Eoin O’Mahony, UCD and TCD.
I have been working for a while now with the data produced by the InsideAirBnB project. I teach students how to map and analyse these kinds of datasets when they are learning to use geographic information software. The data are really useful to understand how the city changes, how urban unevenness plays out and what can be done to undermine the ‘sharing economy’. That last phrase in particular, the sharing economy, is very pernicious. Sharing usually involves me giving you something and, maybe, you giving me something. In the case of AirBnB, money is given over for a space to sleep and eat. That doesn’t sound like sharing to me but old fashioned marketised social relations. The same goes for the gig economy: the last time I went to a gig, I wasn’t asked up on stage to pound out a few tunes with The Unthanks.
This morning, I read that Dublin City Council have finally published their report on the impact that AirBnB is having on Dublin City’s housing. One of the more significant reported findings is that there are many individual people renting out multiple short lets. Downey’s report for the Council (which I have yet to read) recommends that two Council committees work together to figure out a way to “tackle the issue”. While we await the Council’s prognostications, let’s examine some of the impacts that the most recent batch of data (February 2017) points to. This is a kind of geography of AirBnB in Dublin, a way in which to help analyse the current housing crisis. This is the housing crisis that Coveney would like to solve part of before June, you know, after winning the leadership race of his party. Priorities, right?
Firstly, within the City Council area, there has been an increase in the number of listings between August last year and the February scrape. In August, there were 4,931 listings for the city area – the vast bulk of all Dublin region listings. By February, this had increased to 6,729, an increase of 36%. There must be few other things in the city that have increased by this amount in this period, except perhaps seagull droppings. There has not been a 36% increase in the output of social and affordable homes in the city over this period. There is clearly a number of people out there who have apartments in the city who know that if they rent the spare room or the whole apartment they can make some money. Short-term lettings like these allow people the flexibility to rent some weekends and not others but also to pay a mortgage on a second (or fifth or eighth) rental property they just happen to have lying around. It beats having long term tenants it would seem. Perhaps significantly, the proportion of listings that rents the whole property out (as opposed to a room) has remained stable at 47% of all listings. So where are these listings located?
One of the really good features of a geographic information system (software that allows for spatial analysis) is to be able to see patterns across the city. I conducted a point-in-polygon analysis of the data from the February 2017 listings dataset. As the name implies, this counts the number of listings within each predefined area, in this case electoral divisions (EDs). There are 162 EDs in the DCC area. Location information for these listings are anonymized by Airbnb so any scraping process encounters the following spatial constraints:
- the location for a listing on the map, or in the data will be up to 150 metres from the actual address.
- listings in the same building are anonymized by Airbnb individually, and therefore appear “scattered” in the area surrounding the actual address.
I would be interested to see how Downey may have compensated for this in his report for the Council. Any point-in-polygon analysis is therefore compromised by these two constraints. Knowing this, what spatial patterns can we see? The average number of listings per ED is about 34. In the first map below we can see the distribution of listings below, around (±10), and above the average.
Edit: dynamic map is now available here.
The parts of the city that have above average listings include the docklands, the north inner city around Mountjoy Square and near Stoneybatter. By the far the largest concentrations of listings are seen south of the river, particularly in the south docklands and around Temple Bar. Focusing on those EDs with 100 or more listings, it is clear that the areas south of the river have many more listings than those north of it. This may point to a greater availability in these areas.
Interestingly, the gap between in the southside of the map above contains the areas fancifully known as ‘the Georgian core’. The sabre-shaped ED known as South Dock has well over 300 listings. This takes in an area including the south docklands as well as the area immediately to the south and east of Trinity College. In and around the City Council building on Wood Quay is an area of high concentrations. Thanks to a suggestion by Martin at NCG, I then normalised these listings data by the number of housing units per ED from the 2011 Census. This gave a slightly different geography to the listings data. The average per area is a little under 2% of all housing units. Again, I classified the normalised listings data by below, around and above average but have not displayed the below average areas. We can note a number of differences, as is clear from the final map below.
13% of the units in south inner city are listed as AirBnB-available units. About 9% of the units South Dock are. The Georgian core comes back into play. The heaviest concentrations of listings are therefore found in the south inner city, heading west. I would like to read Downey’s report on this before I do any more work on these data. What’s not clear to me of course is if the Council is going to take any concrete actions to at least curb the power of property to yield profits in the middle of the city’s worst housing crisis. As Lorcan Sirr has indicated recently, some in control of this city have a strange relationship of denial with data. Action would require the Councillors to push back against the primacy of private property so you know…..not much will happen unless we organise like they’ve done in Barcelona and elsewhere.
March 15, 2017 at 1:19 pm
There is a major flaw with this insideairbnb data. It only shows availability and not actual bookings.
So if I open up the calendar of my airbnb unit for a whole year the data goes to the insideairbnb database as available all year but I could get no bookings or unlist it and insideairbnbs screenscraping would not know.
March 15, 2017 at 1:45 pm
Eamonn: there are many issues with these scraped data. The post above is not really about bookings but about the location of where listings from the dataset are. Thanks for your comment.
March 15, 2017 at 2:40 pm
Well if there is an issue with the data it should not be used as a reference. People are using this data to make specific claims about Airbnb and housing usage etc but if the data is fundamentalily flawed then surely it’s a completely unscientific analysis
March 15, 2017 at 3:57 pm
I am not making any specific claim here. I am showing how airbnb listings are unevenly distributed across the city.
March 15, 2017 at 3:44 pm
It’s way too evident which side your prejudices lie, Eoin, which I think may influence your collection of data, or at least the inferences you draw from it!
March 15, 2017 at 3:55 pm
Thanks for your comment. I do not collect these data.
March 15, 2017 at 7:27 pm
Very interesting. There is great diversity in the host community from very commercial operations to individuals who host travellers rather than share their spare rooms to long term tenants. 6700 listings … 47% whole apartments.
The 21700 empty units referenced in another article points in the direction of the real solution. The big investors referenced in that article are passing unnoticed as small individual hosts are mixed in with some commercial hosts are identified as the problem/solution in the overall housing crisis. The geographic data on these empty units would be very interesting.
March 15, 2017 at 7:28 pm
Eoin, it’s difficult to read some of the images. Could the data be presented as a table?
Let me know if you need a hand.
March 15, 2017 at 8:47 pm
The original data is all available online as a CSV file from InsideAirBNB.
March 16, 2017 at 2:53 pm
Colm: https://eoinomahony.carto.com/viz/99fe511c-0a57-11e7-8357-0e05a8b3e3d7/public_map
March 16, 2017 at 7:21 pm
Excellent work.
March 22, 2017 at 3:00 pm
Hi Eoin,
As you claim to have been ‘working with this data for a while now’, you must surely be aware that it includes many inactive listings, some of which have had no bookings from as far back as Feb 2012, such as this one, https://www.airbnb.ie/rooms/285721. The InsideAirbnb dataset, created by the vehemently anti-Airbnb activist Murray Cox, has become a convenient go-to data source for all those who seek to paint a shocking and damning picture of the impact of Airbnb on certain cities. The raw data alone has no bias, but the way in which it is cherry-picked and misrepresented – particularly when accompanied by scathing commentary – certainly does, and unfortunately, is frequently and deliberately manipulated to suit anti-Airbnb agenda.
Your mapping and presentation of the data gives an inaccurate and erroneous representation of the true number of active listings currently available in Dublin. The unfiltered 6729 figure quoted here, in the DCC analysis and in various media reports, creates the misleading and damaging impression that the long-term lettings market is consequently being starved of an equal and corresponding number of available rental units – the clear implication being that Airbnb hosts are the primary cause of the city’s housing crisis, spiralling rents and homeless population.
Yet, nowhere is a detailed breakdown of this data being presented, to make the (extremely relevant) distinction between Shared Room, Private Room and Entire Home offerings. Dormant listings are being counted alongside active listings. Hosts who rent out one or two rooms, and may only list their entire homes for a couple of weeks a year while away on holiday, are wrongly included in the Multiple Listings count. Additionally, the Multiple Listings figures encompass swathes of purpose-built self-catering apartments from large commercial operators/developers such as Canbe Superior Hospitality who, despite the huge deficit of new-build residential housing units, have already been granted planning permission and are therefore in compliance with regulations.
The devious strategy employed by Airbnb detractors, in lumping all these categories together under the single umbrella of ‘depleting available rental stock and displacing renters’, is disingenuous at best, duplicitous at worst, and presents a highly selective and utterly distorted interpretation of the actual state of affairs.
A non-geographic analysis, taking into account census figures of vacant units and other housing concerns, would surely much better serve policy makers.
https://www.facebook.com/DublinIHN/
March 22, 2017 at 5:48 pm
I am happy to reply in time with more detailed analysis. Thanks for your comment.
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