Searching for authors named "George Forman" – sorted by Relevance.
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Choose Your Words Carefully: An Empirical Study Of Feature Selection Metrics for Text Classification
- Classification George Forman Software Technology Laboratory HP Laboratories Palo Alto HPL-2002-88 (R.2) September
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Incremental Machine Learning to Reduce Biochemistry Lab Costs in the Search for Drug Discovery
- expense could be avoided. George Forman Hewlett-Packard Labs 1501 Page Mill Rd. MS 1143 Palo Alto, CA, USA
- Cited by 1 (0 self) – Add To MetaCart
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Wanted: Programming Support for Ensuring Responsiveness Despite Resource Variability and Volatility
- George H. Forman Hewlett-Packard Labs gforman@(email omitted); February 13, 1998 Abstract Applications
- Cited by 2 (0 self) – Add To MetaCart
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Quantifying trends accurately despite classifier error and class imbalance
- Quantifying Trends Accurately Despite Classifier Error and Class Imbalance George Forman
- Cited by 2 (2 self) – Add To MetaCart
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A pitfall and solution in multi-class feature selection for text classification
- A Pitfall and Solution in Multi-Class Feature Selection for Text Classification George Forman
- Cited by 11 (1 self) – Add To MetaCart
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Tackling Concept Drift by Temporal Inductive Transfer
- Analysis of Concept Drift and Temporal Inductive Transfer for Reuters2000 George Forman Hewlett
- Cited by 9 (1 self) – Add To MetaCart
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Obtaining Responsiveness in Resource-Variable Environments
- of Washington Abstract Obtaining Responsiveness in Resource-Variable Environments by George H. Forman
- Cited by 4 (2 self) – Add To MetaCart
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Learning from Little: Comparison of Classifiers Given Little Training
- Learning from Little: Comparison of Classifiers Given Little Training George Forman and Ira Cohen
- Cited by 12 (4 self) – Add To MetaCart
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Learning from Little: Comparison of Classifiers Given Little Training
- Learning from Little: Comparison of Classifiers Given Little Training George Forman, Ira Cohen
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Linear Speed-Up for a Parallel Non-Approximate Recasting of Center-Based Clustering Algorithms, including K-Means, K-Harmonic Means, and EM
- Maximization (EM) [Zhang, Hsu, Forman ’00]. Here we present experimental measurements of their parallel
- Cited by 11 (4 self) – Add To MetaCart

