'Art and science:' How bracketologists are using artificial intelligence this March Madness

College hoops fans might want to think again before pinning their hopes of a perfect March Madness bracket on artificial intelligence.

While the advancement of artificial intelligence into everyday life has made “AI” one of the buzziest phrases of the past year, its application in bracketology circles is not so new. Even so, the annual bracket contests still provide plenty of surprises for computer science aficionados who've spent years honing their models with past NCAA Tournament results.

They have found that machine learning alone cannot quite solve the limited data and incalculable human elements of “The Big Dance."

“All these things are art and science. And they’re just as much human psychology as they are statistics,” said Chris Ford, a data analyst who lives in Germany. “You have to actually understand people. And that’s what’s so tricky about it.”

Casual fans may spend a few days this week strategically deciding whether to maybe lean on the team with the best mojo — like Sister Jean’s 2018 Loyola-Chicago squad that made the Final Four — or to perhaps ride the hottest-shooting player — like Steph Curry and his breakout 2008 performance that led Davidson to the Sweet Sixteen.

The technologically inclined are chasing goals even more complicated than selecting the winners of all 67 matchups in both the men’s and women’s NCAA tournaments. They are fine-tuning mathematical functions in pursuit of the most objective model for predicting success in the upset-riddled tournament. Some are enlisting AI to perfect their codes or to decide which aspects of team resumes they should weigh most heavily.

The odds of crafting a perfect bracket are stacked against any competitor, however advanced their tools may be. An “informed fan” making certain assumptions based on previous results — such as a 1-seed beating a 16-seed — has a 1 in 2 billion chance at perfection, according to Ezra Miller, a mathematics and statistical science professor at Duke.

“Roughly speaking, it would be like choosing a random person in the Western Hemisphere," he said.

Artificial intelligence is likely very good at determining the probability that a team wins, Miller said. But even with the models, he added that the “random choice of who’s going to win a game that’s evenly matched” is still a random choice.

For the 10th straight year, the data science community Kaggle is hosting “Machine Learning Madness.” Traditional bracket competitions are all-or-nothing; participants write one team’s name into each open slot. But “Machine Learning Madness” requires users to submit a percentage reflecting their confidence that a team will advance.