New method of harvesting crowd wisdom
Better wisdom from crowds

Date: January 25, 2017
Source: Massachusetts Institute of Technology

https://www.sciencedaily.com/releases/2017/01/170125145906.htm

Summary: The wisdom of crowds is not always perfect. But a team of researchers 
has found a way to make it better. This method, explained in a newly published 
paper, uses a technique the researchers call the 'surprisingly popular' 
algorithm to better extract correct answers from large groups of people.

Their method, explained in a newly published paper, uses a technique the 
researchers call the "surprisingly popular" algorithm to better extract correct 
answers from large groups of people. As such, it could refine wisdom-of-crowds 
surveys, which are used in political and economic forecasting, as well as many 
other collective activities, from pricing artworks to grading scientific 
research proposals.

The new method is simple. For a given question, people are asked two things: 
What they think the right answer is, and what they think popular opinion will 
be. The variation between the two aggregate responses indicates the correct 
answer.

"In situations where there is enough information in the crowd to determine the 
correct answer to a question, that answer will be the one [that] most 
outperforms expectations," says paper co-author Drazen Prelec, a professor at 
the MIT Sloan School of Management as well as the Department of Economics and 
the Department of Brain and Cognitive Sciences.

The paper is built on both theoretical and empirical work. The researchers 
first derived their result mathematically, then assessed how it works in 
practice, through surveys spanning a range of subjects, including U.S. state 
capitols, general knowledge, medical diagnoses by dermatologists, and art 
auction estimates.

Across all these areas, the researchers found that the "surprisingly popular" 
algorithm reduced errors by 21.3 percent compared to simple majority votes, and 
by 24.2 percent compared to basic confidence-weighted votes (where people 
express how confident they are in their answers). And it reduced errors by 22.2 
percent compared to another kind of confidence-weighted votes, those taking the 
answers with the highest average confidence levels.

The paper, "A solution to the single-question crowd wisdom problem," is being 
published today in Nature. The authors are Prelec; John McCoy, a doctoral 
student in the MIT Department of Brain and Cognitive Sciences; and H. Sebastian 
Seung, a professor of neuroscience and computer science at Princeton University 
and a former MIT faculty member. Prelec and McCoy are also researchers in the 
MIT Neuroeconomics Laboratory, where Prelec is the principal investigator.

A capital idea

To see how the algorithm works in practice, consider a case the researchers 
tested. A group of people were asked a yes-or-no question: Is Philadelphia the 
capital of Pennsylvania? They were also asked to predict the prevalence of 
"yes" votes.

Philadelphia is not the capital of Pennsylvania; the correct answer is 
Harrisburg. But most people believe Philadelphia is the capital because it is a 
"large, historically significant city." Moreover, the people who mistakenly 
thought Philadelphia is the state capital largely thought other people would 
answer the same way. So they predicted that a very high percentage of people 
would answer "yes."

Meanwhile, a certain number of respondents knew that Harrisburg is the correct 
answer. However, a large portion of those people also anticipated that many 
other people would incorrectly think the capital is Philadelphia. So the people 
who themselves answered "no" still expected a very high percentage of "yes" 
answers.

That means the answer to the two questions -- Is Philadelphia the capital? Will 
other people think so? -- diverged. Almost everyone expected other people to 
answer "yes." But the actual percentage of people who answered "yes" was 
significantly lower. For this reason, the "no" answer was the "surprisingly 
popular" one, since it deviated from expectations of what the answer would be.

And since the "surprisingly popular" answer differed in the "no" direction, 
that tells us the correct answer: No, Philadelphia is not the capital.

The same principle applies no matter which direction responses deviate from 
expectations. When people were asked if Columbia is the capital of South 
Carolina, the opposite happened: More people answered "yes," compared to their 
expectations of how many people would say "yes." So the surprisingly popular 
answer was, correctly: Yes, Columbia is the capital.

The wisdom of subsets of crowds

In this sense, the "surprisingly popular" principle is not simply derived from 
the wisdom of crowds. Instead, it uses the knowledge of a well-informed 
subgroup of people within the larger crowd as a diagnostically powerful tool 
that points to the right answer.

"A lot of crowd wisdom weights people equally," McCoy explains. "But some 
people have more specialized knowledge." And those people -- if they have both 
correct information and a correct sense of public perception -- make a big 
difference.

This is the case across scenarios that the researchers tested. Consider art. 
The researchers asked art professionals to guess the price range for different 
contemporary artworks. Individually, art experts selected price ranges that 
were typically too low, perhaps because selecting a lower range is a 
reasonable, safe answer for an artwork that the expert does not recognize. 
Collectively, this makes the majority opinion of an expert panel even more 
biased in the direction of low prices.

And this is where the "surprisingly popular" principle makes a difference, 
since it does not depend on an absolute majority of expert opinion. Instead, 
suppose a relatively small number of experts believe a piece sold for $100,000, 
while anticipating that most other people will think it sold for less. In that 
case, the evaluations of those experts will lead the "surprisingly popular" 
answer to be that the artwork was more expensive than most people thought.

"The argument in this paper, in a very rough sense, is that people who expect 
to be in the minority deserve some extra attention," Prelec says.

Recovering truth

The scholars recognize that the "surprisingly popular" algorithm is not 
theoretically foolproof in practice. It is at least conceivable that people 
could anticipate a "surprisingly popular" opinion and try to subvert it, 
although that would be very hard to execute. It is also the case, as they write 
in the Nature paper, that "These claims are theoretical and do not guarantee 
success in practice, as actual respondents will fall short of ideal."

Still, the researchers themselves hope their work will be tested in a variety 
of settings. In the paper they express confidence that the "surprisingly 
popular" principle will prove durable, asserting: "Such knowledge can be 
exploited to recover truth even when traditional voting methods fail."

Cheers,
Stephen

_______________________________________________
Link mailing list
[email protected]
http://mailman.anu.edu.au/mailman/listinfo/link

Reply via email to