Much of machine learning research focuses on predictive accuracy: given a task, create a machine learning model (or algorithm) that maximizes accuracy. In many settings, however, the final prediction or decision of a system is under the control of a human, who uses an algorithm's output along with their own personal expertise in order to produce a combined prediction. One ultimate goal of such collaborative systems is "complementarity": that is, to produce lower loss (equivalently, greater payoff or utility) than either the human or algorithm alone. However, experimental results have shown that even in carefully-designed systems, complementary performance can be elusive. Our work provides three key contributions. First, we provide a theoret...
The problem of algorithmic fairness is typically framed as the problem of finding a unique formal cr...
Despite the transformational success of machine learning across various applications, examples of de...
As the scope of machine learning broadens, we observe a recurring theme of algorithmic monoculture: ...
Hybrid human-ML systems are increasingly in charge of consequential decisions in a wide range of dom...
Hybrid human-ML systems increasingly make consequential decisions in a wide range of domains. These ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
Many interesting and successful human computation systems leverage the complementary computational s...
An “ensemble” approach to decision-making involves aggregating the results from different decision m...
The tools we use have a great impact on our productivity. It is imperative that tools are designed w...
When machine-learning algorithms are deployed in high-stakes decisions, we want to ensure that their...
Machine learning algorithms are increasingly used to assist human decision-making. When the goal of ...
We study how humans make decisions when they collaborate with an artificial intelligence (AI) in a s...
We study how humans make decisions when they collaborate with an artificial intelligence (AI): each ...
We consider the task of human collaborative category learning, where two people work together to cla...
Human computation system, often popularly referred to as crowdsourcing,requires the alignment of the...
The problem of algorithmic fairness is typically framed as the problem of finding a unique formal cr...
Despite the transformational success of machine learning across various applications, examples of de...
As the scope of machine learning broadens, we observe a recurring theme of algorithmic monoculture: ...
Hybrid human-ML systems are increasingly in charge of consequential decisions in a wide range of dom...
Hybrid human-ML systems increasingly make consequential decisions in a wide range of domains. These ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
Many interesting and successful human computation systems leverage the complementary computational s...
An “ensemble” approach to decision-making involves aggregating the results from different decision m...
The tools we use have a great impact on our productivity. It is imperative that tools are designed w...
When machine-learning algorithms are deployed in high-stakes decisions, we want to ensure that their...
Machine learning algorithms are increasingly used to assist human decision-making. When the goal of ...
We study how humans make decisions when they collaborate with an artificial intelligence (AI) in a s...
We study how humans make decisions when they collaborate with an artificial intelligence (AI): each ...
We consider the task of human collaborative category learning, where two people work together to cla...
Human computation system, often popularly referred to as crowdsourcing,requires the alignment of the...
The problem of algorithmic fairness is typically framed as the problem of finding a unique formal cr...
Despite the transformational success of machine learning across various applications, examples of de...
As the scope of machine learning broadens, we observe a recurring theme of algorithmic monoculture: ...