The paper presents a subspace neuro-fuzzy system with ordering of data items.The system assigns fuzzy weights to attributes in each fuzzy rule.The ordering technique makes the system robust to outliers.The… Click to show full abstract
The paper presents a subspace neuro-fuzzy system with ordering of data items.The system assigns fuzzy weights to attributes in each fuzzy rule.The ordering technique makes the system robust to outliers.The presented system can outperform a subspace neuro-fuzzy system for noisy data. Neuro-fuzzy systems are known for their ability to both approximate and generalize presented data. In real life data sets not always all attributes (dimensions) of data are relevant or have the same importance. Some of them may be noninformative or unnecessary. This is why subspace technique is applied. Unfortunately this technique is vulnerable to noise and outliers that are often present in real life data. The paper describes a subspace neuro-fuzzy system with data ordering technique. Data items are ordered and assigned with typicalities. Data items with low typicalities have lower influence on the elaborated fuzzy model. This technique makes fuzzy models more robust to noise and outliers. The paper is accompanied by numerical experiments on real life data sets.
               
Click one of the above tabs to view related content.