findIPs
Feature rankings can be distorted by a single case in the context of high-dimensional data. The cases exerts abnormal influence on feature rankings are called influential points (IPs). The package aims at detecting IPs based on case deletion and quantifies their effects by measuring the rank changes (DOI:10.48550/arXiv.2303.10516). The package applies a novel rank comparing measure using the adaptive weights that stress the top-ranked important features and adjust the weights to ranking properties.
README
findIPs The package aims at detecting IPs based on case deletion and quantifies their effects by measuring the weighted rank changes. The package applies a novel rank-comparing measure using the adaptive weights that stress the top-ranked important features and adjust the weights to ranking properties. For full details, please see our preprint: Wang Shuo, and Junyan Lu. "Detect influential points of feature rankings." arXiv preprint arXiv:2303.10516 (2023). Installation The package will be…
- Repository
- github.com/shuostat/findips
Source attribution
- Bioconductor — findIPs
- GitHub — github.com/shuostat/findips
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