Approximation of fuzzy neural networks by using Lusin’s theorem
نویسندگان
چکیده
In this note, we study an approximation property of regular fuzzy neural network(RFNN). It is shown that any fuzzy-valued measurable function can be approximated by the four-layer RFNN in the sense of fuzzy integral norm for the finite sub-additive fuzzy measure on R.
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