When Are Two Lists Better than One?: Benefits and Harms in Joint Decision-making

08/22/2023
by   Kate Donahue, et al.
0

Historically, much of machine learning research has focused on the performance of the algorithm alone, but recently more attention has been focused on optimizing joint human-algorithm performance. Here, we analyze a specific type of human-algorithm collaboration where the algorithm has access to a set of n items, and presents a subset of size k to the human, who selects a final item from among those k. This scenario could model content recommendation, route planning, or any type of labeling task. Because both the human and algorithm have imperfect, noisy information about the true ordering of items, the key question is: which value of k maximizes the probability that the best item will be ultimately selected? For k=1, performance is optimized by the algorithm acting alone, and for k=n it is optimized by the human acting alone. Surprisingly, we show that for multiple of noise models, it is optimal to set k ∈ [2, n-1] - that is, there are strict benefits to collaborating, even when the human and algorithm have equal accuracy separately. We demonstrate this theoretically for the Mallows model and experimentally for the Random Utilities models of noisy permutations. However, we show this pattern is reversed when the human is anchored on the algorithm's presented ordering - the joint system always has strictly worse performance. We extend these results to the case where the human and algorithm differ in their accuracy levels, showing that there always exist regimes where a more accurate agent would strictly benefit from collaborating with a less accurate one, but these regimes are asymmetric between the human and the algorithm's accuracy.

READ FULL TEXT

page 10

page 11

research
03/06/2022

Optimal regimes for algorithm-assisted human decision-making

We introduce optimal regimes for algorithm-assisted human decision-makin...
research
04/19/2021

Joint replenishment meets scheduling

In this paper we consider a combination of the joint replenishment probl...
research
03/21/2018

Crowd-Machine Collaboration for Item Screening

In this paper we describe how crowd and machine classifier can be effici...
research
09/28/2022

Repeated Prophet Inequality with Near-optimal Bounds

In modern sample-driven Prophet Inequality, an adversary chooses a seque...
research
05/22/2021

Human-AI Collaboration with Bandit Feedback

Human-machine complementarity is important when neither the algorithm no...
research
02/17/2022

Human-Algorithm Collaboration: Achieving Complementarity and Avoiding Unfairness

Much of machine learning research focuses on predictive accuracy: given ...

Please sign up or login with your details

Forgot password? Click here to reset