Gutstein, 2010 - Google Patents
Transfer learning techniques for deep neural netsGutstein, 2010
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- 483392922957133600
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- Gutstein S
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Inductive learners seek meaningful features within raw input. Their purpose is to accurately categorize, explain or extrapolate from this input. Relevant features for one task are frequently relevant for related tasks. Reuse of previously learned data features to help …
- 238000000034 method 0 title abstract description 142
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