Abstract

The rule-based fuzzy systems have successfully applied for numerous medical data classification problems. However, structuring the concise and interpretable fuzzy rules with good classification performance is still a big challenge. To address this issue, a novel feature selection and rule generation integrated learning for Takagi-Sugeno-Kang fuzzy system (called FSRG-IL-TSK) in this paper. FSRG-IL-TSK represents feature selection, structure identification and parameter learning into a Bayesian model, and uses the sequential importance resampling (SIR) algorithm to obtain the optimal parameters simultaneously, including the optimal features for each fuzzy rule, number of rules, and antecedent/consequent parameter of rules. Due to an integrated learning mechanism, it can select a small set of useful features and obtain a small number of rules. The effectiveness and advantages of FSRG-IL-TSK are validated experimentally on real-world medical data classification tasks.

Highlights

  • With the rapid development of artificial intelligence and other technologies, machine learning is widely used in medical diagnosis and healthcare applications; it provides auxiliary support for digital health

  • Different from the classical TSK fuzzy systems in which feature selection and rule generation learned into the separate phases, FSRG-IL-TSK integrates these two parts into Bayesian model

  • A large number of researches have focused on finding useful fuzzy rules from data, feature selection and rule generation are still an open issue for constructing effective and interpretable fuzzy rules

Read more

Summary

Introduction

With the rapid development of artificial intelligence and other technologies, machine learning is widely used in medical diagnosis and healthcare applications; it provides auxiliary support for digital health. INDEX TERMS Fuzzy system, feature selection, rule generation, Bayesian model, sequential importance resampling algorithm. To select the useful features for construction of fuzzy system, the results of soft subspace clustering are adopted to partition the input space, the antecedent parameters of each rule are different [19].

Results
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call