benchmarkfcns.exponential¶
- benchmarkfcns.exponential(arg0: Annotated[numpy.typing.NDArray[numpy.float64], '[m, n]', 'flags.c_contiguous']) Annotated[numpy.typing.NDArray[numpy.float64], '[m, 1]']¶
Computes the value of the Exponential function. SCORES = exponential(X) computes the value of the Exponential function at point X. exponential accepts a matrix of size M-by-N and returns a vector SCORES of size M-by-1 in which each row contains the function value for the corresponding row of X. Properties:
Global minimum: -1
Location of global minimum: (0, 0, …, 0)
Number of dimensions: n
Recommended domain: [-1, 1]^n
Number of local minima: 0
Number of global minima: 1
Convexity: convex
Separability: non-separable (exponential of a sum)
Modality: unimodal
Symmetry: symmetric
Differentiable: Yes
For more information, please visit: benchmarkfcns.info/doc/exponentialfcn
Mathematical Definition
Visualization