How computers can learn better
With a recently released programming framework, researchers show that a new machine-learning algorithm outperforms its predecessors.
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With a recently released programming framework, researchers show that a new machine-learning algorithm outperforms its predecessors.
In an age of specialization, a little versatility could improve operations management, cloud computing, and possibly even the provision of health care.
Techniques used to ensure that airplanes won’t stall out in flight could be adapted to prove that computer programs won’t divide by zero.
Devavrat Shah spans disciplines by looking at networks probabilistically and probabilities as networks.
The fellowship provides tenured, mid-career faculty in the Department of Electrical Engineer and Computer Science with resources for up to three years to pursue new research and development paths.
MIT researchers find critical speed above which birds — and drones — are sure to crash.
A combination of two algorithms developed at MIT allows autonomous robots to execute tasks much more efficiently — and move more predictably.
New technologies intended to boost reliance on renewable energy could destabilize the power grid if they’re not matched with careful pricing policies.
Researchers believe that comparing products, rather than rating them on an absolute scale, will lead to algorithms that better predict customers’ preferences.
By melding economics and engineering, researchers show that as social networks get larger, they usually get better at sorting fact from fiction.
By demonstrating fundamental limits on their accuracy, MIT researchers show how to improve wireless location-detection systems.
Many scientific disciplines use computers to infer patterns in data. But how much data is enough to ensure that the inferences are right?
With techniques for translating complicated equations into ‘sums of squares,’ Pablo Parrilo helps make sense of previously insoluble problems.