Fuzzy min-max neural network (FMNN) realized based on hyperbox has been widely used in the field of pattern classification. However, the parameter dependency coming from hyperboxes still remains open. Specifically, the construction process of the hyperbox is influenced by the expansion coefficient, different coefficients result in varying final configurations of the hyperbox. To address this issue, this paper proposes a fuzzy reinforced hyperbox neural network(FRHNN). FRHNN employs an innovative multilayer structure to generate hyperboxes, and its construction process is no longer constrained by traditional expansion coefficients. Compared to traditional hyperbox layers, the model is divided into two phases: hyperbox initialization and hyperbox enhancement. In the initialization phase, a clustering algorithm is used to form the initial mixed hyperboxes. Subsequently, during the hyperbox enhancement phase, the multilayer structure will progressively segment the mixed hyperboxes until each hyperbox is transformed into a pure hyperbox. The hyperbox enhancement process of this model encompasses three key steps: judgement hyperbox types, determining hyperbox categories, and executing hyperbox segmentation. A comparative study also indicates that the proposed FRHNN leads to higher classification accuracy in comparison with some state-of-the-art fuzzy min-max neural networks in tackling data classification.
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