Lower complexity bounds for interpolation algorithms

  • Authors:
  • Nardo Giménez;Joos Heintz;Guillermo Matera;Pablo Solernó

  • Affiliations:
  • Instituto del Desarrollo Humano, Universidad Nacional de General Sarmiento, J.M. Gutiérrez 1150 (B1613GSX) Los Polvorines, Buenos Aires, Argentina;Departamento de Computación, Universidad de Buenos Aires and CONICET, Ciudad Universitaria, Pab.I, 1428 Ciudad Autónoma de Buenos Aires, Argentina and Departamento de Matemáticas, E ...;Instituto del Desarrollo Humano, Universidad Nacional de General Sarmiento and CONICET, J.M. Gutiérrez 1150 (B1613GSX) Los Polvorines, Buenos Aires, Argentina;Departamento de Matemática, Universidad de Buenos Aires and CONICET, Ciudad Universitaria, Pab.I, 1428 Ciudad Autónoma de Buenos Aires, Argentina

  • Venue:
  • Journal of Complexity
  • Year:
  • 2011

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Abstract

We introduce and discuss a new computational model for the Hermite-Lagrange interpolation with nonlinear classes of polynomial interpolants. We distinguish between an interpolation problem and an algorithm that solves it. Our model includes also coalescence phenomena and captures a large variety of known Hermite-Lagrange interpolation problems and algorithms. Like in traditional Hermite-Lagrange interpolation, our model is based on the execution of arithmetic operations (including divisions) in the field where the data (nodes and values) are interpreted and arithmetic operations are counted at unit cost. This leads us to a new view of rational functions and maps defined on arbitrary constructible subsets of complex affine spaces. For this purpose we have to develop new tools in algebraic geometry which themselves are mainly based on Zariski's Main Theorem and the theory of places (or equivalently: valuations). We finish this paper by exhibiting two examples of Lagrange interpolation problems with nonlinear classes of interpolants, which do not admit efficient interpolation algorithms (one of these interpolation problems requires even an exponential quantity of arithmetic operations in terms of the number of the given nodes in order to represent some of the interpolants). In other words, classic Lagrange interpolation algorithms are asymptotically optimal for the solution of these selected interpolation problems and nothing is gained by allowing interpolation algorithms and classes of interpolants to be nonlinear. We show also that classic Lagrange interpolation algorithms are almost optimal for generic nodes and values. This generic data cannot be substantially compressed by using nonlinear techniques. We finish this paper highlighting the close connection of our complexity results in Hermite-Lagrange interpolation with a modern trend in software engineering: architecture tradeoff analysis methods (ATAM).