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F. J. Aherne, N. A. Thacker and P. Rockett |
The Bhattacharyya Metric as an Absolute Similarity Measure for Frequency Coded Data.
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E. Alpaydin and C. Kaynak |
Cascading Classifiers.
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V. L. Brailovsky and M. Har-Even |
Detecting a Data Set Structure Through the Use of Nonlinear Projections Search and Optimization.
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M. Van Breukelen, J. E. den Hertog, R. P. W. Duin and D. M. J. Tax |
Handwritten Digit Recognition by Combined Classifiers.
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L. Bruzzone and S. B. Serpico |
A Simple Upper Bound to the Bayes Error Probability for Feature Selection.
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M. Dang and G. Govaert |
Fuzzy Clustering of Spatial Binary Data.
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R. P. W. Duin, D. de Ridder and D. M. J. Tax |
Featureless Pattern Classification.
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F. J. Ferri |
Combining Adaptive Vector Quantization and Prototype Selection Techniques to Improve Nearest Neighbour Classifiers.
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J. Flusser and T. Suk |
On Selecting the Best Features in a Noisy Environment.
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J. Grim |
Mixture of Experts Architectures for Neural Networks as a Special Case of Conditional Expectation Formula.
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M. Haindl and S. Šimberová |
A Scratch Removal Method.
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M. Kudo and J. Sklansky |
A Comparative Evaluation of Medium- and Large-Scale Feature Selectors for Pattern Classifiers.
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R. Kumar and P. Rockett |
Decomposition of High Dimensional Pattern Spaces for Hierarchical Classification.
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E. Nyssen |
Interpretation of Pattern Classification Results, Obtained from a Test Set.
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J. Pik |
Transformation of Structural Patterns in Discrete Events? An Application of Structural Methods in Discrete Event Systems.
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P. Pudil, J. Novovičová, P. Somol and R. Vrňata |
Conceptual Base of Feature Selection Consulting System.
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Š. Raudys |
Intrinsic Dimensionality and Small Sample Properties of Classifiers.
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M. Sato, M. Kudo, J. Toyama and M. Shimbo |
Construction of Nonlinear Discrimination Function Base on the MDL Criterion.
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L. Soukup |
Probability Distribution of Transformed Random Variables with Application to Nonlinear Features Extraction.
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H. Tenmoto, M. Kudo and M. Shimbo |
Piecewise Linear Classifiers Preserving High Local Recognition Rates.
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I. Vajda and J. Grim |
About the Maximum Information and Maximum Likelihood Principles.
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