---
abstract: 'Psychophysical findings accumulated over the past several decades indicate that perceptual tasks such as similarity judgment tend to be performed on a low-dimensional representation of the sensory data. Low dimensionality is especially important for learning, as the number of examples required for attaining a given level of performance grows exponentially with the dimensionality of the underlying representation space. In this chapter, we argue that, whereas many perceptual problems are tractable precisely because their intrinsic dimensionality is low, the raw dimensionality of the sensory data is normally high, and must be reduced by a nontrivial computational process, which, in itself, may involve learning. Following a survey of computational techniques for dimensionality reduction, we show that it is possible to learn a low-dimensional representation that captures the intrinsic low-dimensional nature of certain classes of visual objects, thereby facilitating further learning of tasks involving those objects.'
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creators_name:
- family: Edelman
given: Shimon
honourific: ''
lineage: ''
- family: Intrator
given: Nathan
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date: 1997
date_type: published
datestamp: 1997-10-17
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dir: disk0/00/00/05/62
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eprintid: 562
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lastmod: 2011-03-11 08:54:04
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rev_number: 10
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status_changed: 2007-09-12 16:30:59
subjects:
- cog-psy
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title: Learning as Extraction of Low-Dimensional Representations
type: preprint
userid: 43
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