Self
directed learning
What
is Self Directed Learning?
In recent years,
educators have come to focus more and more on the importance of lab-based
experimentation, hands-on participation, student-led inquiry, and the use of
“manipulables” in the classroom. The underlying rationale seems to be that
students are better able to learn when they can control the flow of their
experience, or when their learning is “self-directed.”
While the benefits of
self-directed learning are widely acknowledged, the reasons why a sense of
control leads to better acquisition of material are poorly understood.
Some researchers have
highlighted the motivational component of self-directed learning, arguing that
this kind of learning is effective because it makes students more willing and
more motivated to learn. But few researchers have examined how self-directed
learning might influence cognitive processes, such as those involved in
attention and memory.
In an article published
in Perspectives on Psychological Science, a
journal of the Association
for Psychological Science, researchers Todd Gureckis and Douglas
Markant of New York University address this gap in understanding by examining
the issue of self-directed learning from a cognitive and a computational
perspective.
According to Gureckis
and Markant, research from cognition offers several explanations that help to
account for the advantages of self-directed learning. For example,
self-directed learning helps us optimize our educational experience, allowing
us to focus effort on useful information that we don’t already possess and
exposing us to information that we don’t have access to through passive
observation. The active nature of self-directed learning also helps us in
encoding information and retaining it over time.
But we’re not always
optimal self-directed learners. The many cognitive biases and heuristics that
we rely on to help us make decisions can also influence what information we pay
attention to and, ultimately, learn.
Gureckis and Markant
note that computational models commonly used in machine learning research can
provide a framework for studying how people evaluate different sources of
information and decide about the information they seek out and attend to. Work
in machine learning can also help identify the benefits – and weaknesses – of
independent exploration and the situations in which such exploration will
confer the greatest benefit for learners.
Drawing together
research from cognitive and computational perspectives will provide researchers
with a better understanding of the processes that underlie self-directed
learning and can help bridge the gap between basic cognitive research and
applied educational research. Gureckis and Markant hope that this integration
will help researchers to develop assistive training methods that can be used to
tailor learning experiences that account for the specific demands of the
situation and characteristics of the individual learner.
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