We use cookies to provide you with the best possible website experience. This includes cookies that are necessary for the operation of the site, as well as cookies used for anonymous statistics, comfort settings, or displaying personalized content. You can decide which categories you want to allow. Please note that depending on your settings, some features of the website may not be available.

Cookie settings

These necessary cookies are required to enable the core functionality of the website. Opting out of these cookies is not possible.

cb-enable
This cookie stores the user's cookie consent status for the current domain. Expiry: 1 year.
laravel_session
Stores the session ID to recognize the user when the page reloads and to restore their login session. Expiry: 2 hours.
XSRF-TOKEN
Provides CSRF protection for forms. Expiry: 2 hours.
IZA Discussion Paper No. 9427
October 2015
Trend-Spotting in the Housing Market

published in: Cityscape - A Journal of Policy Development and Research, 2016, 18 (3), 185-198

I create a time series of weekly ratios of Google searches, in the US, on buying and selling in the Real Estate Category of Google Trends. I call this ratio the Google US Housing Market BUSE Index or simply the BUSE index. It expresses the number of "buy"-searches for each "sell"-search which, by means of certain regularity assumptions on the distribution of Internet users, I think is a good proxy of the number of prospective home buyers for each prospective home seller in the pool of prospective housing market participants. I show this ratio to have several unique, desirable properties which make it useful for understanding and nowcasting the US housing market. Firstly it has a significant correlation with the US national S&P/Case-Shiller Home Price Index. Since the latter is monthly and published as a three-month moving average with a two month lag and the Google Trends data is weekly we can have a short term nowcasting of housing prices in the US. In the seasonal variations of this ratio the BUSE index recaptures traces of prospect theory whose applicability in the housing market has been well documented. I show how these Google data can be used to create a consistent narrative of the post bubble burst dynamics in the US housing market and propose the BUSE index as an instrument for monitoring housing market conditions.

Communications
Mark Fallak
mark.fallak@liser.lu
+352 585-855-526
World of Labour
Olga Nottmeyer
olga.nottmeyer@liser.lu
+352 585-855-501
Network Coordination
Christina Gathmann
christina.gathmann@liser.lu

The IZA@LISER Network is a global community of scholars dedicated to excellence in labor economics and related fields, now coordinated at the Luxembourg Institute of Socio-Economic Research (LISER) following its transition from Bonn.

About IZA@LISER Network
Contact
IZA Network (Current Site Operator):

Luxembourg Institute of Socio-Economic Research (LISER)
11, Porte des Sciences
Maison des Sciences Humaines
L-4366 Esch-sur-Alzette / Belval, Luxembourg

IZA Institute (In Liquidation):

Forschungsinstitut zur Zukunft der Arbeit GmbH i. L.
Schaumburg-Lippe-Str. 5-9, 53113 Bonn. Germany
Phone: +49 228 3894-0 | Fax: +49 228 3894-510
E-Mail: info@iza.org | Web: www.iza.org
Represented by: Martin T. Clemens (Liquidator)