Title of article :
Flexible shaping: How learning in small steps helps
Author/Authors :
Krueger، نويسنده , , Kai A. and Dayan، نويسنده , , Peter، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Pages :
15
From page :
380
To page :
394
Abstract :
Humans and animals can perform much more complex tasks than they can acquire using pure trial and error learning. This gap is filled by teaching. One important method of instruction is shaping, in which a teacher decomposes a complete task into sub-components, thereby providing an easier path to learning. Despite its importance, shaping has not been substantially studied in the context of computational modeling of cognitive learning. Here we study the shaping of a hierarchical working memory task using an abstract neural network model as the target learner. Shaping significantly boosts the speed of acquisition of the task compared with conventional training, to a degree that increases with the temporal complexity of the task. Further, it leads to internal representations that are more robust to task manipulations such as reversals. We use the model to investigate some of the elements of successful shaping.
Keywords :
PFC , Shaping , gating , Sequence learning , computational modeling
Journal title :
Cognition
Serial Year :
2009
Journal title :
Cognition
Record number :
2076473
Link To Document :
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