Babenko, 2008 - Google Patents
Multiple instance learning: algorithms and applicationsBabenko, 2008
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- 12562063612031705217
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- Babenko B
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Traditional supervised learning requires a training data set that consists of inputs and corresponding labels. In many applications, however, it is difficult or even impossible to accurately and consistently assign labels to inputs. A relatively new learning paradigm …
- 230000000875 corresponding 0 abstract 1
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