Critics claim that Wal-Mart is bad for local economies, that the stores bankrupt mom-and-pop businesses and drive down property values  . Accordingly, recent Wal-Mart openings have generated large public demonstrations against the company’s presence in the community and the damaging effects they assert the stores propagate   . It is plausible that the presence of big-box stores brings an undesirable quality to the neighborhood, in the form of light/noise pollution or congestion, but it is also plausible that a big-box store brings opportunity to the neighborhood in the form of employment or retail convenience, so that the sign of the net impact is inherently ambiguous. Despite the measurability of this effect, very little work has been done by economists to empirically relate Wal-Mart locations to residential property values.
This study uses a repeat sales model to evaluate this claim and analyze the impact of new big-box stores on home prices. We evaluate the spatial correlation between big-box store locations and residential property values, controlling for important aspects of a home’s market value such as square footage and age, but also control for immeasurable neighborhood-level effects using information on local school districts and sales price trends within the half-mile-radius neighborhoods. More than that, this study attempts to isolate several distinct impacts of the arrival of a big-box store: the impact of distance to big-box stores and a specific property’s sale price, and the impact on a property’s time-on-market, estimated simultaneously; a comparison of homes that experienced a new big-box store nearby to homes that did not (via a difference-in-difference analysis); a comparison of several distinct varieties of big-box store to distinguish differential effects; and the importance of time-since-arrival on a property’s sale price.
In section II of the paper, we review the literature on property valuation and the spatial impact of construction events. Section III describes the data set. Section IV explains the model utilized and Section V present the regression analyses using several measures of distance to capture the impact of a newly opened store. The final section concludes with interpretation of the results and implications for policy and further research.
There is an extensive literature on the effects of big-box stores (and of Wal-Mart in particular) on the economic landscape. A cluster of papers  -  review and estimate the impact of Wal-Mart on local food store sales, employment, and food distribution networks. Consumer welfare and poverty impacts are estimated by another suite of papers   .
However, the specific importance of big box stores (defined as retail spaces exceeding 50,000 square feet and serving a wide range of products) to residential housing prices is a topic that remains largely unexplored. New Wal-Mart locations have a depressing effect on local tax revenues in the year after opening, an effect which reverses in the second year  . In contrast, there is no evidence that the big box retailer has an impact on residential or commercial property values in New Jersey  . However, neither of these pieces reflect on property-specific attributes, or the importance of geography and location, focusing instead on the important issue of jurisdiction-wide residential tax bases. Analysis of the impact of distance from a Wal-Mart store on residential property values shows that proximity matters in the year of completion and dissipates thereafter  . However, their analysis does not adequately control for neighborhood effects (in fact there are no controls for location other than a measure of distance from the store in question), or for property-specific effects (as they use a list of highly correlated characteristics of the property but do not use a repeated sales model to control for potentially omitted quality factors). In contrast, a competing study  examines the impact that Wal-Mart has on housing prices, analyzing over one million housing transactions proximate to 159 Wal-Marts. Their findings suggest that a new Wal-Mart store increases housing prices for the closest homes by two to three percent, and that the effect dissipates with distance. Our estimation extends this analysis by considering four types of big box stores, while simultaneously estimating the impact on a property’s time-on-market.
The existing literature on property valuation is even more expansive and a complete review is clearly beyond the scope of this paper. Of key importance is property zoning, which is essential to a fair comparison across properties  -  , and thus we focus exclusively on single-family residential properties. As such, the variables discussed here reflect the factors that best explain home prices. The literature unarguably concludes that greater area (acreage) and square footage are clearly associated with higher property valuations      . Highly correlated with these measures are home characteristics such as the number of bedrooms  and bathrooms   , both of which are unambiguously associated with higher property values.
Several scholars have also explored the relationship between price and patience. As such this analysis considers both sale price and current days on market (or time-on-market). Sellers balance two distinct objectives: to sell their properties at the highest possible price and to make the sale quickly. Earlier work has shown that the seller faces a tradeoff between the time it takes to sell the home and the price received. Specifically, an overly high initial price may discourage potential buyers and result in a home languishing on the market for a longer period of time, while an initial price that is too low may result in a quick sale at a price less than could have been received. Research shows that sellers with lower home equity have a tendency to elect a higher list price and wait a longer period of time to sell the property  . A more recent study finds that the degree of overpricing (percentage difference between actual and expected list prices) increases a home’s expected time on the market  . During periods of falling home prices, sellers may hold sticky reservation prices which results in properties spending more time on the market  . Finally, a 2008 study on the Dutch housing market  shows that atypical houses are more difficult to price and therefore spend more time on the market before price revisions.
In addition, studies have clearly shown that proximity to landmark neighborhood institutions has an effect on proximate property values. These have been calculated for desirable institutions such as parks   but are most often calculated for potentially negative pollution effects and health risks from transportation or energy sector installations    . At the extreme, there is a branch of the literature that examines the housing price responses to hazardous waste locations or Superfund sites     . Occasionally, analysis focuses on the impact of an institution with potential for either positive or negative impact, such as a sports stadium  . In this vein of the literature, there is also some evidence that residential proximity to differently zoned communities (e.g. mixed use or commercial) impacts residential property values as well     .
3. Data Description
This study focuses on single-family home sales within a two-mile radius of 13 big-box stores in El Paso County, Colorado between 1994 and 2005 from a limited-term collaborative data sharing arrangement with the County Assessor’s Office and a local realtor. The stores include five Wal-Mart stores, two Best Buy stores, three Kmart stores, and three Target stores. The study focuses only on repeat sales that span the opening of a Wal-Mart or a Best Buy stores, using the Kmart stores (whose construction all predate our study period), and all of the Target stores (whose construction all fall at the very end of our study period) as controls to reflect the potential big-box nature of a neighborhood, whether or not a Wal-Mart or Best Buy decides to locate in that area.
The opening dates for the 13 big-box stores located within the city of Colorado Springs, Colorado were collected from the El Paso County Planning Department and confirmed with the national headquarters of the retail chains and local phonebooks. The opening dates were used to determine how many open big-box stores were within a two-mile radius of each property at the time of each sale and which homes sold both before and after the opening of a big-box store within a two-mile radius. Finally, the opening dates were used to calculate the number of days between the opening of the store and the date of sale of the property for the newest big-box store located within the property’s two-mile radius.
Data were gathered from the Pikes Peak Multiple Listing Service (MLS) on every single-family property sold in El Paso County, Colorado between January 1, 1994 and December 31, 2005.1 For each property, we obtained the address, total square feet, year built, sales price, and current days on market before sale. Of the 102,017 recorded sales, 11,962 properties were sold multiple times during the period, and 1660 of these sales are characterized by the opening of a big-box store in the period between the two sales.
While data were collected on the number of bedrooms, bathrooms and total square footage, these variables were highly correlated, so the study utilizes only total square footage and the change in total square footage (area added between the first and second sales). This is not a trivial correction, given that many properties in our sample date from the late 1800s when large numbers of bedrooms and bathrooms were less common, even in expansive homes, but have been expanded over time.
Using GIS mapping software, we measured the distances (measured in feet) from each property to every big-box store located within a two-mile radius.2 We also identified the corresponding El Paso county school district for each property.
Table 1 contains a description of the variables used in the study. Beyond control variables for the age and size of the property, we include distance as a set of categorical dummy variables in order to provide for the most possible flexibility in the estimated functional form. Specifically, we account for distance in both 1/10th and half-mile increments within a two-mile radius surrounding a new store. In addition to the distance dummy variables, we include dummies for the year of first sale, the year of second sale, and the Colorado Springs school district in which the property is located.
On average, properties sold for a little more than one-quarter more on their second sale, an average price increase of roughly $33,000 (over an inter-sale time difference that averaged 1398 days or roughly three and three-quarter years in our sample). While the range in sales prices seems very wide, it is in fact due to only a few outliers. Less than 300 properties (two percent of the sample) increased in price by more than $100,000 between repeat sales. Those outliers are accommodated using square footage at the time of each sale (i.e. they all involve a dramatic increase in square footage).
1We are grateful to Nate Banet of Flying Horse Realty, Colorado Springs, for providing us access to the Pikes Peak MLS system. This allowed us to gather the most accurate and complete data set available. These data were gathered between June 22 and June 26, 2009.
2We are grateful to Stephen Fischer, the GIS Database Coordinator for the Assessor’s Office of El Paso County, Colorado for providing these calculations.
Properties in our sample are fairly standard for North America, averaging 1979 square feet, and ranging from 790 to 10,417 square feet. The average home was a little over 27 years old at the time of sale, but our sample includes new constructions and some properties over a century old. Properties averaged 45 days on the market, but again the variance was large, with 484 selling on the
Table 1. Description of variables and summary statistics.
same day they were listed but one spending 3.5 years on the market before selling.
Most interestingly, we find that properties that experienced a new big-box store are quite average, except that they are on average one-third younger than the full sample, and are a little less prone to improvement in square footage during the inter-sale period.
Figure 1 shows the distribution of properties around big-box stores, grouped into categories spanning one tenth of a mile (e.g. less than 0.1 miles to the new Wal-Mart, 0.1 or more miles but less than 0.2 miles to the new Wal-Mart). Table 2 further compares three groups of properties: those that experience a new Wal-Mart between sales, those that welcome a new Best Buy between sales, and the control group that experiences no new big-box stores between sales. The control group is somewhat more evenly distributed spatially than either treatment group, and there is an unusual spike in the Best Buy distribution due to the placement of one particular new Best Buy. This gives the control group a larger average distance from big-box stores than the treatment group (averaging 6774.88 feet from a store, versus 5417.25 feet and 5328.11 feet for Wal-Mart and Best Buy groups respectively), but there are still plenty of property sales to use for comparison in the control group once distance is included as a variable in the analysis below.
Although our analysis includes a year dummy which should capture the annual macroeconomic variables impacting sample properties (including residentially-based inflation), and we use repeated sales explicitly in order to capture immeasurable property-specific attributes (such as view or landscaping), we are still concerned about neighborhood-level effects. For that reason, we include indicator variables for the school district, and also construct a time-varying neighborhood average sales price which trails each sale by one year. The prior year’s average sales price of all homes within one half-mile of the selling
Figure 1. Proximity of homes to a new big-box store.
Table 2. Average home sales price by big box store (2-mile radius) & average home sales price and age (in years) by big box brand, 1994-2005.
property, that is equally distant to the nearest big-box store, aims to capture the trend of the area. For example, it is critical to ascertain whether big-box stores are entering lower-priced neighborhoods or whether they cause lower-priced neighborhoods.
We approach this concern in two additional ways. First, we employ a difference-in-difference approach in our estimation model, comparing homes that experienced a big-box store arrival against similarly located properties (i.e., elsewhere in the city, equidistant from pre-existing big-box stores) which did not experience a new big-box arrival. We emulate previous literature   in this regard, both of which use the technique to estimate the impact of environmental enhancements on residential property values in an urban setting. While we would prefer to use a spatial spline or spatial regression model, computational limitations prevented that approach with our number of observations, and we were reluctant to resort to sampling tactics.
Second, we explore the data here for pre-existing differences between “Wal-Mart neighborhoods” and “Best Buy neighborhoods”. Table 2 presents sales price and property age information for each circle surrounding the 13 stores in our sample, and summarizes those by brand of retailer. Notice that home values peak in price around 2002 citywide, but some regions peak considerably later (e.g. Best Buy 2 peaks in 2004). Of course, each region has a specific neighborhood character which contributes to level effects in prices as well; the Wal-Mart 4 region is frequently twice the citywide average price while the Wal-Mart 2 zone lags the average by ten percent or more.
Notice also in Table 2 that the neighborhoods in which stores situate can differ greatly by age of the residential properties. Wal-Marts are consistently in older neighborhoods than other stores, although the width of that gap varies by year. This offers strong rationale for including a thoughtful list of control variables in multivariate regression analyses.
Figure 2 and Figure 3 then plot those data for each brand of retailer. In terms of home sales prices, Best Buy stores are located in neighborhoods with higher-than-average home sales prices while Wal-Mart and Target stores seem to be located in neighborhoods with lower-than-average home sales prices. Kmart stores most closely track the average. Unfortunately, while the time trend is informative, it fails to reveal any information about home prices at the time the big box retailer acquired the land or even started the approval process for the construction of a new store. Figure 3 reveals that Wal-Mart stores are located in more established neighborhoods with older-than-average homes while the other three retailers, Best Buy, Target and Kmart, tend to locate in newer neighborhoods. It is interesting to note that Best Buy appears to be located in newer neighborhoods (Figure 3), but with more expensive homes (Figure 2).
4. Model and Estimation
There is clearly an issue of mutual endogeneity when considering sales price and time-on-market (as pointed out by     ), so we estimate the
Figure 2. Average home sale price within 2-mile radius of big box brand, 1994-2005.
Figure 3. Average home age (in years) within 2-mile radius of big box brand, 1994-2005.
following two-equation system using Two-Stage Least Squares (2SLS) to instrument for price in the time-on-market equation (a variation of the approach followed by  ). There is an empirically low correlation between the two variables, at −0.007, but we instrument to be sure that idiosyncratic effects do not bias our results. Further, we do not assume a well-behaved error distribution, but instead use the methodology described by  to weight observations for more efficient estimation. Otherwise, the simple reduced-form structure is consistent with the literature’s precedents using repeated sales models (e.g.  ):
where: %D in sales price is measured between the first and second sale (appearing in its precise value in the first equation, and following instrumental variable procedure, in estimated form in the second equation);
sqft is the number of square feet, improved or unimproved, encompassed in the residence at the date of first sale;
addedsqft is the change in square footage between the first and second sales;
age is the age in years of the residence at time of first sale;
distanceW is the distance to the nearest Wal-Mart at the time of first sale;
newstoreW is an indicator of whether a new Wal-Mart has opened in the period between sales;
distanceB is the distance to the nearest Best Buy at the time of first sale;
newstoreB is an indicator of whether a new Best Buy has opened in the period between sales;
dayssincenew is the number of days that have elapsed between the opening of a new store and the second sale;
saleyeari is a dummy variable for the year of first sale;
resaleyearj is a dummy variable for the year of second sale;
districth is a dummy variable for each school district;
areaprice_diff is the difference between this property’s sale price and the average sale price of all properties within one half-mile of the property in the year prior to the second sale, given that they are equidistant to the nearest big-box store (within one-tenth of a mile);
The dependent variables are percentage change in sales price and time-on-market (measured in days) respectively. We do not emulate the literature in using a semi-log functional form simply due to the striking number of negative price changes in the sample.
Notice that we adopt the difference-in-difference approach to compare properties that were equidistant from pre-existing big-box stores (distanceW and distanceB), separating them into experiment and control groups by virtue of whether they experienced the arrival of a new Wal-Mart or Best Buy big-box store (newstoreW and newstoreB), and including the interaction term to explore the different impacts of location on each group.
Table 3 presents the results of the primary regression, with the percentage change in residential property sales prices and days-on-market respectively. We also tested versions of this specification that included squared distance terms, and versions that included indicator variables for properties that fall into consecutive distance bands (tenth-mile and half-mile). All of those sensitivity tests differ only trivially from the primary results.
Further, we tested whether the possible presence of non-market transactions, or outlier observations showing an abnormally small or abnormally large change in price between sales, might influence our results. Only 83 observations (less than one percent of the sample) are more than 3 standard deviations away from the mean change in sales price, and only 281 (slightly over two percent of the sample) are more than two standard deviations away from the mean. While it is impossible to verify whether any of these might be non-market transactions, omitting all properties beyond two standard deviations had no effect on the implications of the coefficients.
The left columns of Table 3 offer results for all properties in the sample. The right columns provide parallel results for properties which sold four or more times during the sample period, to determine whether these properties might behave differently than other properties. Notice that a pure difference-in-difference approach is not possible for these frequently-resold properties, as less than five percent of those property sales experienced the opening of a new store between sales, leading to multicollinearity problems in estimation of the interaction term. However, the pattern of other coefficients of the difference-in-difference approach leads us to believe that the same results could hold true, if a larger dataset were procured.
Table 3 confirms our expectations regarding control variables. Larger homes appreciate more quickly than their smaller peers, and an increase in square footage naturally increases the selling price of appreciation with a longer period of time between resales, although the size of that appreciation naturally depends on the purchasing and selling years. Neighborhood prices show reversion toward the mean, meaning that homes above the neighborhood average price tend to sell for less than their other characteristics would suggest, and the reverse also holds.
Table 3. Impact of big-box store locations on residential property sales prices and current days on market.
Turning to the variables of interest, homes that are initially farther from big box stores generally have higher prices, an effect which is largest and most significant for Best Buy locations, but is in fact statistically insignificant for Wal-Mart. Interestingly, homes that are closer to Target locations command a (statistically insignificant) higher price. This could, of course, be due to the endogenous choice of location by each store, but the arrival of a new Wal-Mart raises the price of nearby homes by almost one percent compared to peer homes outside of a two-mile radius of the arrival. Best Buy has a similar positive effect of close to one percent, compared to the unaffected control group of homes. Further, the interaction term between distance and arrival reflects the fact that distance from a newly arrived Wal-Mart is very important for affected homes, with price appreciating with distance from the Wal-Mart (at the rate of roughly 0.6 percent per mile). This seems to indicate that the importance of the pollution externalities is most starkly impacting homes near a Wal-Mart. Interestingly, Best Buy has the opposite effect, with homes closest to the new arrival least affected by the store opening. In contrast, this seems to indicate that the positive convenience effect outweighs the importance of the negative pollution externalities in the case of a Best Buy store.
We also find that the number of days between the opening of the newest big-box store and the property’s sales date (dayssince) is positively correlated with higher sales prices. We believe this captures the “news effect” of an additional big-box store: property values adjust when the store goes in, and over time the effect only becomes more positive for price. This suggests that homeowners should wait to sell the property rather than selling immediately upon the opening of a new store.
Results are largely paralleled with the dependent variable measuring days on market. Larger homes sell more slowly, older homes sell more quickly, and certain years obviously experienced tighter market conditions than others. The arrival of a Wal-Mart shows no significant effect on the expected number of days on the market, while the arrival of a Best Buy reduced the expected time on market by slightly more than three days. All of these effects are lessened among the subset of homes that changed hands four or more times during the sample period, though many of the effects are statistically insignificant.
This result corresponds to the intuition surrounding the convenience-nuisance duality that accompanies a big-box store. Close proximity to the store ensures convenient access, but also provides for greater traffic, noise and light pollution. Greater distance from the store location diminishes the convenience aspect, while also reducing the pollution nuisance. Over time, it appears that citizens acclimate to the externalities, and increasingly appreciate the convenience aspects more than they detest the pollution nuisance.
To put the coefficient values in perspective, we must put the realtor’s mantra of “location, location, location” into perspective against the popular maxim that “timing is everything”. While location relative to a big box store might affect sales price by one or two percent, mistiming the sale of a property by one year at any point in our sample could easily lead to price differentials of that much or more. In short, the effect of a big box store, any big box store, on repeated sales value, appears to be well within the margin of error accepted by realtors when listing a home.
Using a large dataset of repeated residential property sales, this paper evaluates the claim that the arrival by a big-box store (the most notable example being Wal-Mart) reduces adjacent home values. We control as carefully as possible for changes in the macroeconomic climate and neighborhood effects, finding virtually no evidence to support the claim of reduced property values. Indeed, the Wal-Mart effects look only slightly worse than Best Buy effects (and only if held in isolation from properties which experienced a new arrival of neither one). Moreover, the effects improve over time and appear to amount to no more financial significance than a measurement error by a listing realtor when offering a home for sale. Further, there seems to be no statistical relationship between the presence of a store, the arrival of a store (with the exception of Best Buy), or the distance from a store, and the number of days that a property remains on the market before sale.
Is Wal-Mart a bad neighbor then? Quite the opposite appears to be true. This work’s quantitative evidence shows that Wal-Mart’s effect is actually positive for average residential property values, and becomes more so with the passage of time. Previous studies that asserted otherwise appear to have been contaminated by bias, or by the innate correlation of location choices by each variety of store with different price ranges and ages of neighborhoods.
Further work could of course extend this analysis to other areas, or address level effects rather than changes (e.g. does Wal-Mart choose to enter different neighborhoods because of prevailing property values?). Meanwhile, we hope that this work puts to rest a commonly held misconception about big-box stores and their impact on home values.
Conflicts of Interest
The authors declare no conflicts of interest regarding the publication of this paper.
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