Collaborative Prediction via Tractable Agreement Protocols
Ira Globus-Harris
Cornell University
(hosted by Manuel Gomez Rodriguez)
(hosted by Manuel Gomez Rodriguez)
09 Dec 2025, 10:30 am
Kaiserslautern building G26, room 111
SWS Colloquium
Designing effective collaboration between humans and AI systems is crucial for
leveraging their complementary abilities in complex decision tasks. But how
should agents possessing unique knowledge—like a human expert and an AI model—
interact to reach decisions better than either could alone? In this talk, I
will introduce a collection of tools based in machine learning theory and
algorithmic game theory which allow us to develop efficient "collaboration
protocols", where parties iteratively exchange only low-dimensional information—
their current predictions or best-response actions—without needing to share
underlying features and which guarantee that the agents' final predictions are
provably competitive with an optimal predictor with access to their joint
features. ...
Designing effective collaboration between humans and AI systems is crucial for
leveraging their complementary abilities in complex decision tasks. But how
should agents possessing unique knowledge—like a human expert and an AI model—
interact to reach decisions better than either could alone? In this talk, I
will introduce a collection of tools based in machine learning theory and
algorithmic game theory which allow us to develop efficient "collaboration
protocols", where parties iteratively exchange only low-dimensional information—
their current predictions or best-response actions—without needing to share
underlying features and which guarantee that the agents' final predictions are
provably competitive with an optimal predictor with access to their joint
features. Together, these results offer a new foundation for building systems
that achieve the power of pooled knowledge through tractable interaction alone.
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