Bodyanskiy, Ye. V.Perova, I.2018-09-172018-09-172017Bodyanskiy Ye. Medical online neuro-fuzzy diagnostics system with active learning / Ye. Bodyanskiy, I. Perova // // International Journal of Advances in Computer and Electronics Engineering. -July 2017. -Volume 2. Issue 7. - P. 1–10http://openarchive.nure.ua/handle/document/6905Situations when in the medical data set some patients have known diagnoses and all other have unknown ones is spread wise problem of present-day medicine. Known systems of computational intelligence show mediocre level of diagnostics in these data sets. In this paper online neuro-fuzzy diagnostics system with active learning is proposed. This system allows to increase a quality of medical diagnostics under the condition of small number of known reference signals due to combination of special learning algorithms – active learning. The proposed online neuro-fuzzy system is based on popular neural networks as Self-Organizing Map (SOM) and Learning Vector Quantization network (LVQ). Active learning procedure permits to tune their synaptic weights using simple recurrent self-learning procedures (SOM) and controlled learning with teacher (LVQ). Neuro-fuzzy diagnostics system with active learningwas used for breast cancer in Wisconsin data set processing and showed higher level of classification-clusterization results comparatively with known systemsenMedical Data Miningactive learningneuro-fuzzy systemmedical diagnosticscomputational intelligencelearning vector quantizationself-learning procedureMedical online neuro-fuzzy diagnostics system with active learningArticle