Yau's affine-normal descent enables scalable unrestricted higher-moment portfolio optimization by working directly with the return matrix and exploiting quartic structure for exact oracles and line searches.
Yau's Affine Normal Descent: Algorithmic Framework and Convergence Analysis
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abstract
We propose Yau's Affine Normal Descent (YAND), a geometric framework for smooth unconstrained optimization in which search directions are defined by the equi-affine normal of level-set hypersurfaces. The resulting directions are invariant under volume-preserving affine transformations and intrinsically adapt to anisotropic curvature. Using the analytic representation of the affine normal from affine differential geometry, we establish its equivalence with the classical slice-centroid construction under convexity. For strictly convex quadratic objectives, affine-normal directions are collinear with Newton directions, implying one-step convergence under exact line search. For general smooth (possibly nonconvex) objectives, we characterize precisely when affine-normal directions yield strict descent and develop a line-search-based YAND. We establish global convergence under standard smoothness assumptions, linear convergence under strong convexity and Polyak-Lojasiewicz conditions, and quadratic local convergence near nondegenerate minimizers. We further show that affine-normal directions are robust under affine scalings, remaining insensitive to arbitrarily ill-conditioned transformations. Numerical experiments illustrate the geometric behavior of the method and its robustness under strong anisotropic scaling.
years
2026 2representative citing papers
Polylab provides a MATLAB toolbox for multivariate polynomials with CPU/GPU support, explicit variable handling, and affine-normal direction computation via automatic differentiation and log-determinant methods.
citing papers explorer
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Yau's Affine-Normal Descent for Large-Scale Unrestricted Higher-Moment Portfolio Optimization
Yau's affine-normal descent enables scalable unrestricted higher-moment portfolio optimization by working directly with the return matrix and exploiting quartic structure for exact oracles and line searches.
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Polylab: A MATLAB Toolbox for Multivariate Polynomial Modeling
Polylab provides a MATLAB toolbox for multivariate polynomials with CPU/GPU support, explicit variable handling, and affine-normal direction computation via automatic differentiation and log-determinant methods.