The three ways are: 1) pick using good judgment; 2) draw random sample; or, 3) use all relevant sales.
Editor’s Note: This is part 2 of the series ‘Three Ways to Pick Comps‘.
When I became an appraiser, good judgment ruled. Commercial data was not available, and the MLS comp book came out every three months. Phone calls on listings and queries to agents was the way. We called this “confirming” a sale. “Trust me, I know a good comp when I see one!”
Subjective and convenient. But it was the best method available in the realm of paper data.
As appraisal education changed, especially from the Appraisal Institute – the random sample was not ever suggested as a great way to select comps. However, a large amount of (then new) “advanced education” curriculum taught inferential statistics, which assumes a random sample. Such as p-values, t-test, confidence intervals, hypothesis testing, standard errors, Type I and Type II errors, null and alternative hypothesis tests. All ways of judging how well a random sample represents population.
Clever and sophisticated and “advanced.” Unfortunately, useless for appraisal work. If you have all the data, you just use it! No need to take samples. Neither judgment samples nor random samples.
In appraisal, we should use all relevant sales. Three reasons:
- USPAP requires it. “An appraiser must collect, verify, and analyze all information necessary” and “must analyze such comparable sales data as are available.” [Emphases added].
- The analytic ideal. Comparable similarity is a core part of modern analysis (data science). There is a trade-off between too little data and too much data. There is an ideal, best-sized, relevant, comparable data set. Too little data you get bias, analytic bias. Too much data, you get analytic Data scientists call this the bias-variance tradeoff.
- Adjustments can’t be objectively calculated/estimated from a subjective/biased/uncertain data set. It cannot! [Remember our Rule #1: You can’t get objective results from subjective data.]
You ask: “So how do I get “all necessary” and “available” data, as required by USAPAP? How do we get near to that “bias versus variance” ideal?
The answer lies in a basic principle, and is a major focus of data science. The starting principle is called “reduction.” Simply put, you take a larger problem, reduce it into smaller pieces and parts, analyze the parts, then synthesize, (put them back together). In the Community of Asset Analysts (CAA), we call these the five dimensions of similarity, as follows:
- Property type/rights
- Transaction/contract
- Time and price indexing
- Spatial location elements
- Preference characteristics
We call these “dimensions” because they have different model/algorithm solutions. While AVMs (Automated Valuation Models) utilize some of these methods, the ideal valuation (and risk analysis) solution involves the refined judgment of a field-related expert – the appraiser.
Appraisal is “believe me.” Statistics is theoretical. Data science explicitly recognizes the need for refined, informed judgment. Quality, trained analyst judgment.
Let’s do science — systematic study through observation and experiment.
Lawrence Fenimore
April 19, 2023 @ 5:07 am
If you are writing to educate you missed the point.
Steven Smith
April 19, 2023 @ 7:45 am
Something I learned in my Residential Applications course 40+years ago was to make a Market Data Array of all the relevant data. I began including one in my reports, along with the stats to go with it and began stating why I picked the ones to adjust on the grid, and began to Array them either Date order or Relevance order.
The ones I used as primary and adjusted, I began Verifying the Transactional aspect of the sale to find out about Motivations, Terms, Concessions or Personal Property packed in to the sales price and also began to make Cash Equivalency adjustments. This was two years into a recession.
Within 2-years our office had the strongest reputation in the market area. And, I was tapped to be a Chief Appraiser for a bank to create an approved appraiser list of Ethical and Competent appraisers across the country that were willing to do this level of due diligence.