9 research outputs found

    Parameterized Uniform Complexity in Numerics: from Smooth to Analytic, from NP-hard to Polytime

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    The synthesis of classical Computational Complexity Theory with Recursive Analysis provides a quantitative foundation to reliable numerics. Here the operators of maximization, integration, and solving ordinary differential equations are known to map (even high-order differentiable) polynomial-time computable functions to instances which are `hard' for classical complexity classes NP, #P, and CH; but, restricted to analytic functions, map polynomial-time computable ones to polynomial-time computable ones -- non-uniformly! We investigate the uniform parameterized complexity of the above operators in the setting of Weihrauch's TTE and its second-order extension due to Kawamura&Cook (2010). That is, we explore which (both continuous and discrete, first and second order) information and parameters on some given f is sufficient to obtain similar data on Max(f) and int(f); and within what running time, in terms of these parameters and the guaranteed output precision 2^(-n). It turns out that Gevrey's hierarchy of functions climbing from analytic to smooth corresponds to the computational complexity of maximization growing from polytime to NP-hard. Proof techniques involve mainly the Theory of (discrete) Computation, Hard Analysis, and Information-Based Complexity

    Computational Complexity of Smooth Differential Equations

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    The computational complexity of the solutions hh to the ordinary differential equation h(0)=0h(0)=0, h′(t)=g(t,h(t))h'(t) = g(t, h(t)) under various assumptions on the function gg has been investigated. Kawamura showed in 2010 that the solution hh can be PSPACE-hard even if gg is assumed to be Lipschitz continuous and polynomial-time computable. We place further requirements on the smoothness of gg and obtain the following results: the solution hh can still be PSPACE-hard if gg is assumed to be of class C1C^1; for each k≥2k\ge2, the solution hh can be hard for the counting hierarchy even if gg is of class CkC^k.Comment: 15 pages, 3 figure

    Heart failure with preserved ejection fraction according to the HFA-PEFF score in COVID-19 patients: clinical correlates and echocardiographic findings

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    Aims: Viral-induced cardiac inflammation can induce heart failure with preserved ejection fraction (HFpEF)-like syndromes. COVID-19 can lead to myocardial damage and vascular injury. We hypothesised that COVID-19 patients frequently develop a HFpEF-like syndrome, and designed this study to explore this. Methods and results: Cardiac function was assessed in 64 consecutive, hospitalized, and clinically stable COVID-19 patients from April-November 2020 with left ventricular ejection fraction (LVEF) ≥50% (age 56 ± 19 years, females: 31%, severe COVID-19 disease: 69%). To investigate likelihood of HFpEF presence, we used the HFA-PEFF score. A low (0-1 points), intermediate (2-4 points), and high (5-6 points) HFA-PEFF score was observed in 42%, 33%, and 25% of patients, respectively. In comparison, 64 subjects of similar age, sex, and comorbidity status without COVID-19 showed these scores in 30%, 66%, and 4%, respectively (between groups: P = 0.0002). High HFA-PEFF scores were more frequent in COVID-19 patients than controls (25% vs. 4%, P = 0.001). In COVID-19 patients, the HFA-PEFF score significantly correlated with age, estimated glomerular filtration rate, high-sensitivity troponin T (hsTnT), haemoglobin, QTc interval, LVEF, mitral E/A ratio, and H2 FPEF score (all P < 0.05). In multivariate, ordinal regression analyses, higher age and hsTnT were significant predictors of increased HFA-PEFF scores. Patients with myocardial injury (hsTnT ≥14 ng/L: 31%) vs. patients without myocardial injury, showed higher HFA-PEFF scores [median 5 (interquartile range 3-6) vs. 1 (0-3), P < 0.001] and more often showed left ventricular diastolic dysfunction (75% vs. 27%, P < 0.001). Conclusion: Hospitalized COVID-19 patients frequently show high likelihood of presence of HFpEF that is associated with cardiac structural and functional alterations, and myocardial injury. Detailed cardiac assessments including echocardiographic determination of left ventricular diastolic function and biomarkers should become routine in the care of hospitalized COVID-19 patients

    Parametrisierte uniforme Berechnungskomplexität in Geometrie und Numerik

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    Closed Sets and Operators thereon: Representations, Computability and Complexity

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    The TTE approach to Computable Analysis is the study of so-called representations (encodings for continuous objects such as reals, functions, and sets) with respect to the notions of computability they induce. A rich variety of such representations had been devised over the past decades, particularly regarding closed subsets of Euclidean space plus subclasses thereof (like compact subsets). In addition, they had been compared and classified with respect to both non-uniform computability of single sets and uniform computability of operators on sets. In this paper we refine these investigations from the point of view of computational complexity. Benefiting from the concept of second-order representations and complexity recently devised by Kawamura & Cook (2012), we determine parameterized complexity bounds for operators such as union, intersection, projection, and more generally function image and inversion. By indicating natural parameters in addition to the output precision, we get a uniform view on results by Ko (1991-2013), Braverman (2004/05) and Zhao & M\"uller (2008), relating these problems to the P/UP/NP question in discrete complexity theory

    Closed Sets and Operators thereon: Representations, Computability and Complexity

    No full text
    The TTE approach to Computable Analysis is the study of so-calledrepresentations (encodings for continuous objects such as reals, functions, andsets) with respect to the notions of computability they induce. A rich varietyof such representations had been devised over the past decades, particularlyregarding closed subsets of Euclidean space plus subclasses thereof (likecompact subsets). In addition, they had been compared and classified withrespect to both non-uniform computability of single sets and uniformcomputability of operators on sets. In this paper we refine theseinvestigations from the point of view of computational complexity. Benefitingfrom the concept of second-order representations and complexity recentlydevised by Kawamura & Cook (2012), we determine parameterized complexity boundsfor operators such as union, intersection, projection, and more generallyfunction image and inversion. By indicating natural parameters in addition tothe output precision, we get a uniform view on results by Ko (1991-2013),Braverman (2004/05) and Zhao & M\"uller (2008), relating these problems to theP/UP/NP question in discrete complexity theory

    Computational benefit of smoothness: Parameterized bit-complexity of numerical operators on analytic functions and Gevrey’s hierarchy

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    AbstractThe synthesis of (discrete) Complexity Theory with Recursive Analysis provides a quantitative algorithmic foundation to calculations over real numbers, sequences, and functions by approximation up to prescribable absolute error 1/2n (roughly corresponding to n binary digits after the radix point). In this sense Friedman and Ko have shown the seemingly simple operators of maximization and integration ‘complete’ for the standard complexity classes NP and #P — even when restricted to smooth (=C∞) arguments. Analytic polynomial-time computable functions on the other hand are known to get mapped to polynomial-time computable functions: non-uniformly, that is, disregarding dependences other than on the output precision n.The present work investigates the uniform parameterized complexity of natural operators Λ on subclasses of smooth functions: evaluation, pointwise addition and multiplication, (iterated) differentiation, integration, and maximization. We identify natural integer parameters k=k(f) which, when given as enrichment to approximations to the function argument f, permit to computably produce approximations to Λ(f); and we explore the asymptotic worst-case running time sufficient and necessary for such computations in terms of the output precision n and said k.It turns out that Maurice Gevrey’s 1918 classical hierarchy climbing from analytic to (just below) smooth functions provides for a quantitative gauge of the uniform computational complexity of maximization and integration that, non-uniformly, exhibits the phase transition from tractable (i.e. polynomial-time) to intractable (in the sense of NP-‘hardness’). Our proof methods involve Hard Analysis, Approximation Theory, and an adaptation of Information-Based Complexity to the bit model

    Computational Complexity of Smooth Differential Equations

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    The computational complexity of the solutions hh to the ordinary differential equation h(0)=0h(0)=0, h′(t)=g(t,h(t))h'(t) = g(t, h(t)) under various assumptions on the function gg has been investigated. Kawamura showed in 2010 that the solution hh can be PSPACE-hard even if gg is assumed to be Lipschitz continuous and polynomial-time computable. We place further requirements on the smoothness of gg and obtain the following results: the solution hh can still be PSPACE-hard if gg is assumed to be of class C1C^1; for each k≥2k\ge2, the solution hh can be hard for the counting hierarchy even if gg is of class CkC^k
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