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Report 1890

Associated Incidents

Incident 1494 Report
Zillow Shut Down Zillow Offers Division Allegedly Due to Predictive Pricing Tool's Insufficient Accuracy

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Why Zillow Couldn’t Make Algorithmic House Pricing Work
wired.co.uk · 2021

Zillow's Zestimate of home values has become a go-to reference for US homeowners. But when Zillow tried to use its algorithm to buy and sell homes, it badly misread the market.

The company’s iBuyer (or “instant buyer”) arm, where tech-first firms use algorithms to quickly value, buy, and sell homes, launched in 2018 in Phoenix. It joined a bustling market in the Arizona city: Opendoor, Redfin, and Offerpad have been buying and flipping homes there since around 2014.

The principle behind iBuying is simple: Leveraging the power of big data, tech firms estimate the price at which they think they can sell a property, which then informs their offers to buy. They tend to offer lower prices than traditional buyers, but attract sellers by promising faster, all-cash deals.

Once an iBuyer owns a home, it works quickly to renovate the property and relist it—in theory for a profit. An analysis of millions of home sales across the US between 2013 and 2018 by academics at Stanford, Northwestern, and Columbia Business School found that iBuyers made around 5 percent profit by flipping homes.

Zillow believed it had the secret to the iBuying world: the Zestimate. Launched in 2006, the highly touted algorithm had been trained on millions of home valuations across the US before it was put to work estimating the possible price of property Zillow itself bought. In theory, it was a natural confluence of two things: Zillow’s expertise in pricing homes, and a new method of buying properties that relied on accurate estimates.

For three years it worked, according to John Wake, who has been a realtor and real estate analyst around Phoenix since 2003. In that time, he’s seen the market collapse several times, including during the 2008–09 financial crisis, set off by the problems with subprime loans. But he’s never seen anything like the past 18 months.

“I don’t know anybody in the spring of 2020 who predicted the market would do what it did,” he says. “No one foresaw it would take off and become so strong.” In March 2020, pretty much all activity in Phoenix’s housing market stopped as the world shut down and economic uncertainty reigned. By October 2021, sales had dramatically accelerated, including among iBuyers.

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