Input feature selection for classification problems
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Abstract
Feature selection plays an important role in classifying systems such as neural networks (NNs). We use a set of attributes which are relevant, irrelevant or redundant and from the viewpoint of managing a dataset which can be huge, reducing the number of attributes by selecting only the relevant ones is desirable. In doing so, higher performances with lower computational effort is expected. In this paper, we propose two feature selection algorithms. The limitation of mutual information feature selector (MIFS) is analyzed and a method to overcome this limitation is studied. One of the proposed algorithms makes more considered use of mutual information between input attributes and output classes than the MIFS.…
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935
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Authors
2Topics & keywords
Topics
Keywords
- Computer science
- Feature selection
- Mutual information
- Greedy algorithm
- Feature (linguistics)
- Selection (genetic algorithm)
- Complement (music)
- Artificial intelligence
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