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Article

Intermediate Effect of the COVID-19 Pandemic on Prices of Housing near Light Rail Transit: A Case Study of the Portland Metropolitan Area

1
Department of Urban Planning and Engineering, Hanyang University, 206, Wangsimni-ro, Seongdong-gu, Seoul 04763, Korea
2
Nohad A. Toulan School of Urban Studies and Planning, Portland State University, 506 SW Mill Street, Portland, OR 97201, USA
*
Author to whom correspondence should be addressed.
Sustainability 2022, 14(15), 9107; https://doi.org/10.3390/su14159107
Submission received: 20 June 2022 / Revised: 18 July 2022 / Accepted: 22 July 2022 / Published: 25 July 2022
(This article belongs to the Special Issue Pandemic and the City: Urban Issues in the Context of COVID-19)

Abstract

:
This study explored the dynamics of a residential property value premium for proximity to a light rail transit (LRT) station in the intermediate term (roughly two years) since the pandemic. We applied a longitudinal quasi-experimental design using repeat sales data from the Portland Metropolitan Area, Oregon. Our results indicate that the effect of the pandemic on prices of housing near LRT stations differs between single-family and multi-family markets. Since the pandemic outbreak, there has been no statically significant difference in the price appreciation between single-family (SF) housing within an LRT service area and otherwise similar SF homes; however, for multi-family (MF) homes, those within an LRT service area have experienced a 3.0% lower price appreciation rate than MFs outside such areas with similar characteristics. Our findings help better highlight the impact of the pandemic on the real estate market and can inform discussions about longer-term changes in post-COVID cities and their planning.

1. Introduction

The COVID-19 pandemic has been reported to have shifted how people travel and where they prefer to live [1,2]. At the peak of the pandemic, there was a sharp decline in overall travel. As lockdown policies began to ease, travel started to slowly resume, with transit ridership being the slowest to recover. Additionally, many scholars and journalists postulate that the crisis will transform our relationship with location, as people adjust their work and daily lives [3]. For instance, since the pandemic, the preference has shifted toward suburban and exurban areas from denser urban areas such as central business districts [4]. These changes raise the question of whether the COVID-led disruptions have been reflected in the real estate market, especially for homes proximate to light rail transit (LRT) stations, which typically enjoy a price premium compared to otherwise similar homes.
Therefore, we attempted to answer how the residential property (i.e., single-family and multi-family housing) price premium for proximity to LRT stations was affected by the COVID-19 pandemic in the intermediate term (roughly two years). We applied a longitudinal quasi-experimental design using repeat sales data with a case study of the Portland Metropolitan Area, Oregon, which allowed us to quantify the effects of the pandemic on single-family and multi-family home markets. While it is premature to assess the long-term impacts of COVID-19 on the real estate market, as its effects are still unfolding, this paper contributes by (1) providing a timely snapshot of the effects of the COVID-19 pandemic on the housing market in the intermediate term in the Portland Metropolitan Area and (2) helping inform discussions about changes in the post-COVID cities and their planning.
The remainder of this paper is structured as follows. Section 2 summarizes and synthesizes the previous literature. Section 3 presents the research design, including the methodological approaches and data used in this research. Section 4 presents the findings. Finally, Section 5 and Section 6 discuss the results and conclude this study.

2. Literature Review

We begin with a literature review of two topics: (1) an overview of the property value premium resulting from the proximity to public transit facilities, particularly regarding light rail transit (LRT) stations in the U.S. context; (2) the impacts of COVID-19 on transit use and the real estate market. We then synthesize the theoretical frameworks and findings and present the research gaps and our research questions.

2.1. Property Value Premium

There is some debate about whether a city should build a transit system when considering its costs and benefits, although transit systems have the potential to generate positive economic, social, and environmental externalities [5,6]. On the one hand, it is essential to develop and improve public transportation systems to form sustainable urban environments, since these modes of transportation can contribute to an increased willingness to pay in exchange for improved accessibility for citizens, particularly marginalized population groups [7]. On the other hand, the resulting transit-induced capitalization into property values has made many scholars express their concerns; for instance, vulnerable people may be forced to move out or live in substandard housing in areas with better transit accessibility [8]. To achieve sustainable urban development, it is essential to gain a deep understanding of the land value capture mechanism in relation to the accessibility of public transportation. This understanding can serve as the foundation for developing strategies to address the detrimental effects associated with the value premium while still delivering the benefits, which, in turn, helps in attaining a sustainable urban environment.
Accordingly, the well-known adage in the real estate industry is “location, location, location”. This implies that location advantages such as good transit accessibility can impact on property values positively [9], known as a property value premium (also known as value uplift). In addition, economic theories have established the well-known downward-sloping bid–rent curve that demonstrates the trade-off between transportation costs and land values, whereby lower transportation costs in accessible locations result in higher land values [10,11,12,13].
Furthermore, the ample empirical literature has generally confirmed the association between the transit infrastructure proximity and the values of the surrounding properties [14,15,16]. More specifically, regarding the LRT proximity effect in the U.S. context, Cervero and Duncan [17] found the capitalized benefits to be associated with proximity benefits in residential properties. Additionally, Hess and Almeida [18] observed the association between proximity to an LRT station and residential property value premiums in Buffalo, New York. Overall, the range of elasticity is been between −0.01 and −0.10, although the elasticity can vary depending on many factors, such as the study area and methodological approaches. The meta-analysis performed by Hamidi et al. [19] found the premium rates for distances of 0 to 0.25 miles (5.40) and 0.25 to 0.5 miles (5.86) when using discrete distance bands.
Beyond the static effect with a single equilibrium, another body of empirical studies has identified a causal relationship, whereby transit accessibility can increase property values [20,21,22]. For example, Kim and Lahr [23] analyzed the impact of the Hudson–Bergen Light Rail on residential property values in New Jersey and confirmed that transit proximity led to a value uplift.
Moreover, the previous literature started to examine the effect of transit from a temporal dynamic perspective [16,24,25,26]. For instance, Knaap et al. [27] found that the announcement of plans for the LRT system in Washington County, Oregon, triggered a premium. The announcement of the transportation projects generated a net positive premium, which can be translated into an anticipated capitalization effect [28,29]. Golub et al. [30] also found that the prices of properties significantly and differently responded to the five planning phases of the LRT system in Phoenix, Arizona.
Interestingly, previous studies have suggested a “faded-out” property value premium when transit systems start to operate [31]. Yan et al. [32] revealed that while proximity to an LRT station in Charlotte, North Carolina, had a significant and negative impact on home prices before the operation, the effects became insignificant during the operation phase. An analysis by Cao and Lou [24] indicated that a premium for single-family housing existed after the announcement of the LRT system in Minneapolis but not before its operation. Ke and Gkritza [33] found that while the property value increased after the announcement of the LRT project, the premium reduced or disappeared in size after the LRT began operating.
In summary, a body of empirical studies has suggested that a premium for proximity to LRT exists, and that the premium can vary over time and even dissipate.

2.2. Impacts of COVID-19 Pandemic

2.2.1. Transit Ridership

The pandemic’s drastic impact on transit usage is well-known. Due to lockdowns, business closure, shifting to working from home, and travel restrictions, such as “stay-at-home” orders, as well as the potential risk of spreading COVID-19 among passengers [2], transit ridership crashed [34,35,36]. For example, in the U.S., the Washington Metropolitan Area Transit Authority [37] reported that Metrorail ridership decreased by 90% at the end of March 2020. Likewise, Hu and Chen [36] found that the COVID-19 pandemic resulted in an average 72.4% decline in transit ridership in Chicago, Illinois. Nonetheless, Jung [38] found that transit ridership in low-income groups remained unchanged during the COVID period.

2.2.2. Real Estate Market

Several studies have explored the changes in residential location preferences due to the COVID-19 pandemic. For instance, Nanda et al. [4] highlighted that despite the advantages of central business districts, such as better access to amenities and employment opportunities, the housing location preference shifted toward secluded housing in the suburbs immediately after the pandemic outbreak. Similarly, Ramani and Bloom [39] found that since March 2020, the average rental and housing prices in the largest U.S. metropolitan areas had declined or remained flat in the central business districts and the highly-populated areas, while prices increased in areas with lower population density. In addition, Liu and Su [40] examined aggregate housing price data in the U.S. and found that the pandemic caused a substantial decrease in housing demands in highly-populated areas. In sum, these findings revealed that there had been a shift in housing demand from dense urban areas to more spacious suburbs.

2.3. Research Gaps

The takeaway from the above literature review is that there is an interesting yet unexplored area of research. So far, the existing research on the impacts of the COVID-19 pandemic has focused on the direct impacts, such as transit ridership and the overall real estate market. Despite the many studies on the property value premium related to LRT proximity and its temporal dynamics, none of the previous studies have examined how a pandemic influences this property value premium. Therefore, we asked how the residential property price premium for proximity to LRT was affected by the COVID-19 pandemic in the intermediate term, using the Portland Metropolitan Area, Oregon, as a case study.

3. Research Design

This section describes the study area, data, and methodological approaches used in this study.

3.1. Study Area

3.1.1. Portland Metropolitan Area

We chose the Portland Metropolitan Area in Oregon, U.S., as our case study area for the following reasons. First, the study area has a light rail transit (LRT) system. The regional transportation agency, the Tri-County Metropolitan Transportation District of Oregon (TriMet), operates the regions’ LRT system, MAX. The first MAX line (the Red Line) opened in 1986. Second, since the entire MAX system was well situated before COVID, we can avoid validity issues related to different property value premiums based on different operational phases. Specifically, by 2015, the system had expanded to 5 colored-designated lines covering around 60 miles. As of 2019, the daily ridership was approximately 120,000 [41].

3.1.2. Timeline

We identified two time periods for the Portland case study in the quasi-experimental design (see Table 1). We chose the period between January 2016 and February 2020 as the pre-COVID period. Since property prices respond differently at each phase of the development of an LRT system [30], choosing LRT lines from the same operational phase will reduce the variation in price premiums and facilitate an appropriate comparison of property values in an LRT service area between the pre-COVID and peri-COVID periods. Thus, we identified January 2016 as the beginning of the baseline period because all current operating LRT lines were established and in operation by the end of 2015.
We selected the period between March 2020 and December 2021 as the peri-COVID period, as the first presumptive case was identified in February 2020 in the Portland region, and Oregon Governor Kate Brown first issued a “stay-at-home” order in March 2020. Thus, the pandemics’ impact on property value premiums, if any, may have started to manifest from March 2020.
Although roughly two years of the peri-COVID period may not be sufficient to capture the long-term effects of the pandemic on housing markets, as they could still be unfolding, we focused on studying the intermediate-term effects on the housing markets. Furthermore, the previous literature has suggested that the real estate market reacted to COVID-19 within a short time in the U.S. [42]. Yoruk [43] also found that the housing market reaction to the pandemic was immediate across major cities in the U.S., using 13 months of sales data.

3.1.3. Broad Trends in Transit Ridership and Residential Property Values in Portland

Figure 1 and Figure 2 present the broad trends in transit ridership and residential property values for the Portland region in the pre- and peri-COVID periods. Figure 1 shows that before the pandemic, the estimated weekly boarding number for light rail transit was approximately 720,000. The LRT ridership decreased by around 35% in March 2020 and further declined by another 50% in April 2020. However, since April 2020, the ridership has stabilized, with an average of about 250,000 weekly boardings. The Case–Shiller home price index values in Figure 2 show an approximately 25% increase in home prices in the Portland area between January 2020 and November 2021, driven mainly by the Federal Reserve’s push for low-interest rates to mitigate the pandemic’s impact on the macro-economy.

3.2. Methodological Approach

Our methodological approach quantified the pandemic’s impact on the residential property value premium of light rail transit proximity (MAX in the Portland Metropolitan area) in the intermediate term by modeling homes near LRT stations as the treatment (treated) group in a quasi-experiment design. The impact is called the treatment effect in this paper. The treatment effect is the difference in the appreciation of home prices near stations and between the pre-COVID period (January 2016~February 2020) and the peri-COVID period (March 2020~December 2021).

3.2.1. Overview of the Four-Step Process

We employed a four-step process of the longitudinal quasi-experimental design to estimate the treatment effects of single-family and multi-family homes (see Figure 3). We first collected and cleaned the home sales data and selected homes with at least one repeat sale between the pre-COVID and peri-COVID period. Second, we identified homes inside MAX station areas as the treated group and used a propensity score matching (PSM) method to identify homes outside station areas for the control group, whose characteristics matched those in the treated group. Third, we developed spatial models with the matched treated and control pairs to quantify the treatment effect. Finally, we conducted a robustness test to ensure the validity of the estimated treatment effect.
Our methodological approach has several advantages. First, the repeat sales data helped us alleviate the endogenous bias that mires traditional hedonic regression models [44]. Second, the PSM method approximates a randomized experiment [45,46], which addresses potential confounders by ensuring comparability across measured covariates between the treated and control groups [47]. Third, the spatial models control the spatial effects and overcome biases in the results for typical a-spatial hedonic models. Fourth, the robustness test validated our final results. We provide details on each step in the following subsections.

3.2.2. Step 1: Repeat Sales Data Collection and Cleaning

We used repeat sales data for single-family and multi-family homes in the Portland Metropolitan obtained from the Regional Land Information System (RLIS) of the Oregon Metro. Homes with one sale transaction in the pre-COVID period and one in the peri-COVID period were selected.
We cleaned the data with the following process. First, observations with missing sale price information were removed. Second, we used the same filter as Dong [48] and excluded transactions with sale prices lower than $50,000 (including records with sale prices equaling zero) or higher than $2 million, as such transactions were unlikely to occur in the study area. Third, we dropped properties that changed their primary characteristics, including the lot size, building size, and land use.
Lastly, we removed transaction records when the appreciation rate between the two periods was below the 2nd percentile or above the 98th percentile for the collected samples (e.g., around 1100% price change between the two periods) for the following reasons. Specifically, a critical assumption of a repeat sale analysis is that the innate characteristics of properties should not change throughout the study period. However, our data sources did not have information on the renovation, remodeling, or other improvements to a property. Additionally, it is important to rule out the impacts of other changes on the value, such as the increased quality of nearby schools and temporary closures of nearby amenities, which were not considered in our data set. Thus, we relied on the cut-off as a filter for properties with significant improvements between transactions. Moreover, because the repeat sales analysis approach is sensitive to extreme observations [49], we tried to exclude observations with extreme appreciation rates, such as the rate of around 1100% between the two periods.

3.2.3. Step 2: Propensity Score Matching

We used the propensity score matching (PSM) method to construct matched pairs of treated and control homes with similar observed characteristics and to overcome non-random assignment bias in the observational studies [50]. This step helped us to establish the direct causal effects of the intervention (the pandemic in our paper) on the outcomes.
Specifically, we used homes within a half-mile from their nearest MAX station, a common specification of previous studies on property value premiums [51], as observations in the treated group, while homes outside a half-mile buffer were in the candidate pool for the control group. The Portland region has a 14.7-mile commuter rail (WES) system serving Beaverton, Tigard, Tualatin, and Wilsonville. We excluded observations in the service area of the commuter rail system from the treated group, as the effect of the pandemic on commuter rail may differ from that on LRT.
We set a caliper width of 0.2 when identifying matched pairs for the unit in the treated group with the nearest-neighbors method. The caliper distance defines a tolerance level for the difference in propensity scores between the treated and the matched control group [52]. We used this caliper width for the following reasons. First, when using calipers with a width equal to 0.2, approximately 99% of the bias due to the measured confounders can be eliminated [53]. Additionally, a caliper width of 0.2 produced superior performance when estimating treatment effects in an experimental study by Wang et al. [52].
The covariates used to estimate the propensity scores included structural characteristics (e.g., lot size), locational factors (e.g., distance to central business district), and neighborhood characteristics (e.g., median household income). Table 2 below lists the 17 covariates used in PSM with a description and data source, while Table 3 shows the descriptive statistics. For the covariate balance diagnostics, we used the standardized differences insensitive to the sample size [54] and paired t-tests [55].

3.2.4. Step 3: Spatial Econometrics Model

After finding matched pairs of treated and control groups, we used spatial lag (spatial autocorrelation, SAR) and a spatial error model (SEM) to account for the spatial autocorrelation [59,60] in estimating the treatment effect. We used the uniform kernel weight matrices; specifically, the average number of links was 84.54 in the model for single-family housing and 126.59 for multi-family housing.
The equation for SAR is as follows:
y = β 0 + β 1 T + β 2 T i m e + β X + ρ ω y + u
The SEM equation is as follows:
y = β 0 + β 1 T + β 2 T i m e + β X +   γ ω ϵ + v
The dependent variable y in both equations is the log-transformed appreciation rate of a home y = log ( P r i c e p e r i C O V I D / P r i c e p r e C O V I D ) , which is a common practice in the previous literature with repeat sales data [20,23,48]. Our focus of the model was on estimating parameter β 1 (the treatment effect) for the dummy variable of matched treatment group T . We also controlled the length of time ( T i m e ) between two transactions to address seasonality. Lastly, we possibly needed to incorporate any covariates X that were not perfectly matched via PSM. However, the results of balance diagnostics revealed no need to control for any covariates used during PSM.
The SAR and SEM approaches differ in how the error term is defined [61]. Specifically, in SAR, ρ ω denotes the spatially lagged dependent variable ρ (rho) for the weight matrix ω . In the SEM, γ denotes the spatial error parameter (lambda), ϵ denotes the error term in the a-spatial model weighted by weight matrix ω , u is a vector of error terms in the spatial lag model, and v is the independent model error in the spatial error model [62,63]. Table 4 and Table 5 illustrate the covariates used in spatial econometrics models after data processing and PSM.

3.2.5. Step 4: Robustness Test

We tested whether our method and findings were robust in detecting changes in property value premiums over time in the Portland region in the absence of an exogenous shock such as the pandemic. This test was crucial to examine whether the treatment effect estimated in this paper was not due to the overall preference or trends in the housing market in the region.
We explored the effect of a hypothetical event happening on 1 January 2019. The method used here was identical to what we used throughout the paper for the pre-COVID and peri-COVID periods, except the dates for period 1 (the pre-hypothetical event) and period 2 (the peri-hypothetical event). The pre-hypothetical event period was between January 2016 and December 2018, while the peri-hypothetical event period was between January 2019 and February 2020.

4. Results

This section is divided into three subsections: (1) propensity score matching; (2) a spatial econometrics model; (3) a robustness test.

4.1. Propensity Score Matching

4.1.1. Balance Diagnostics

After the data cleaning process and propensity score matching (PSM) with a caliper width of 0.2, we obtained 860 single-family homes and 376 multi-family homes in matched treated and control groups (see Figure 4). Since none of the covariates were above 0.25 [64] in Table 6, the PSM performed well, and all covariates were balanced between the two matched groups. Furthermore, the p-values of the paired t-tests in Table 6 indicate that the pairs of observations in the matched treated and control groups showed no statistically significant difference across all 17 covariates in both housing markets. Thus, we constructed almost perfect matches and approximated random experiments, indicating no need to control for any of the covariates used in PSM when estimating the treatment effect in spatial econometrics models.

4.1.2. Descriptive Statistics of Matched Treated and Control Groups

Figure 5 shows the distributions of appreciation rates of single-family and multi-family homes in the two matched groups across the region. It visually reveals that single-family and multi-family homes with lower appreciation rates may be clustered near light rail transit (MAX in our study area) stations (green dots). Additionally, Table 5 indicates that the average appreciation rate for the treated group in both single-family and multi-family housing markets was lower than that of the control group. Specifically, the mean differences in log-transformed appreciation rates were −0.004 in the single-family housing market and −0.029 in the multi-family housing market.

4.2. Spatial Econometrics Model

4.2.1. Final Model Specification

Regarding the final model selection, we found that the spatial error model (SEM) performed better than the a-spatial (OLS) and spatial lag models (SAR) in both single-family and multi-family housing market analyses. First, Moran’s I [65] results revealed that the SEM and SAR performed better than the OLS due to the spatial dependency in the residuals (see Table 7). More importantly, the Lagrange multiplier (LM) tests [66] in Table 7 indicate that the SEM was superior to the SAR due to the insignificant results for RLMlag in the single-family housing market and LMlag in the multi-family housing market. Furthermore, the lower values of the Akaike information criteria (AIC) in the SEM models support this conclusion. Therefore, we concluded that the SEM was a higher-order model, so we focused on interpreting the results from the SEM, although we include the results of the two other models for comparison in the following subsection.

4.2.2. Treatment Effect

Table 8 shows the results of the a-spatial (OLS), spatial lag (SAR), and spatial error (SEM) models. In the single-family housing market, the estimated treatment effect indicates that observations in the treated group showed a negative but insignificant treatment effect compared to those in the matched control group (the zero-value default in the dummy variable). Conversely, the total impact of the treatment effect in the multi-family housing market was −0.030 with a lambda of 0.011. This suggests that the appreciation rate is 3.0 percent lower for a multi-family home located in a light rail transit service area than otherwise similar homes. Note that the negative value indicates the lower appreciation that multi-family homes near stations showed between the pre-COVID-period (January 2016~February 2020) and the peri-COVID-period (March 2020~December 2021), well after Portland’s LRT system had already been established and supposedly any property value premium from the LRT had already been reflected in the price. The estimated treatment effects of the OLS, SAR, and SEM were consistent in direction and significance.

4.3. Robustness Test

We conducted an additional analysis to explore whether our method would detect any changes in the premiums for single-family and multi-family homes without the pandemic shock. Here, we tested the effect of a hypothetical event happening on 1 January 2019. Table 9 below reveals that none of the treatment effects were significant even at the 0.1 significance level in the OLS, SAR, and SEM, indicating our method did not estimate a significant change in the premium for LRT absent of the pandemic. This result proves that the estimated treatment effect in Table 8 is robust.

5. Discussions

5.1. Single-Family Housing Market

We found an insignificant effect of the pandemic on the prices of single-family homes near LRT stations. This finding deserves further discussion. Florida et al. [67] argued that the pandemic might lead to a series of changes in the short term at the neighborhood level due to social scarring, the lockdown, the need for measures against future health risks, and changed preferences in the urban built environment. However, it is unlikely to change long-standing spatial patterns. Although COVID-19 has influenced our daily lives, such as reduced transit ridership and changed residential location preferences, our result suggests that in the intermediate term, transit proximity has not significantly changed its appeal in the single-family housing market.
Additionally, homebuyers may think that the disruptions from the COVID-19 pandemic, even though dramatic and swift, will be short-lived. If they perceive the pandemic as a short-term disruption, the location preference established over a long time may not change in a significant way. Furthermore, well after Portland’s LRT system was established, and supposedly any property value premium for the LRT had already been reflected in the price, significant disruptions such as the COVID pandemic did not significantly impact the LRT premium.
Furthermore, Tan and Ma [68] examined how personal attributes, travel attributes, and the perception of COVID-19 influenced choosing rail transit in a hypothetical situation where people were resuming their work in the post-COVID 19 era. They found that the walking time from home to the nearest transit station would negatively impact the commuter’s choice of rail transit; that is, the research implies that a shorter walking time to the transit station would not lose its appeal in the single-family housing market, given the insignificant impact of the pandemic.

5.2. Multi-Family Housing Market

Conversely, the significant negative effect on multi-family homes proximate to transit stations indicates that they were slightly losing their premium during the pandemic. The COVID-19 outbreak has generated unusual travel behavior changes, particularly regarding transit use. For instance, people would likely favor private vehicles rather than public transit in the post-COVID-19 era [3] because they tend to reduce risk-taking behavior when living through risk events [69]. For instance, nearly 70% of transit riders have changed their travel behavior during the pandemic in the Portland region (see Figure 1). Therefore, we believe that it may disrupt the demand for multi-family homes, resulting in decreased property values, as transit service areas generally represent a market with multi-family housing demands sensitive to proximity to amenities and social services.
Moreover, the finding suggests that in the multi-family housing markets in the region, the impact of the pandemic did not become “decoupled” from the transit utility, as the actual ridership volume significantly declined, while the property premiums did decrease considerably. Specifically, due to the significant decline in transit ridership, the proximity that offers transit users more convenience, easy access to transit, and a lower probability of contacting people on the journey to that station may not be important in the multi-family housing market.

6. Conclusions

Whether the preference for neighborhoods with better transit accessibility remained during the pandemic was a research question that had not been investigated. To fill this gap, we used repeat sales data with a quasi-experimental design that would allow us to establish a causal relationship (if the assumptions of our models are reasonable). We found different results for the single-family and multi-family housing markets. Specifically, during the COVID-19 pandemic, single-family homes within a half-mile from the nearest station showed an insignificant difference in the appreciation rate compared to those with similar characteristics. In contrast, multi-family homes within a half-mile from the nearest station received a 3.0% lower appreciation rate than homes with similar characteristics. Moreover, the robustness test offered evidence that the findings were robust. We believe our study contributes to a growing body of knowledge about the property value premiums associated with LRT proximity and COVID-induced disruptions in our life. Additionally, the findings will help broaden the discussion regarding the changes in post-COVID cities and their planning implications.
We acknowledge a few limitations of this study. First, our analysis did not consider other changes due to the pandemic, such as temporarily closed amenities and unemployment. This may be problematic if the pandemic affects the LRT service area differently (besides the prices) than the rest of the region. Second, our data source does not provide common home attributes, including the numbers of bedrooms and bathrooms or interior design details. Third, our models did not include all factors that homebuyers value when on the housing market, such as school quality and other amenities. Fourth, we do not know how generalizable our results from the Portland area are to other regions in the U.S., let alone across the globe.
For future research, in addition to addressing the limitations listed above when better data become available, we plan to revisit this study with updated data to estimate the longer-term effect of the pandemic. Additionally, since our analysis did not address the relationship between the decreased transit ridership and property value premium, further research is needed to explore this connection.

Author Contributions

Conceptualization, S.L.; methodology, S.L. and L.W.; formal Analysis, S.L. and L.W.; data Curation, S.L.; writing—original draft preparation, S.L.; writing—review and editing, S.L. and L.W.; visualization, S.L. All authors have read and agreed to the published version of the manuscript.

Funding

This project was partially funded by the National Institute for Transportation and Communities (NITC; grant number 1433), a U.S. DOT University Transportation Center.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The three main data sets used in the analysis of this study are publicly available in websites: (1) https://rlisdiscovery.oregonmetro.gov/ (accessed on 15 April 2022), (2) https://www.census.gov/data/developers/data-sets/acs-5year.html (accessed on 15 April 2022), and (3) https://www.epa.gov/smartgrowth/smart-location-mapping (accessed on 1 June 2021). Additionally, Figure 1 and Figure 2 used two publicly available data source: (1) https://trimet.org/about/dashboard/index.htm (accessed on 1 June 2022) and (2) https://fred.stlouisfed.org/series/POXRSA (accessed on 1 June 2022).

Conflicts of Interest

The author declares no conflict of interest.

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Figure 1. Estimated weekly boardings of light rail transit in the Portland Metropolitan Area (Source: TriMet, Portland).
Figure 1. Estimated weekly boardings of light rail transit in the Portland Metropolitan Area (Source: TriMet, Portland).
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Figure 2. The monthly Case–Shiller home price index of the Portland metropolitan area (Adapted with permission from July 24, 2022, S&P Dow Jones Indices LLC, S&P/Case-Shiller OR-Portland Home Price Index [POXRSA], retrieved from FRED, Federal Reserve Bank of St. Louis; https://fred.stlouisfed.org/series/POXRSA).
Figure 2. The monthly Case–Shiller home price index of the Portland metropolitan area (Adapted with permission from July 24, 2022, S&P Dow Jones Indices LLC, S&P/Case-Shiller OR-Portland Home Price Index [POXRSA], retrieved from FRED, Federal Reserve Bank of St. Louis; https://fred.stlouisfed.org/series/POXRSA).
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Figure 3. The four-step process of the longitudinal quasi-experiment design.
Figure 3. The four-step process of the longitudinal quasi-experiment design.
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Figure 4. The locations of observations in matched treated and control groups.
Figure 4. The locations of observations in matched treated and control groups.
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Figure 5. The appreciation rates of observations in matched treated and control groups.
Figure 5. The appreciation rates of observations in matched treated and control groups.
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Table 1. The two time periods in the study.
Table 1. The two time periods in the study.
PeriodsDescriptionDates
The pre-COVID periodbefore the COVID-19 outbreakJanuary 2016~February 2020
The peri-COVID periodafter the COVID-19 outbreakMarch 2020~December 2021
Table 2. Descriptions of the covariates used in the propensity score matching.
Table 2. Descriptions of the covariates used in the propensity score matching.
NameDescriptionData
Source
TreatedDummy variable for whether the home is in the treated group, located within a half-mile from the nearest MAX (light rail transit system in the Portland metropolitan area) stationGIS
Structural Characteristics
Bldg AreaThe building area of a home in square feetRLIS
Lot AreaThe lot area of a home in square feetRLIS
Year BuiltThe year that a home was builtRLIS
Locational Factors
FreewayLog-transformed distance in feet between each home and the nearest freeway at sale year during the pre-COVID periodGIS
RampLog-transformed distance in feet between each home and the nearest ramp at sale year during the pre-COVID periodGIS
BusLog-transformed distance in feet between each home and the nearest bus stop at sale year during the pre-COVID periodGIS
CBDLog-transformed distance in feet between each home and downtown (the City Hall of Portland) at sale year during the pre-COVID period [46]GIS
Neighborhood Characteristics
Pop DenThe total population per acre at the census block group level at sale year during the pre-COVID periodACS
WhiteThe proportion of the residents who are non-Hispanic white at sale year during the pre-COVID periodACS
HH IncomeThe median household income at the census block group level at sale year during the pre-COVID periodACS
EducationThe proportion of the population 25 years and over who attain less than high school at the census block group level at sale year during the pre-COVID periodACS
Land MixThe evenness in the spatial footprint of three land uses at census block group level at sale year during the pre-COVID period: residential, commercial/industrial, and others at sale year during the pre-COVID period
l a n d   m i x   i n d e x = 1 r T 1 3 + c T 1 3 + o T 1 3 4 / 3
where r is acres in residential use, c is commercial/industrial use, o is acres in other land uses, and T is r + c + o [56].
GIS
Net DenThe total length of roads in feet per acre at the census block group level [57]SLD
Intersect DenThe total length of street intersection per square mile at the census block group level [58]SLD
SchoolThe total number of schools per acre at the census block group level at sale year during the pre-COVID periodGIS
Access AutoThe number of jobs within 45 min auto travel time at the census block group levelSLD
Access TransitThe number of jobs within 45 min transit travel time at the census block group levelSLD
Sources. SLD: United States Environmental Protection Agency Smart Location Database version 3.0; ACS: American Community Survey 2016, 2017, 2018, and 2019 (the 5-year estimates); RLIS: the Regional Land Information System 2016, 2017, 2018, 2019, 2020, 2021, and 2022; GIS: shapefile data obtained from RLIS and calculated in ArcGIS.
Table 3. Descriptive statistics for the covariates used in the propensity score matching.
Table 3. Descriptive statistics for the covariates used in the propensity score matching.
NameSingle-Family HousingMulti-Family Housing
NMeanStd. DevNMeanStd. Dev
Treated44820.110.3113190.270.44
Bldg Area44821740.17683.1413191110.19427.31
Lot Area44825420.812268.881319467.88415.13
Year Built44821976.6833.5813191986.7024.06
Freeway448212,350.9913,784.3613196696.8711,124.49
Ramp448229,708.2623,426.22131920,036.3021,398.93
Bus44824130.5710,051.2013191937.1910,545.16
CBD448249,321.3328,259.63131933,089.2027,039.27
Pop Den44825530.793332.2013197810.156127.20
White448280.3812.06131980.7112.07
HH Income448275,952.9029,306.83131973,756.8327,919.97
Education44828.217.2613195.496.76
Land Mix44820.420.2013190.550.19
Net Den448220.368.67131925.0910.23
Intersect Den4482125.9679.701319155.9691.19
School44821.151.4713191.141.40
Access Auto448263,692.9129,062.29131984,329.4732,269.66
Access Transit448246,730.8488,329.29131987,232.67114,657.22
Table 4. Descriptions of the covariates in spatial econometrics models.
Table 4. Descriptions of the covariates in spatial econometrics models.
NameDescriptionData
Source
Dependent variable
ln(appreciation rate)Log-transformed appreciation rate
The appreciation rate was calculated as the sale price of a residential property during the COVID-19 pandemic (sold between March 2020 and December 2021) divided by the price of the same property before the COVID-19 outbreak (sold between January 2016 and February 2020).
RLIS
Independent variable
TreatedThe dummy variable for a property located within a half-mile from the nearest MAX (light rail transit system in the Portland metropolitan area) stationRLIS
Length of timeLength of time between two transactions in monthsRLIS
Source. RLIS: The Regional Land Information System 2016, 2017, 2018, 2019, 2020, 2021, 2022.
Table 5. Descriptive statistics for variables in spatial econometrics models.
Table 5. Descriptive statistics for variables in spatial econometrics models.
NameSingle-Family HousingMulti-Family Housing
NMeanStd. DevNMeanStd. Dev
ln(appreciation rate)
Total sample8600.2510.1593760.1410.157
Matched Treated Group4300.2490.1531880.1270.155
Matched Control Group4300.2530.1651880.1560.158
Appreciation rate
Total sample8601.3020.2233761.1660.192
Matched Treated Group4301.3000.2131881.1500.182
Matched Control Group4301.3100.2331881.1800.202
Length of time
Total sample86042.512.537641.512.7
Matched Treated Group43042.711.718842.112.4
Matched Control Group43042.313.218840.913.1
Table 6. Results of standardized difference and paired t-tests between matched treated and control groups after propensity score matching.
Table 6. Results of standardized difference and paired t-tests between matched treated and control groups after propensity score matching.
VariablesSingle-Family HousingMulti-Family Housing
Standardized Differencep-Value of
Paired t-Test
Standardized Differencep-Value of
Paired t-Test
Bldg Area0.0210.7480.0270.783
Lot Area0.0630.3230.1120.306
Year Built0.0150.7980.0560.475
Freeway0.0650.3090.0070.949
Ramp0.0190.7140.0130.878
Bus0.0260.7690.0240.846
CBD0.0880.1820.0190.825
Pop Den0.0150.8280.0390.481
White0.0360.5710.1210.250
HH Income0.0140.8170.1390.129
Education0.0100.8760.0400.740
Land Mix0.0910.2250.1370.170
Net Den0.0800.1620.0520.430
Intersect Den0.0620.3250.0590.339
School0.0410.57930.0960.404
Access Auto0.0880.1270.0810.405
Access Transit0.0580.3570.1030.258
Sample Size860 (430 pairs)376 (188 pairs)
Table 7. The results of spatial autocorrelation checks.
Table 7. The results of spatial autocorrelation checks.
Moran’s ILagrange Multiplier (LM) Tests
LM Test for Spatial Lag (LMlag)LM Test for Spatial Error (LMerror)Robust LM Test for Spatial Lag (RLMlag)Robust LM Test for Spatial Error (RLMerror)Portmanteau Test
(SARMA)
Single-Family Housing0.14 ***27.34 ***706.09 ***1.19679.90 ***707.28 ***
Multi-Family Housing0.26 ***0.211611.80 ***125.07 ***1736.60 ***1736.80 ***
* Significant at p < 0.10; ** significant at p < 0.05; *** significant at p < 0.01.
Table 8. Results of the a-spatial, spatial lag, and spatial error models.
Table 8. Results of the a-spatial, spatial lag, and spatial error models.
Housing MarketSingle-Family HousingMulti-Family Housing
Final ModelNoNoYesNoNoYes
ModelsOLSSARSEMOLSSARSEM
Estimate
(Std. Error)
Total Impact
(Std. Error)
Estimate
(Std. Error)
Estimate
(Std. Error)
Total Impact
(Std. Error)
Estimate
(Std. Error)
Constant0.059 ***
(0.019)
0.046 **
(0.018)
0.046 **
(0.018)
0.039 **
(0.028)
0.065 **
(0.029)
0.067 ***
(0.025)
Treated−0.006
(0.010)
−0.014
(0.010)
−0.008
(0.010)
−0.032 **
(0.016)
−0.031 **
(0.016)
−0.030 **
(0.013)
Length of time0.005 ***
(0.0004)
0.004 ***
(0.0004)
0.005 ***
(0.0004)
0.003 ***
(0.001)
0.003 ***
(0.001)
0.005 ***
(0.001)
Model statistics
Observations860860860376376376
Adjusted R20.128 0.057
Rho 0.003 *** −0.004
Lambda 0.013 *** 0.011 ***
Wald Statistics 19.846 ***548.201 *** 4.403 **907.491 ***
LR Test 20.538 ***85.775 *** 1.196156.509 ***
Log-likelihood 429.949462.567 175.485253.142
AIC−831.360−849.898−915.135−341.770−340.970−496.283
* Significant at p < 0.10; ** significant at p < 0.05; *** significant at p < 0.01. Models: a-spatial model (OLS), spatial lag model (SAR), and spatial error model (SEM).
Table 9. The results of robustness tests with a hypothetical exogenous shock.
Table 9. The results of robustness tests with a hypothetical exogenous shock.
Housing MarketSingle-Family HousingMulti-Family Housing
Final ModelNoNoYesNoNoYes
ModelsOLSSARSEMOLSSARSEM
Estimate
(Std. Error)
Total Impact
(Std. Error)
Estimate
(Std. Error)
Estimate
(Std. Error)
Total Impact
(Std. Error)
Estimate
(Std. Error)
Constant0.314 ***
(0.044)
0.218 ***
(0.053)
0.253 ***
(0.050)
0.103 *
(0.061)
0.082 *
(0.065)
0.152 **
(0.060)
Treated0.023
(0.033)
0.018
(0.032)
0.020
(0.032)
0.027
(0.038)
0.028
(0.037)
0.031
(0.034)
Length of time−0.004 **
(0.001)
−0.003 *
(0.001)
−0.003 *
(0.001)
0.001
(0.002)
0.001
(0.002)
0.002
(0.002)
Model statistics
Observations194194194787878
Adjusted R20.023 0.011
Rho 0.012 *** 0.017
Lambda 0.020 ** 0.070 ***
Wald Statistics 8.020 ***10.374 *** 0.749145.620 ***
LR Test 8.862 ***5.345 ** 0.60114.521 ***
Log-likelihood 17.80616.047 30.34137.301
AIC−18.749−25.611−22.094−52.080−50.681−64.601
Notes. Pre-hypothetical event: January 2016~December 2018; post-hypothetical event: 01/2019~02/2020. * Significant at p < 0.10; ** significant at p < 0.05; *** significant at p < 0.01. Models: a-spatial model (OLS), spatial lag model (SAR), and spatial error model (SEM).
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Lee, S.; Wang, L. Intermediate Effect of the COVID-19 Pandemic on Prices of Housing near Light Rail Transit: A Case Study of the Portland Metropolitan Area. Sustainability 2022, 14, 9107. https://doi.org/10.3390/su14159107

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Lee S, Wang L. Intermediate Effect of the COVID-19 Pandemic on Prices of Housing near Light Rail Transit: A Case Study of the Portland Metropolitan Area. Sustainability. 2022; 14(15):9107. https://doi.org/10.3390/su14159107

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Lee, Sangwan, and Liming Wang. 2022. "Intermediate Effect of the COVID-19 Pandemic on Prices of Housing near Light Rail Transit: A Case Study of the Portland Metropolitan Area" Sustainability 14, no. 15: 9107. https://doi.org/10.3390/su14159107

APA Style

Lee, S., & Wang, L. (2022). Intermediate Effect of the COVID-19 Pandemic on Prices of Housing near Light Rail Transit: A Case Study of the Portland Metropolitan Area. Sustainability, 14(15), 9107. https://doi.org/10.3390/su14159107

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