Lange et al., 2020 - Google Patents
Distribution Matching–Semi-Supervised Feature Selection for Biased Labelled DataLange et al., 2020
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- 1985626630848708205
- Author
- Lange M
- Chandramouli S
- Publication year
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In data science and machine learning, datasets with many dimensions, or features, are a common occurrence. Text documents, for instance, can be represented by word counts. In such a dataset, the number of dimensions equals the size of the vocabulary [16]. Another …
- 238000009826 distribution 0 title abstract description 98
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