Hybrid human-ML systems increasingly make consequential decisions in a wide range of domains. These systems are often introduced with the expectation that the combined human-ML system will achieve complementary performance, that is, the combined decision-making system will be an improvement compared with either decision-making agent in isolation. However, empirical results have been mixed, and existing research rarely articulates the sources and mechanisms by which complementary performance is expected to arise. Our goal in this work is to provide conceptual tools to advance the way researchers reason and communicate about human-ML complementarity. Drawing upon prior literature in human psychology, machine learning, and human-computer inter...
We study how humans make decisions when they collaborate with an artificial intelligence (AI) in a s...
With a principled methodology for systematic design of human–robot decision-making teams as a motiva...
Abstract Organizational decisions have become more data-driven and collaborative, with the increasi...
Hybrid human-ML systems are increasingly in charge of consequential decisions in a wide range of dom...
Much of machine learning research focuses on predictive accuracy: given a task, create a machine lea...
The tools we use have a great impact on our productivity. It is imperative that tools are designed w...
The use of ML-based decision support systems in business-related decision-making processes is a prov...
Hybrid Intelligence is an emerging concept that emphasizes the complementary nature of human intelli...
In this paper, we present the current state-of-the-art of decision making (DM) and machine learning ...
Machine learning algorithms are increasingly used to assist human decision-making. When the goal of ...
: We propose Preferential MoE, a novel human-ML mixture-of-experts model that augments human experti...
Machine learning systems are increasingly a part of human lives, and so it is increasingly important...
Despite the transformational success of machine learning across various applications, examples of de...
Machine Learning (ML) and Artificial Intelligence (AI) impact many aspects of human life, from recom...
In this paper, we consider some key characteristics that relational AI should exhibit to enable deci...
We study how humans make decisions when they collaborate with an artificial intelligence (AI) in a s...
With a principled methodology for systematic design of human–robot decision-making teams as a motiva...
Abstract Organizational decisions have become more data-driven and collaborative, with the increasi...
Hybrid human-ML systems are increasingly in charge of consequential decisions in a wide range of dom...
Much of machine learning research focuses on predictive accuracy: given a task, create a machine lea...
The tools we use have a great impact on our productivity. It is imperative that tools are designed w...
The use of ML-based decision support systems in business-related decision-making processes is a prov...
Hybrid Intelligence is an emerging concept that emphasizes the complementary nature of human intelli...
In this paper, we present the current state-of-the-art of decision making (DM) and machine learning ...
Machine learning algorithms are increasingly used to assist human decision-making. When the goal of ...
: We propose Preferential MoE, a novel human-ML mixture-of-experts model that augments human experti...
Machine learning systems are increasingly a part of human lives, and so it is increasingly important...
Despite the transformational success of machine learning across various applications, examples of de...
Machine Learning (ML) and Artificial Intelligence (AI) impact many aspects of human life, from recom...
In this paper, we consider some key characteristics that relational AI should exhibit to enable deci...
We study how humans make decisions when they collaborate with an artificial intelligence (AI) in a s...
With a principled methodology for systematic design of human–robot decision-making teams as a motiva...
Abstract Organizational decisions have become more data-driven and collaborative, with the increasi...