urban heat island effect) [48,49,50]. As places of daily leisure, these elements have a significant impact on residents’ choice of location [21]. A famous landmark is the symbol of a city and may take the form of important landmark buildings, areas, and scenic spots; for example, Beijing’s Tiananmen Square, Oriental Pearl Tower in Shanghai, West Lake in Hangzhou, and Pearl River New Town in Guangzhou. As important landscape sites and symbols of urban centers, landmarks have aesthetic and landscape values [27], and their surrounding areas often have a well-built environment and a refined urban atmosphere, making them a large attraction for residents [28]. In theory, a highly educated population is more inclined to live in areas close to a positive landscape and environment.
- Avoid negative landscape and environment (ANLE): This comprises municipal facilities, factories, and logistics and wholesale centers, which are likely to exert a negative impact on the landscape and environment [51]. Municipal facilities include airports, train stations, coach stations, highways (or elevated roads), railways, gas stations, funeral homes, substations, sewage treatment plants, garbage disposal sites, signal transmission towers, high-voltage corridors, and more. Municipal facilities constitute negative urban landscape regarding visual and psychological aspects. Pollution is observed in noise, radiation, air quality, odor, hygiene, and safety risks. Some case studies have demonstrated the negative impact of these facilities on housing choices (or housing prices) [22,23,29,31,32]. A factory may also have negative impacts on the surroundings, such as noise and air pollution, so the industrial built environment leads to negative landscape features [33,34]. Further, logistics centers and professional wholesale markets tend to gather many freight vehicles around them, which can cause traffic congestion and generate noise and air pollution. Moreovre, the large and complex flow of people in logistics centers and specialized wholesale markets is likely to have a negative impact on urban safety [34]. In theory, the highly educated population often chooses to live away from negative and closer to positive landscapes and environments.
2.3. Research Design
- Building characteristics: Building age (BAGE), building area per household (BAREA), and housing facilities (HF) were chosen as the three factors reflecting “building characteristics [52,53,54,55,56]”. The highly educated population with a higher income is more inclined to live in housing with a newer building, larger building area, and more complete housing facilities.
- Location characteristic: Location is an important factor to consider when choosing a residential location [57]. It is found here from the three perspectives of daily life convenience (DLC), public services accessibility (PSA), and CBD accessibility. Among them, DLC is jointly evaluated by subway transport-, business service-, and office accessibility. PSA consists of basic education-, medical services-, and cultural and physical activity accessibility. Empirical studies have proved the positive impact of these indicators on housing prices from the perspective of characteristic prices [58,59,60], as they are important factors in choosing residential locations [61,62,63,64,65].
- Social characteristics: Population density (POPD) and employment rate (ER) are two main factors reflecting “social characteristics.” POPD demonstrates the degree of residential congestion in the community. ER is an important indicator of community security and attraction. Higher unemployment will lead to higher crime rates [66]. Theoretically, the choice of residential location of a highly educated population is influenced by POPD and ER.
2.4. Data and Data Sources
2.5. Methods
2.5.1. Global Regression Analysis
2.5.2. Geographically Weighted Regression
3. Results and Discussions
3.1. Spatial Heterogeneity in the Residential Location Choice of Highly Educated Population
3.2. Spatial Heterogeneity of Landscape and Environment
3.3. The Effects of Landscape and Environment on the Residential Location Choice of Highly Educated Population Using the Global Regression Model
3.4. Impact of the Spatial Heterogeneity of Landscape and Environment on the Residential Location Choice of Highly Educated Population Based on the GWR Model
3.5. Discussions
4. Conclusions and Policy Implications
4.1. Conclusions
4.2. Policy Implications
- As the old area is densely built, resulting in a poorly built environment, it is recommended that more public space be made available therein by making full use of the land area for increasing green space.
- The old area has a higher concentration of specialized wholesale markets, causing traffic congestion and noise pollution. These markets should be relocated to places with convenient transportation in the suburbs. In their place, urban green spaces, squares, creative industrial parks, science and technology parks, cultural exhibition venues, or urban public event venues should be built to enhance the landscape of the old area and improve environmental conditions.
- It is recommended that more efforts be made to renovate municipal infrastructure in the old area to reduce the negative impact of the polluting municipal facilities on the environment of the old area.
4.3. Limitations and Future Research
Author Contributions
Funding
Conflicts of Interest
References
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Variables (Symbol) | Definition | Evaluation Standard (Score) or Calculation Method |
---|---|---|
Dependent variable | Proportion of highly educated population (PHEP) | Proportion of highly educated population among those aged six years and above expressed as a percentage (%) |
Explanatory Variables—Landscape and Environment | ||
Near positive landscape and environment (NPLE) | Park accessibility | Within 200 m of parks: (9) |
200–400 m of parks: (7) | ||
400–800 m of parks: (3) | ||
Beyond 800 m of parks: (1) | ||
Waterfront accessibility | Within 200 m of a river (lake): (9) | |
200–400 m of river (lake): (7) | ||
400–800 m of river (lake): (3) | ||
Beyond 800 m of river (lake): (1) | ||
Famous landmark accessibility | Within 500 m of famous landmarks: (9) | |
500–1000 m of famous landmarks: (5) | ||
Beyond 1000 m of famous landmarks: (1) | ||
Avoid negative landscape and environment (ANLE) | Avoid municipal facilities | Railway station (500 m), coach station (500 m), highway or elevated road (200 m), railway (80 m), gas station (80 m), funeral home (1000 m), substation (500 m), sewage treatment plant (2000 m), garbage disposal field (4000 m). The base score is 9 and is reduced by 1 for each aversive facility that the community is located near, based on the metrics defined here. |
Avoid factories | Positive standard deviation value examination of the kernel density distribution of factory divided into five grades: community located at 3 sd (1), 2–3 sd (3), 1–2 sd (5), mean to 1 sd (7), and outside the mean (9) | |
Avoid logistics and wholesale centers | Positive standard deviation value examination of the kernel density distribution of logistics and wholesale center divided into five grades: Community located at 3 sd (1), 2–3 sd (3), 1–2 sd (5), meanto 1 sd (7), and outside the mean (9) | |
Control Variables—Building Characteristics | ||
Building age (BAGE) | Community score of average building age | Before 1949 (1), 1949 to 1959 (2), 1960 to 1969 (3), 1970 to 1979 (4), 1980 to 1989 (5), 1990 to 1999 (7), and after 2000 (9). The proportion of each type of household in the community is calculated and multiplied by the corresponding score before adding up (the same calculation method is used for the following building characteristics indicator, BAREA) |
Building area per household (BAREA) | Community score of average building area per household | Lower than 10 m2 (1), 10–20 m2 (2), 20–50 m2 (3), 50–80 m2 (4), 80–110 m2 (6), 110–140 m2 (7), 140–200 m2 (8), and over 200 m2 (9) |
Housing facilities (HF) | Cooking fuel | No gas (electricity, coal, firewood, other) (1), gas (9) |
Pipe water | No tap water (1), tap water available (9) | |
Kitchen | No kitchen (1), shared kitchen with other households (5), independent kitchen (9) | |
Bathroom | Shared use of other forms of toilet (1), independent use of other forms of toilet (3), shared use of toilet (5), independent use of toilet (9) | |
Bathing facilities | No bathing facilities (1), other forms of bathing facilities (5), uniform hot water supply or home-installed water heaters (9) | |
Control Variables—Location Characteristics | ||
Daily life convenience (DLC) | Subway accessibility | Within 200 m of subway stations (9), 200–400 m of subway stations (7), 400–800 m of subway stations (5), 800–1500 m of subway stations (3), and beyond 1500 m of subway stations (1) |
Business services accessibility | Positive standard deviation value examination of the Kernel density distribution of business service facility (supermarkets, convenience stores, shopping malls, respectively) divided into five grades: Neighborhood located at 3 sd (9), 2–3 sd (7), 1–2 sd (5), mean to 1 sd (3), outside the mean (1) | |
Office accessibility | Positive standard deviation value examination of the Kernel density distribution of office building (office buildings, government agencies, institutions, respectively) divided into 5 grades: Neighborhood located at 3 sd (9), 2–3 sd (7), 1–2 sd (5), mean to 1 sd (3), and outside the mean (1) | |
Public services accessibility (PSA) | Basic education accessibility | Within the community: provincial key elementary school (9), municipal key elementary school (7); others without provincial key elementary schools or municipal key elementary schools: within 500 m (5) from provincial and municipal key elementary schools (5), within 500 m from ordinary elementary schools (3), 500 m away from all primary schools (1) |
Medical services accessibility | Within 2000 m from third-class hospitals (9), over 2000 m away from third-class hospitals and within 2000 m from general hospitals (5), over 2000 m away from third-class hospitals and general hospitals (1) | |
Cultural and physical activities accessibility | Total number of cultural centers, libraries, museums, youth activity centers, science and technology centers, and major stadiums within 1000 m of the community: ≥25 (9), 20–24 (8), 15–19 (7), 10–14 (6), 8–9 (5), 6–7 (4), 4–5 (3), 2–3 (2), 0–1 (1) | |
CBD accessibility (CBDA) | Distance from CBD | Straight-line distance to the CBD (IFC building); normalize the data to 1–9 points; the closer to the CBD, the higher the score |
Control Variables—Social Characteristics | ||
Population density (POPD) | Population density | Population per square kilometer of construction land (%) |
Employment rate (ER) | Employment rate | Proportion of employed population to economically active population (%) |
Coefficient | Std. Error | t/z-Value | p | |
---|---|---|---|---|
Intercept | −9.8672 *** | 0.9452 | −10.4393 | 0.0000 |
NPLE | 0.3438 *** | 0.0458 | 7.5084 | 0.0000 |
ANLE | 0.3341 *** | 0.0974 | 3.4312 | 0.0006 |
BAGE | −0.3352 *** | 0.1191 | −2.8144 | 0.0050 |
BAREA | 2.0697 *** | 0.1160 | 17.8502 | 0.0000 |
HF | 1.7585 *** | 0.2961 | 5.9381 | 0.0000 |
DLC | 0.1057 ** | 0.0494 | 2.1407 | 0.0325 |
PSA | 0.3419 *** | 0.0654 | 5.2308 | 0.0000 |
CBDA | 1.5141 *** | 0.1126 | 13.4524 | 0.0000 |
POPD | 0.0858 *** | 0.0239 | 3.5921 | 0.0003 |
ER | 0.0831 | 0.1645 | 0.5052 | 0.6135 |
R-squared: 0.5755; AIC: 3307.51 |
Min | Lower Quartile | Median | Upper Quartile | Max | STD | |
---|---|---|---|---|---|---|
Intercept | −160.5585 | −15.3674 | −7.7072 | −4.0204 | 336.7557 | 8.4113 |
NPLE | −1.9605 | 0.0458 | 0.2450 | 0.3276 | 6.7607 | 0.2089 |
ANLE | −36.4074 | 0.0323 | 0.3118 | 0.7647 | 31.6739 | 0.5429 |
BAGE | −19.2604 | −0.9577 | −0.3926 | −0.0560 | 10.0277 | 0.6684 |
BAREA | −6.1611 | 1.9259 | 2.4161 | 2.9454 | 7.7807 | 0.7558 |
HF | −26.0794 | 0.5047 | 1.2780 | 3.8587 | 17.1025 | 2.4862 |
DLC | −6.1591 | −0.0216 | 0.0868 | 0.1833 | 10.8584 | 0.1519 |
PSA | −2.8508 | −0.1394 | 0.1279 | 0.3941 | 2.9337 | 0.3955 |
CBDA | −8.2355 | 0.4765 | 1.8765 | 2.5240 | 14.5504 | 1.5178 |
POPD | −1.6512 | −0.0265 | 0.0020 | 0.1069 | 1.8393 | 0.0989 |
ER | −51.0185 | −1.2040 | −0.1115 | 0.7883 | 26.0588 | 1.4769 |
R-squared: 0.8872; Log likelihood: −739.02; AIC: 2597.86 |
p < 0.05 | + | − | |
---|---|---|---|
NPLE | 50.81% | 47.80% | 3.01% |
ANLE | 48.02% | 44.28% | 3.74% |
BAGE | 35.41% | 5.65% | 29.77% |
BAREA | 86.44% | 84.90% | 1.54% |
HF | 28.01% | 27.57% | 0.44% |
DLC | 59.82% | 47.87% | 11.95% |
PSA | 21.19% | 16.35% | 4.84% |
CBDA | 59.68% | 51.83% | 7.84% |
POPD | 49.27% | 31.74% | 17.52% |
ER | 55.50% | 22.65% | 32.84% |
Old Area | Core Area | Urban District | Suburban | |
---|---|---|---|---|
NPLE | 99.58% | 55.77% | 30.97% | 27.04% |
ANLE | 94.96% | 43.91% | 37.48% | 16.61% |
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Wang, Y.; Wu, K.; Qin, J.; Wang, C.; Zhang, H. Examining Spatial Heterogeneity Effects of Landscape and Environment on the Residential Location Choice of the Highly Educated Population in Guangzhou, China. Sustainability 2020, 12, 3869. https://doi.org/10.3390/su12093869
Wang Y, Wu K, Qin J, Wang C, Zhang H. Examining Spatial Heterogeneity Effects of Landscape and Environment on the Residential Location Choice of the Highly Educated Population in Guangzhou, China. Sustainability. 2020; 12(9):3869. https://doi.org/10.3390/su12093869
Chicago/Turabian StyleWang, Yang, Kangmin Wu, Jing Qin, Changjian Wang, and Hong’ou Zhang. 2020. "Examining Spatial Heterogeneity Effects of Landscape and Environment on the Residential Location Choice of the Highly Educated Population in Guangzhou, China" Sustainability 12, no. 9: 3869. https://doi.org/10.3390/su12093869
APA StyleWang, Y., Wu, K., Qin, J., Wang, C., & Zhang, H. (2020). Examining Spatial Heterogeneity Effects of Landscape and Environment on the Residential Location Choice of the Highly Educated Population in Guangzhou, China. Sustainability, 12(9), 3869. https://doi.org/10.3390/su12093869