Has a Kafka dreadnaught of AI-Driven Real Estate AVM awakened?

By Sebastian Hulshoff

Property valuation workspace in grayscale

It must have been quite a discovery for Francis Galton and his scientific peers in the 19th century to acknowledge the popularizing of the new regression toward the mean. The humble finding was founded in methodology when studying the predictions of height within families. Like the Elixir of Life, science had a successful stab at prediction. A brave new world was paved ahead in all fields of science, including asset prices of real estate. With the methodology known, it took a near century for real estate data to be accessible.

With government monopoly on transaction data and the need for efficient real estate taxation starting in the 1980s, Automated Valuation Models (AVMs), the regression was starting to be utilized en masse. The past half century was an evolution of data from a monopolistic framework to a situation of monopolistic competition, enriched and combined with Artificial Intelligence. Today we stand at a new brave new universe of asset pricing. It is easy to race down the bandwagon, but as Francis Galton and his peers later learned and history sadly pivoted toward the extremely dangerous pitfall; this article peels some of the onion rings on the historical Kafka lessons learned on regression, data, and humanity’s role.

This article focuses on data versus subject matter experts, regression methodologies, and the advent of new technologies promising instead a brave new universe, but questions if these technologies stand on the shoulders of giants or hallucinating phantoms.

The folly, Pi, and the designers of AVMs

Often overlooked, the best academia brings together forces of two different disciplines. In such, the world-famous asset pricing model Black-Scholes (1973) for pricing options is such an example. Myron Scholes was the economist, but it was Fischer Black, with a background in thermodynamics, that brought the key ingredient ‘sigma’ (volatility), as in the rise and fall of temperature, that made the model work. It is precisely the best of both worlds that often lacks with the AVMs available to the market. The pitiful, like the later destructive application of Francis Galton, AVMs are frequently developed by data scientists. Data scientists, however fabulous with their machines, but as McKinsey Quarterly in 2001, the popularized the Pi-shaped approach. Instead, the AVM tech is shaped by T-shaped people. The Quarterly reported clearly the risks. Data scientists traditionally are the former, and it should be worrying that they instead, or lack conjunction with, trained real estate professionals, ‘predict’ prices. Lesson one: when vetting AVMs, do not review the back tests; instead break down the team experience and identify the Pi-shaped AVM organizations.

The data normalization trap in real estate

As most elementary children know, one needs two points to draw a line. But what if those coordinates are misaligned and that line goes to infinity? For sure the Mars shot is missed. That is why in real estate, value adjustments are dirty and gritty, time-consuming work. Validating each point and adjusting so the stars are aligned is precisely the human work of a real estate professional. One can pour a bucket into a funnel and allow the marbles/data points to fall into a normal distribution, but little use it is when the very axiom is incorrect. And incorrect is frequently the norm; it is here the hybrid form of AVM is more powerful, together with alternative data. Using house prices to derive, with a regression, a prediction of price is folly. The prices must be adjusted to values and then enriched with alternative data that power not a pricing model, but a valuation model. Most valuation models are driven by price; a logic error so basic as Watson frequently hears. Lesson two: many tech companies fall short utilizing misaligned pricing data to engine their models.

The Cannery, AI, and Pied the Piper have a chat

Every generation has a magic wand; in this time and age, it is Artificial Intelligence (AI). For sure, it is a marvel of the day and age that brings society nearer to a new Brave New Universe. In the AI revolution, a word is missing. That word is a common thread in this paper; it is HI. The HI stands for Human Intelligence that has been around since the dawn of time. Markets flip, storms come, a canary in a coal mine knows it, yet AI dreams in a virtual reality world. The AI agent, trained with the best of HI words in poetic prose, enacts the 13th-century myth of ‘The Pied Piper of Hamelin.’ It is a tale that teaches about trust, responsibility, and consequences; do historians not always say ‘history repeats itself’.

As any good engineer will ask first, what are the redundancy systems in place? It is curious how lacking that question is with AVMs specifically driven by AI. It is very worrisome when knowing that real estate debt (mortgage) accounts for between forty and sixty percent of Gross Domestic Product for many EU countries. It is time for HI to ask critical questions to the governing bodies, system banks, and tax collectors mandating that extra safeguards are in place. Fans of ‘Little Britain’ know all too well the pun ‘Computer says NO’. An engineer in kindergarten terms can explain the term Catastrophic Failure, or Myron Scholes in his work on Risk Management and Fischer Black in thermodynamics the concept of Pressure Drop; the writing is on the wall. Lesson three: the iron triangle scope is being changed with AI; what roles safeguard HI in the decision-making process?

The final tune and historical woes of regression

Real estate has a huge contributory value to a country’s GDP; unexpected swings in GDP bring market uncertainty, economic destabilization, and the polls react. One asset class more than any other asset class, real estate price swings like the Sword of Damocles continuously above a nation’s well-being. The real estate valuation models used to predict prices are more often AI models trained by T-trained people using unvalidated dots with no canaries in a cage, and governing bodies are rewriting the notes to Pied the Piper tunes. This is no brave new universe, but a world of folly that awaits that Kafka knew all too well.

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