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897
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3144
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187
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Learning With Many Irrelevant Features
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277
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531
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515
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172
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Greedy Attribute Selection
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231
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Estimating Attributes: Analysis and Extensions of RELIEF
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662
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54
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Context-Sensitive Feature Selection for Lazy Learners
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33
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173
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385
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Very simple classification rules perform well on most commonly used datasets
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41
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An Evaluation of Feature Selection Methods and Their Application to Computer Security
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117
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Efficient algorithms for minimizing cross validation error
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127
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Learning Machines
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