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However, it is important to note that our  models use computationally demanding functions, such as determining eigenvalues and eigenvectors, which may incur a negative environmental impact due to increased energy consumption. Nevertheless, SPD models do not outsuffer Euclidean and hyperbolic counterparts in terms of computational overhead. 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