Xu, Jianhua; Liu, Jiali; Yin, Jing; Sun, Chengyu (2016). A multi-label feature extraction algorithm via maximizing feature variance and feature-label dependence simultaneously. In Knowledge-Based Systems, 98(), 172--184.
GnegativePseAAC
mldr.datasets::get.mldr("GnegativePseAAC")
Summary
| Instances | 1392 | 
|---|---|
| Attributes | 448 | 
| Inputs | 440 | 
| Labels | 8 | 
| Labelsets | 19 | 
| Single labelsets | 5 | 
| Max frequency | 533 | 
| Cardinality | 1.046 | 
| Density | 0.1307 | 
| Mean IR | 18.4476 | 
| SCUMBLE | 0.0096 | 
| TCS | 11.1107 | 
Citation
Xu, Jianhua; Liu, Jiali; Yin, Jing; Sun, Chengyu (2016). A multi-label feature extraction algorithm via maximizing feature variance and feature-label dependence simultaneously. In Knowledge-Based Systems, 98(), 172--184.
@article{,
  title={A multi-label feature extraction algorithm via maximizing feature variance and feature-label dependence simultaneously},
  author={Xu, Jianhua and Liu, Jiali and Yin, Jing and Sun, Chengyu},
  journal={Knowledge-Based Systems},
  volume={98},
  pages={172--184},
  year={2016},
  publisher={Elsevier}
}Concurrence plot
        In this concurrence plot, sectors represent labels and links between them depict label co-occurrences. SCUMBLE is a measure designed to assess the concurrence among imbalanced labels.