Detailed results of "Insights into imbalance-aware Multilabel Prototype Generation mechanisms for k-Nearest Neighbor classification in noisy scenarios"
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资源简介:
Detailed experimental results of the different Prototype Generation strategies for k-Nearest Neighbour classification in multilabel data attending to the particular issues of label-level imbalance and noise:
1. Noise-free scenarios
- Study of the considered strategies for addressing label-level imbalance in PG scenarios without induced noise.
- Individual results provided for each corpus.
- Statistical tests (Friedman and Bonferroni-Dunn with significance level of p < 0.01) to assess the improvement compared to the base multilabel PG strategies
- Corresponds to Section 5.1 in the manuscript.
2. Noisy scenarios
- Study of the noise robustness capabilities of the proposed strategies.
- Individual results provided for each corpus.
- Statistical tests (Friedman and Bonferroni-Dunn with significance level of p < 0.01) to assess the improvement compared too the base multilabel PG strategies
- Corresponds to Section 5.2 in the manuscript.
3. Results ignoring the Editing stage
- Assessment of the relevance of the Editing stage in the general pipeline.
- Individual results provided for each corpus.
- Corresponds to Section 5.3 in the manuscript.
创建时间:
2024-04-02



