Correlation-based Feature Selection for Discrete and Numeric Class Machine Learning
- Authors
- Mark A. Hall
- Journal
- Research Commons (The University of Waikato)
In The Last Decade
doi.org/w12400912 →Countries where authors are citing Correlation-based Feature Selection for Discrete and Numeric Class Machine Learning
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Fields of papers citing Correlation-based Feature Selection for Discrete and Numeric Class Machine Learning
This network shows the impact of Correlation-based Feature Selection for Discrete and Numeric Class Machine Learning. Nodes represent research fields, and links connect fields that are likely to share authors. Colored nodes show fields that tend to cite the Correlation-based Feature Selection for Discrete and Numeric Class Machine Learning.
About Correlation-based Feature Selection for Discrete and Numeric Class Machine Learning
This paper, published in 2000, received 1.2k indexed citations . Written by Mark A. Hall covering the research area of Computer Vision and Pattern Recognition, Artificial Intelligence and Information Systems. It is primarily cited by scholars working on Artificial Intelligence (630 citations), Computer Vision and Pattern Recognition (357 citations) and Information Systems (266 citations). Published in Research Commons (The University of Waikato).
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This paper is also available at doi.org/w12400912.