Smart Heuristics: How to Make Good Decisions in a World of Uncertainty
Speaker: Prof. Shenghua Luan
Affiliation: Institute of Psychology, Chinese Academy of Sciences, Beijing, China
The word “heuristic” originates in ancient Greek, referring to simple methods, processes, and strategies that can help people solve problems. “Smart” heuristics are heuristics that are well-suited to a task, allowing us to make decisions quickly, frugally, as well as accurately. In this talk, I will present two studies of smart heuristics. Study 1 focuses on a heuristic called “∆-inference.” In a personnel selection task, where the goal is to choose the better job candidate of two, we show that ∆-inference makes more accurate selection decisions than logistic regression and three machine-learning algorithms. Study 2 introduces a class of heuristics called “fast-and-frugal trees.” In a task that classifies high- and low-risk companies applying for bank loans, we constructed a fast-and-frugal tree whose classification accuracy is on par with that of eight machine-learning algorithms. These two studies demonstrate that in the world of uncertainty and without the luxury of big data, smart heuristics can lead to good decisions, while being transparent, interpretable, and easy to learn.
Prof. Dr. Heinz Beck Institute of Experimental Epileptology and Cognition Research Life and Brain Center University of Bonn Medical Center Sigmund-Freud Str. 25 53127 Bonn
Contact:
Prof. Dr. Heinz Beck Institute of Experimental Epileptology and Cognition Research Life and Brain Center University of Bonn Medical Center Sigmund-Freud Str. 25 53127 Bonn
Contact:
Prof. Dr. Heinz Beck Institute of Experimental Epileptology and Cognition Research Life and Brain Center University of Bonn Medical Center Sigmund-Freud Str. 25 53127 Bonn