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Common economic thinking dictates that an increase in price should lead to an increase in supply, and that an increase in supply should then lead to a decrease in price. According to Maarten van Poelgeest, former alderman of Amsterdam, the opposite is happening in Amsterdam and other popular cities. He is quoted in an article in De Groene Amsterdammer as saying:

‘Hoe meer er gebouwd wordt, hoe aantrekkelijker de stad wordt. Er komen meer voorzieningen, er komt meer reuring. Nieuw aanbod maakt de vraag dus juist weer groter – en de huizenprijzen hoger.’

Which means:

’The more there is built, the more attractive the city becomes. There will be more facilities, there is more bustle. New supply therefore makes the demand even larger – and house prices higher.’

The reasoning by Maarten van Poelgeest appears plausible, but is there any evidence that this is actually happening? Is there evidence that an increase in housing supply leads to an increase in house prices, due to housing in the area becoming more attractive?

I'm looking for an answer based on empirical evidence from trends in the past up to the present, in order to present the claim/hypothesis by Maarten van Poelgeest up to the best available measurements.


NB: I am emphatically not asking just for a correlation. A correlation between increase in supply and increase in price can easily be explained by the reverse of the causation I'm asking for here. I'm aware that causation is harder to provide evidence for but it should not be impossible.

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  • $\begingroup$ Why the downvote? How can I improve this question? $\endgroup$
    – gerrit
    Mar 1, 2020 at 18:02
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    $\begingroup$ More recent evidence from the German rental market: cityobservatory.org/…. $\endgroup$ Dec 22, 2020 at 9:39
  • $\begingroup$ @abeboparebop Very interesting, thank you :) $\endgroup$
    – gerrit
    Dec 22, 2020 at 13:15

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Let's just say that economists don't really agree with this thesis, and most city-level empirical evidence points in the opposite direction. E.g.

We ultimately conclude, from both theory and empirical evidence, that adding new homes moderates price increases and therefore makes housing more affordable to low- and moderate-income families.

[...]

A few studies use panel data and find that the imposition of more stringent land-use controls leads to lower supply and higher prices. Jackson (2016) uses longitudinal data from California’s cities to assess the effect a city’s adoption of additional land-use regulations has on the number of new construction permits issued, and finds that each additional land-use regulation adopted reduced multifamily and single-family permits by an average of more than 6% and 3%, respectively, and that regulations reducing allowable density had even larger effects. Zabel and Dalton (2011) use longitudinal data from localities in Massachusetts and find that increases in minimum lot sizes are followed by significant increases in prices. Looking at longitudinal data on municipalities in the Boston (Massachusetts) metropolitan area, Glaeser and Ward (2009) find that the adoption of stricter local regulations leads to higher house prices, but the coefficient falls in magnitude and loses significance once they control for population demographics. They point out that this is expected, if homes in other jurisdictions are seen as perfect substitutes. Thus, whereas supply restrictions may increase prices in a market as a whole, they may not increase them disproportionately in the particular locality where they are imposed due to spillover effects across jurisdictions.

Several other researchers use instrumental variables to try to more clearly assess the causal effects regulatory restrictions have on housing supply and prices. Ihlanfeldt (2007) uses such an approach to study regulation in localities in Florida and finds that predicted regulations significantly increase the price of single-family homes. Saks (2008) uses instrumental variables and shows that increases in labor demand lead to less residential construction and larger increases in housing prices in metropolitan areas with more restrictive housing supply. Hilber and Vermeulen (2016) show that changes in demand lead to increases in local house prices rather than increases in supply in municipalities in England with greater regulatory restrictions, measured by the refusal rate of proposed residential projects and the number of project approvals delayed more than 13 weeks.

In sum, the preponderance of the evidence shows that restricting supply increases housing prices and that adding supply would help to make housing more affordable. [...] although it is surely true that land is constrained, especially in certain markets (Saiz, 2010), land can be used more intensively to allow for more housing. The limits on the land with which housing is bundled make housing different from many goods, but the difference is one of degree: the supply of housing can and does increase even in constrained markets, and prices should generally fall in response (see the review by Dipasquale, 1999; Mayer & Somerville, 2000).

[...] most housing filters down, or loses value as it ages, representing new supply in submarkets at lower price points. [...] Indeed, recent research shows that filtering was the primary source for additions to the affordable rental stock between 2003 and 2013, whereas new construction was the largest contributor for the higher priced rentals, and tenure conversion was the largest source for moderately priced rentals (Joint Center for Housing, 2015, fig. 14). Further, Weicher, Eggers, and Moumen (2016) report that 23.4% of the rental units that were affordable to very low-income renters in the United States in 2013 had filtered down from higher rent categories in 1985. Another 21.8% were conversions from formerly owner-occupied homes or seasonal rentals.9 Most of the higher priced rental units that filtered down to become affordable in 2013 were moderate-rent units in 1985, but 15% of those that filtered down were high-rent units in 1985. Note that filtering occurs over a shorter time frame too; among affordable units in 2013, 19% had been higher rent units as recently as 2005.

Recent research analyzing the incomes of successive occupants of homes also suggests substantial downward filtering, particularly of the rental stock due to tenure conversion; as the owner-occupied stock ages, a portion converts to rental (Rosenthal, 2014). Rosenthal also finds, however, that filtering rates are considerably lower in areas with high house price inflation, although downward filtering still occurs.

In short, new construction is crucial for keeping housing affordable, even in markets where much of the new construction is itself high-end housing that most people can’t afford. A lack of supply to meet demand at the high end affects prices across submarkets and makes housing less affordable to residents in lower-cost submarkets.

Finally getting to the discussion of the precise thesis you ask about:

Some skeptics argue that even if additional supply could help make housing more affordable in the short run, it won’t in the long run because the additional supply will induce more demand, especially among buyers or renters wealthier than the existing residents in the neighborhood (Redmond, 2015). The claim is analogous to the argument that building more highways will not reduce congestion because the lower cost of travel will simply cause more people to drive or to take that particular route (Gorham, 2009). In this case, the argument is that by making the jurisdiction more affordable, adding housing supply will attract new demand—both from current residents who would otherwise leave, and from people living elsewhere who will now choose to move to the jurisdiction. Further, the argument goes, lower rents and prices may also induce latent demand—people who are living with roommates or family members may choose to form their own households (Ellen & O’Flaherty, 2007) or people may choose to invest in pied-à-terres in a city. That additional demand will drive prices back up until supply can again respond, causing housing to be more affordable, at best, only cyclically, according to the argument, and increasing the density of the jurisdiction, with the attendant costs of congestion.

Although building additional highways does appear to induce more demand (Duranton & Turner, 2011), in the case of housing, additional demand is unlikely to completely offset the new supply. Such an offset requires demand curves to be perfectly elastic—or, in other words, it assumes that neighborhoods and jurisdictions are perfect substitutes and that there are no constraints on the ability and willingness of households to move. That is unrealistic. Moving homes is not like driving a few extra miles (Lewyn, 2016), and costs associated with moving may be high. Any additional demand induced by new housing is limited by personal and economic constraints on the ability and willingness of households to move, restrictions on immigration, and uncertainty and other factors that might inhibit renters and buyers from renting or buying in the market in which housing supply increases. Indeed, mobility rates have fallen sharply over the past several decades, and although the reasons for the decline are being debated, the decline reveals significant constraints on the ability and willingness to move.

Thus, in the long run, whereas some additional households may be drawn from outside (or from within the city) to buy or rent homes as supply increases, it is highly unlikely that prices will end up at the same level that they would have reached absent any new supply. Finally, as noted above, the empirical evidence shows that allowing more supply leads to lower housing prices; if adding supply induced sufficient additional demand to offset the increased supply, the studies would not find an association between supply and prices.

It can happen indeed in some very limited circumstances, and with localized [e.g. neighborhood] effect, which is probably on what this faulty generalization is based on:

Many renters in neighborhoods where market-rate housing is proposed express concern that the construction of new housing will actually make their affordability problems worse by raising rents or house prices, fueling gentrification, and potentially displacing existing residents (Atta-Mensah, 2017; Savitch-Lew, 2017). Hankinson (2017) theorizes that renters’ opposition to local additions to supply is driven by such worries; he argues that it is plausible that the construction of an attractive new building will increase prices locally (by improving the physical landscape, bringing new amenities to the neighborhood, and signaling that the neighborhood is improving), even as it reduces them citywide.

Testing this proposition empirically is quite challenging, given that developers will naturally be attracted to areas where prices and rents are rising. There is evidence that improvements to blighted housing can, in some circumstances, increase surrounding property values, even when the new or improved housing is subsidized, low-income housing (Diamond & McQuade, 2016; Schwartz, Ellen, Voicu, & Schill, 2006). The new housing studied, however, typically replaced vacant, abandoned buildings and littered vacant lots, in essence removing a disamenity. [...]

There is little empirical evidence about the net effect new market-rate housing has on the prices or rents of nearby homes, and what exists may not be causal. One recent study examines the effect of market-rate single-family homes newly constructed on infill sites, and finds that newly constructed single-family homes can have positive impacts on the sales price of other single-family homes nearby, but the effect varies with context (Zahirovich-Herbert & Gibler, 2014). A study of multifamily high-rise infill developments in Singapore found positive price effects on nearby houses (Ooi & Le, 2013), as did a study of single multistory apartment buildings constructed in Helsinki (Kurvinen & Vihola, 2016). These studies all consider property values and not rents, and none is able to prove a causal relationship given that market-rate developments aim to target neighborhoods where they expect property values to improve. Unfortunately, we found no study examining impacts on rents, although one study by the California Legislative Analyst Office concluded that additional market-rate construction is linked to lower displacement rates (Taylor, 2016). Examining low-income neighborhoods in the Bay Area between 2000 and 2013, these researchers found that the production of market-rate housing was associated with a lower probability that low-income residents in the neighborhood would experience displacement. Although a singular study, the findings suggest that for neighborhoods in high-demand cities, blocking market-rate construction may place greater pressures on the existing stock.

In short, although it is clear that the construction of new homes will moderate price and rent increases citywide, neither theory nor empirical evidence provides clear guidance about when localized spillover effects might occur and when they might actually cause an increase in the prices and rents of immediately surrounding homes.


There's a more recent study on the core issue of the question, not covered in the above review:

Preliminary results using a spatial difference-in-differences approach suggest that any induced demand effects are overwhelmed by the effect of increased supply. In neighborhoods where new apartment complexes were completed between 2014-2016, rents in existing units near the new apartments declined relative to neighborhoods that did not see new construction until 2018. Changes in in-migration appear to drive this result. Although the total number of migrants from high-income neighborhoods to the new construction neighborhoods increases after the new units are completed, the number of high-income arrivals to previously existing units actually decreases, as the new units absorb a substantial portion of these households. On the whole, our results suggest that—on average and in the short-run—new construction lowers rents in gentrifying neighborhoods.

See also a blog discussing it (which also does a good job at debunking the roads analogy); in summary, the gist of the latter study is in this chart:

enter image description here

This chart shows that rental prices for apartments close to the new building fell relative to the prices for apartments located further away. The dashed “before” line has a negative slope, suggesting that prices declined the further you got from the site of the new building. The solid “after” line has a positive slope (prices increase the further you get from the new building). Overall, prices are higher (the solid line is above the dashed line), but prices actually went down next to the new building, and increased far less than in the area further away from the new building.

These data are a strong challenge to the induced demand theory. If a new building made an area more attractive, one would expect the largest effect in the area very near the building. But, consistent with the traditional “more supply reduces rents” view, the addition of more units in an area seems to have depressed rents (or at least rent increases) compared to buildings in the surrounding area.

In other words, even the theory that prices might increase locally in the neighborhood of a new building doesn't hold up, on average, to a difference-in-differences test. Without a difference-in-differences approach one can of course draw the wrong conclusion since overall demand in a city may be increasing faster than the overall supply.


Even more recently, another paper on NYC (not yet published in a peer-reviewed venue, but was mentioned in a recent NYT article):

I find that for every 10% increase in the housing stock within a 500-foot buffer, residential rents decrease by 1%. The rent reduction is caused by the completion of new high-rises rather than their approval. Across neighborhoods, the impact is smaller in more central areas, presumably due to more elastic demand. Within neighborhoods, the impact is smaller for lower-rent buildings. Finally, the negative impact appears to be driven by supply effects rather than dis-amenity effects, like changes in neighborhood physical features, blocked views, or shadows. New housing units alleviate the growing demand for existing housing units and moderate the rapid growth of residential rents.

Residential property sales prices also decrease when new high-rises within 500 feet are completed. [...] Because 99% of new high-rises are condos and rental buildings, they do not significantly affect sales prices of co-ops and 1-5 family homes. The negative impact is bigger for closer substitutes, further confirming the negative impact is due to supply effects.

To address the hypothesis about amenity effects, I find new high-rises and their high-income tenants attract new full-service restaurants, cafes, and coffee shops. These consumption amenities likely make neighborhoods more attractive and potentially increase rents and sales prices (Couture and Handbury, 2017). However, the amenity effect is dominated by the supply effect, given that rents and sales prices still fall on net.

As was mentioned in a OP's comment below, living in a big city vs a small town (and vs the prairie) is an amenity effect. However, there seems to be a limit to this effect after which more housing supply lowers the (rental) price.

The amenity effect has been studied for decades but alas often in isolation, most prevalently perhaps with the the Roback model, which basically adapted Rosen's more general spatial equilibrium model to "nontraded" goods like housing. ("Nontraded" because Roback only considered effects on rents.) Using this model, one essentially gets (rental) price-amenity gradients. Roback assumed that "the cost of changing residences is zero" (i.e. costless migration). Modelling "partially open" cities, i.e. with non-zero (and non-infinite) relocation costs across its boundaries is a relatively more recent endeavour. Likewise for considering the combined effect of housing supply and amenities on rents. As one such theoretical work notes

as housing is supplied more elastically [...] the rent effect of amenities approaches zero.

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  • $\begingroup$ Your second quote addresses supply induced demand, but not in the way I was quoting or thinking. It counters some possible mechanisms of supply induced demand in housing, but not the one of services: a larger city will attract more businesses due to having more potential customers and employees. Which makes me wonder: probably there is a strong correlation between city size and rental cost. I know it's a fallacy to conclude that therefore, making the city larger will make it more expensive, but it's a very attractive fallacy! Your third quote does address this. $\endgroup$
    – gerrit
    Mar 1, 2020 at 17:09
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    $\begingroup$ Overall a good answer, I've read all of it, but it could do with a little more summarising of the main points (the highlighted lines from the quote are a good start). $\endgroup$
    – gerrit
    Mar 1, 2020 at 17:12
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This is an interesting question.

Firstly, I think it would be better to look at rents than housing supply. Rents are the aspect of home ownership that is 'consumed' whereas there is an investment element to home ownership.

Housing, as an investment class, is characterised by low vacancy and low yields. The reason for the low vacancy is that future demand is well known (for the most part). Population growth tends to be a pretty stable, and causal, driver of demand.

Housing prices, on the other hand, tend to be more of a function of how much people can borrow, and, as a result, are influenced hugely by macroeconomic conditions. Low-interest rates, like we are seeing in much of the world, allow people to borrow more money.

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  • $\begingroup$ I do not have time to add sources today, but I will add some sources discussing the Australian experience, which looks to be similar. $\endgroup$
    – Jamzy
    Oct 17, 2017 at 6:09
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    $\begingroup$ Rents are subject to rent control in many cities, including most of the market segment in Amsterdam, so the "natural market rent" may be only readily available for a subsegment of the market. $\endgroup$
    – gerrit
    Oct 17, 2017 at 9:29
  • $\begingroup$ Data on rents is usually related to a new tenant in a unit, and not actual rents paid by existing tenants. If you can confirm this for data being used, then regulatory limitations on rent increases for existing tenants in their current homes will not impact the quality of the market price signal in the data ... $\endgroup$
    – nathanwww
    Mar 10, 2018 at 18:31
  • $\begingroup$ I don't know what country you're in, but as an investment class housing is anything but low yield in my neck of the woods. $\endgroup$ Feb 27, 2020 at 11:23
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Increased supply will reduce the cost of housing (best measured by rents), all else equal.

The 'all else equal' is important. Other things can be going on (like rising population and incomes) that increase the cost of housing even as increased supply tends to reduce it.

You could make an argument about induced demand. There may be latent demand to live in a city. The increased supply induces those who could not live in the city before to move there, driving up the cost of housing. Conceptually you can separate increased supply (reducing the cost of housing) and the subsequent increase in population (increasing the cost of housing).

Empirically, I expect there to be many cases where the cost of housing has increased with rising supply. This is because of effects other than the direct effect of increased supply decreasing the cost of housing.

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This could happen in fairly special conditions.

I'm not sure that there would be much value in trying to state the conditions in a mathematical theoretical statement for a situation like that in Amsterdam.

In other situations, the existence of positive externalities and network effects, a la Silicon Valley, can be stated concisely in a way that is relevant. But even if you can establish a mathematical theoretical statement expressing something to the effect of "once it's sufficiently up and coming with hipness, then prices may continue to rise even if supply increases faster than the number of incoming residents", it's hard to see what use that would be.

Some fairly practical possible explanations which don't require anything complicated: maybe a lack of alternative investments caused people to invest more in their houses, driving up prices (demand being comprised in units of monetary instruments and not number of residents); perhaps the average newcomer was quite wealthy compared to previous residents (some of whom may cash in and move to cheaper suburbs); a low interest rate environment could result in the monthly rental rate of property being equivalent to a higher price.

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Housing is something subject to socio-economic events and policy, which may produce a variety of outcome. So this is not a simple "supply and demands" issue.

First, somebody must afford the house, i.e. enough business and job activities to sustain house purchase. You can build tons of house in the middle of nowhere, but without a job nearby, nobody going to buy it.

Second, a land is scarce, you cannot keep building houses/apartment on already used up land.

Third, housing price can be speculated and fuel by lenient bank loan terms

Fourth, there is housing ownership tax and policies to curb speculation

Fifth, Speculation on demands

So you will see:

  • Hong Kong: expensive houses with builders monopoly, favourism and price fixing in place.
  • Germany: only scarce city center are expensive, suburban housing price is still stable. Bank are very careful screening the client, little room for speculation.
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  • $\begingroup$ I don't understand what you are talking about and what it has to do with my question. (NB: I did not downvote) $\endgroup$
    – gerrit
    Jun 6, 2017 at 16:21
  • $\begingroup$ In case you are wondering where the downvotes come from: you do not buttress any of your claims with facts or evidence and most of them are at least questionable, in particular the German case - there is ample room for speculation, not just in the city center. $\endgroup$
    – Taufi
    Jun 7, 2017 at 18:47
  • $\begingroup$ Aren't these points 1-5 just part of supply and demand? FYI, rents in Berlin in the city centre are not too much higher than rents in the outskirts. I would blame that on good public transport and the fact all the new high density buildings are in the outskirts. $\endgroup$
    – user253751
    Feb 27, 2020 at 10:54
  • $\begingroup$ @user253751 Policy changes that affect financing will skew the supply and demand. $\endgroup$
    – mootmoot
    Feb 27, 2020 at 16:59
  • $\begingroup$ People would buy houses in the middle of nowhere if they were cheap and there was a bus $\endgroup$
    – user253751
    Jul 3, 2020 at 11:02

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