Refining classifier from unsampled data

FUZZ-IEEE(2009)

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Abstract
For a learning task with a huge number of training instances, we sample some informative/important instances, which are then used for learning. Obtaining accurately labeling data is always difficult thus noise detection is required to filter out noises from sampled instances since the noises will degrade the learning performance. In this work, we propose to utilize unsampled instances to improve the performance of noise detection in sampled instances. Empirical study validates our idea that refined classifier can be achieved from noisy sampled instances by utilizing unsampled instances.
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Key words
unsampled data,learning performance,noisy sampled instances,learning (artificial intelligence),pattern classification,classifier refining,learning task,data labeling,noise detection,filtering,noise measurement,learning artificial intelligence,empirical study,training data,noise,classification algorithms
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