Scientists coax computers to think like
people
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[December 11, 2015]
By Will Dunham
WASHINGTON (Reuters) - For artificial
intelligence and smart machines to really take off, computers are going
to have to be able to think more like people, according to experts in
the field. Researchers are now making important progress toward that
goal.
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Scientists said on Thursday they had created a computer model, or
algorithm, that captures the unique human ability to grasp new
concepts from a single example in a study involving learning
unfamiliar handwritten alphabet characters.
This work as well as research like it has the twin goals of better
understanding human learning and developing new, more human-like
learning algorithms, New York University cognitive and data
scientist Brenden Lake said.
"We aimed to reverse-engineer how people learn about these simple
visual concepts, in terms of identifying the types of computations
that the mind may be performing, and testing these assumptions by
trying to recreate the behavior," Lake said.
The algorithm was designed to make a computer able to learn quickly
from a single example in the way people do.
"You show even a young child a horse or a school bus or a skateboard
and they get it from just one or a few examples," Massachusetts
Institute of Technology computational cognitive science professor
Joshua Tenenbaum said.
Standard algorithms in machine-learning require tens, hundreds or
even thousands of training examples to yield similar results,
Tenenbaum said.
In the study, computers boasting the new algorithm and human
subjects were presented with selected characters among a data set of
about 1,600 handwritten characters from 50 alphabets from around the
world. They even included a fictional alien alphabet from the
animated TV show "Futurama."
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Among other tasks, the human subjects and computers were directed to
reproduce various characters after being given a lone example. Human
judges were then asked to identify which characters were reproduced
by a computer. The judges found the work produced by the computers
to be virtually indistinguishable from that of human subjects.
University of Toronto computer science and statistics professor
Ruslan Salakhutdinov said he hoped this new work would help guide
progress in artificial intelligence by leading to next-generation
intelligent machines "that hopefully will come close to displaying
human-like intelligence."
The same approach used in the study might be applicable to machine
learning for many other tasks like speech recognition and object
recognition, Lake said.
The research was published in the journal Science.
(Reporting by Will Dunham; Editing by Sandra Maler)
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