WASHINGTON:
MIT researchers have developed a new system that bridges the ways that
computers and humans process information to enable better
decision-making. Computers are good at identifying patterns in
huge data sets while humans are good at inferring patterns from just a
few examples. The new system bridges these two ways of
processing information, so that humans and computers can collaborate to
make better decisions. The system learns to make judgments by crunching
data but distills what it learns into simple examples. In
experiments, human subjects using the system were more than 20% better
at classification tasks than those using a similar system based on
existing algorithms.
"In this work, we were looking at whether
we could augment a machine-learning technique so that it supported
people in performing recognition-primed decision-making," said Julie
Shah, an assistant professor of aeronautics and astronautics at
Massachusetts Institute of Technology and a co-author on the new paper.
"That's the type of decision-making people do when they make tactical decisions — like in fire crews or field operations.
"When they're presented with a new scenario, they don't do search the
way machines do. They try to match their current scenario with examples
from their previous experience, and then they think, 'OK, that worked in
a previous scenario,' and they adapt it to the new scenario," Shah
said.
Shah and her colleagues were trying to augment a type of machine learning known as "unsupervised".
In supervised machine learning, a computer is fed a slew of training
data that's been labelled by humans and tries to find correlations — say, those visual features that occur most frequently in images labelled 'car'.
In unsupervised machine learning, on the other hand, the computer
simply looks for commonalities in unstructured data. The result is a set
of data clusters whose members are in some way related, but it may not
be obvious how. The MIT researchers made two major modifications to the type of algorithm commonly used in unsupervised learning. The first is that the clustering was based not only on data items'
shared features, but also on their similarity to some representative
example, which the researchers dubbed a 'prototype'. The other
is that rather than simply ranking shared features according to
importance, the way a topic-modelling algorithm might, the new algorithm
tries to winnow the list of features down to a representative set,
which the researchers dubbed a 'subspace'.
Tuesday, December 16, 2014
MIT develops system that helps computers teach by example
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