Fuzzy-Based Information Decomposition for Incomplete and Imbalanced Data Learning

@article{Liu2017FuzzyBasedID,
  title={Fuzzy-Based Information Decomposition for Incomplete and Imbalanced Data Learning},
  author={Shigang Liu and Jun Zhang and Yang Xiang and Wanlei Zhou},
  journal={IEEE Transactions on Fuzzy Systems},
  year={2017},
  volume={25},
  pages={1476-1490}
}
  • Shigang Liu, Jun Zhang, +1 author Wanlei Zhou
  • Published in
    IEEE Transactions on Fuzzy…
    2017
  • Mathematics, Computer Science
  • Class imbalance and missing values are two critical problems in pattern classification. Researchers have proposed a number of techniques to address each of the problems. However, no single technique can solve the two problems. Moreover, the simple combination approach cannot accurately classify the imbalanced data with missing values. This paper develops a fuzzy-based information decomposition (FID) method to simultaneously address these two problems. In the new FID method, the two different… CONTINUE READING

    Create an AI-powered research feed to stay up to date with new papers like this posted to ArXiv

    Citations

    Publications citing this paper.

    References

    Publications referenced by this paper.
    SHOWING 1-10 OF 50 REFERENCES

    Class imbalances versus small disjuncts

    VIEW 16 EXCERPTS
    HIGHLY INFLUENTIAL

    Missing Value Estimation for Mixed-Attribute Data Sets

    VIEW 12 EXCERPTS
    HIGHLY INFLUENTIAL

    Learning from Imbalanced Data

    VIEW 8 EXCERPTS
    HIGHLY INFLUENTIAL