Computer model reveals how brain represents meaning
[Modern human brain. Image source: Univ. of Wisconsin-Madison Brain
Collection.] Modern human brain.
Image source: Univ. of Wisconsin-Madison Brain Collection.

Scientists at Carnegie Mellon University have taken an important step
toward understanding how the human brain codes the meanings of words by
creating the first computational model that can predict the unique brain
activation patterns associated with names for things that you can see,
hear, feel, taste or smell.

Researchers previously have shown that they can use functional magnetic
resonance imaging (fMRI) to detect which areas of the brain are
activated when a person thinks about a specific word. A Carnegie Mellon
team has taken the next step by predicting these activation patterns for
concrete nouns - things that are experienced through the senses
- for which fMRI data does not yet exist.

The work could eventually lead to the use of brain scans to identify
thoughts and could have applications in the study of autism, disorders
of thought such as paranoid schizophrenia, and semantic dementias such
as Pick's disease.

The team, led by computer scientist Tom M. Mitchell and cognitive
neuroscientist Marcel Just, constructed the computational model by using
fMRI activation patterns for 60 concrete nouns and by statistically
analyzing a set of texts totaling more than a trillion words, called a
text corpus. The computer model combines this information about how
words are used in text to predict the activation patterns for thousands
of concrete nouns contained in the text corpus with accuracies
significantly greater than chance.

The findings are being published in the May 30 issue of the journal
Science.

"We believe we have identified a number of the basic building blocks
that the brain uses to represent meaning," said Mitchell, who heads
the School of Computer Science's Machine Learning Department.
"Coupled with computational methods that capture the meaning of a
word by how it is used in text files, these building blocks can be
assembled to predict neural activation patterns for any concrete noun.
And we have found that these predictions are quite accurate for words
where fMRI data is available to test them."

Just, a professor of psychology who directs the Center for Cognitive
Brain Imaging, said the computational model provides insight into the
nature of human thought. "We are fundamentally perceivers and
actors," he said. "So the brain represents the meaning of a
concrete noun in areas of the brain associated with how people sense it
or manipulate it. The meaning of an apple, for instance, is represented
in brain areas responsible for tasting, for smelling, for chewing. An
apple is what you do with it. Our work is a small but important step in
breaking the brain's code."

In addition to representations in these sensory-motor areas of the
brain, the Carnegie Mellon researchers found significant activation in
other areas, including frontal areas associated with planning functions
and long-term memory. When someone thinks of an apple, for instance,
this might trigger memories of the last time the person ate an apple, or
initiate thoughts about how to obtain an apple.

"This suggests a theory of meaning based on brain function,"
Just added.

In the study, nine subjects underwent fMRI scans while concentrating on
60 stimulus nouns - five words in each of 12 semantic categories
including animals, body parts, buildings, clothing, insects, vehicles
and vegetables.

To construct their computational model, the researchers used machine
learning techniques to analyze the nouns in a trillion-word text corpus
that reflects typical English word usage. For each noun, they calculated
how frequently it co-occurs in the text with each of 25 verbs associated
with sensory-motor functions, including see, hear, listen, taste, smell,
eat, push, drive and lift. Computational linguists routinely do this
statistical analysis as a means of characterizing the use of words.

These 25 verbs appear to be basic building blocks the brain uses for
representing meaning, Mitchell said.

By using this statistical information to analyze the fMRI activation
patterns gathered for each of the 60 stimulus nouns, they were able to
determine how each co-occurrence with one of the 25 verbs affected the
activation of each voxel, or 3-D volume element, within the fMRI brain
scans.

To predict the fMRI activation pattern for any concrete noun within the
text corpus, the computational model determines the noun's
co-occurrences within the text with the 25 verbs and builds an
activation map based on how those co-occurrences affect each voxel.

In tests, a separate computational model was trained for each of the
nine research subjects using 58 of the 60 stimulus nouns and their
associated activation patterns. The model was then used to predict the
activation patterns for the remaining two nouns. For the nine
participants, the model had a mean accuracy of 77 percent in matching
the predicted activation patterns to the ones observed in the
participants' brains.

The model proved capable of predicting activation patterns even in
semantic areas for which it was untrained. In tests, the model was
retrained with words from all but two of the 12 semantic categories from
which the 60 words were drawn, and then tested with stimulus nouns from
the omitted categories. If the categories of vehicles and vegetables
were omitted, for instance, the model would be tested with words such as
airplane and celery. In these cases, the mean accuracy of the
model's prediction dropped to 70 percent, but was still well above
chance (50 percent).

Plans for future work include studying the activation patterns for
adjective-noun combinations, prepositional phrases and simple sentences.
The team also plans to study how the brain represents abstract nouns and
concepts.

Source: Carnegie Mellon University
http://www.physorg.com/news131290235.html
<http://www.physorg.com/news131290235.html>



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